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Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 14 / 30 Days of Life (lower score – better) (Registry version)

CBE ID
0210
Endorsement Status
1.0 New or Maintenance
1.1 Measure Structure
Previous Endorsement Cycle
Is Under Review
Yes
Next Maintenance Cycle
Spring 2026
1.6 Measure Description

Percentage of patients, aged 18 years and older, who died with cancer receiving systemic cancer-directed therapy in the last 14 / 30 days of life

1.6a Material Specification Change(s)
Yes
1.6b Summary of Specification Changes

Implementers can also look at systemic cancer-directed therapy in the last 30 days of life, as well. However the 14-day version is the only one used in MIPS.

    Measure Specs
      General Information
      1.7 Measure Type
      1.3 Electronic Clinical Quality Measure (eCQM)
      No
      1.10 Measure Rationale

      Cancer is the second leading cause of death in the United States overall and the leading cause among people younger than 85 years (Siegel et al., 2026). Use of systemic cancer-directed therapies at the end of life is associated with higher rates of hospitalization, including ICU stays, delayed utilization of hospice, worse quality of life, and higher costs (Canavan et al., 2024). Dying in America states that a palliative approach often offers the best chance of maintaining the highest possible quality of life for those living with advanced serious illness (Institute of Medicine [IOM], 2015) and proposes, as a core component to quality end-of-life care, to offer palliative care services and a personalized revision of the care plan and access to services based on the changing needs of the patient and family (IOM, 2015). The purpose of this measure is to encourage timely enrollment in palliative care that focuses on symptom management, rather than low utility and aggressive treatments, among people dying with cancer. This results in a reduction of aggressive interventions leading to ICU visits, ED visits, and hospitalizations, a reduction in resource utilization costs, improved symptom control and quality of life for the patient, and ultimately improved patient, family, and caregiver satisfaction. As there are challenges to capturing palliative care consultations from a quality measure perspective, aggressive treatments at the end of life serve as a proxy for the purposes of this measure. ASCO’s End of Life Measures Technical Expert Panel emphasized that performance is not expected to be perfect (i.e., 0) on this quality measure. A margin of error should be expected to account for scenarios such as patient preferences or the receipt of appropriate cancer-directed treatment where the patient passes unexpectedly. 

      References:

      1. Canavan, M. E., Wang, X., Ascha, M. S., Miksad, R. A., Showalter, T. N., Calip, G. S., Gross, C. P., & Adelson, K. B. (2024). Systemic Anticancer Therapy and Overall Survival in Patients With Very Advanced Solid Tumors. JAMA oncology, e241129. Advance online publication. https://doi.org/10.1001/jamaoncol.2024.1129
      2. IOM (Institute of Medicine). 2015. Dying in America: Improving quality and honoring individual preferences near the end of life. Washington, DC: The National Academies Press.
      3. Siegel, R. L., Kratzer, T. B., Giaquinto, A. N., Sung, H., & Jemal, A. (2025). Cancer Statistics. CA: A Cancer Journal for Clinicians, 75(1), 10–45. https://doi.org/10.3322/caac.21871

       

      1.11 Measure Webpage
      None.
      1.25 Data Source Details

      This registry-based measure is currently operationalized within the Merit-based Incentive Payment System (MIPS). As a registry-based instrument, it supports a flexible data architecture encompassing Electronic Health Record (EHR) data, Qualified Clinical Data Registry (QCDR) inputs, and manual chart abstraction from paper records.

      While CMS maintains confidentiality regarding which specific entities utilize these measures for MIPS reporting, it is established that registries are not subject to licensure requirements for submission. To date, ASCO has received no formal inquiries or concerns regarding administrative burden through official CMS channels. However, through rigorous measure testing and development, ASCO has verified the measure’s active implementation within the US Oncology Network (USON)/McKesson registry, which has successfully achieved full electronic specification within their EHR system.

      1.14 Numerator

      Patients who received systemic cancer-directed therapy in the last 14 days of life

      Patients who received systemic cancer-directed therapy in the last 30 days of life

      1.14a Numerator Details

      Patients who received systemic cancer-directed therapy in the last 14 days of life

       

      OR

       

      Patients who received systemic cancer-directed therapy in the last 30 days of life

      Guidance:

      The measure includes intramuscular, intravenous, oral, and subcutaneous routes of administration of systemic cancer-directed therapy. Oral systemic cancer-directed therapy is oral prescription of extension of same oral drug or prescription of new oral drug.

      Definition:

      Systemic Cancer-directed Therapy:

      Includes:

      • Cytotoxic chemotherapy
      • Drugs and biologics which activate or inhibit the hallmarks of cancer (e.g., kinase inhibitors)

      Excludes:

      • Hormones and hormone antagonists
      • Red Blood Cell (RBC) growth factors used to treat chemotherapy-induced anemia
      • White Blood Cell (WBC) growth factors used to treat chemotherapy-induced neutropenia
      • Bisphosphonates and biologics used to treat osteopenia or osteoporosis
      • Antiemetics and antinauseants
      • Pain medications

      Example:

      Drugs and biologics under the World Health Organization’s (WHO) Anatomical Therapeutic Chemical (ATC) classification “Antineoplastic Agents” and select “Immunostimulants” and “Immunosuppressants”. 

       

      “Antineoplastic and Immunomodulating Agents” Drug Classes and Identifiers:

      Note: To find the drug members under each class, go to https://mor.nlm.nih.gov/RxClass/ and enter the class name or ID on the “Search” field of the RxClass browser. 

      Antineoplastic Agents 

      • Alkylating agents (id: L01A)
        • Antimetabolites (id: L01B)
        • Cytotoxic antibiotics and related substances (id: L01D)
        • Monoclonal antibodies and antibody drug conjugates (id: L01F)
        • Other antineoplastic agents (id: L01X)
        • Plant alkaloids and other natural products (id: L01C) 
        • Protein kinase inhibitors (id: L01E)
          • Exclude: Cyclin-dependent kinase (CDK) inhibitors (id: L01EF) 

      Immunostimulants (Includes only those that apply to cancer)

      • Interferons (id: L03AB) 
        • Include only: interferon alfa-2b, ropeginterferon alfa-2b, and ropeginterferon alfa-2b-njft
      • Interleukins (id: L03AC) 
        • Include only: aldesleukin
      • Other immunostimulants (id: L03AX) 
        • Include only: sipuleucel-T

      Immunosuppressants (Includes only those that apply to cancer)

      • Selective immunosupressants (id: L04AA) 
        • Include only: alemtuzumab, everolimus, and sirolimus
      • Other immunosuppressants (id: L04AX) 
        • Include only: lenalidomide, pomalidomide, and thalidomide

       

      NOTE: For the purposes of the measure, only medications approved by the United States Food and Drug Administration (FDA) qualify for the measure.

      Numerator Instructions:

      INVERSE MEASURE – A lower calculated performance rate for this measure indicates better clinical care or control. The “Performance Not Met” numerator option for this measure is the representation of the better clinical quality or control. Submitting that numerator option will produce a performance rate that trends closer to 0%, as quality increases. For inverse measures, a rate of 100% means all of the denominator eligible patients did not receive the appropriate care or were not in proper control.

       

      Receipt of systemic cancer-directed therapy in the last 14 or 30 days of life can be calculated as follows: 

      (Date of death minus Most Recent Systemic cancer-directed therapy Administration Date or Date Filled) < 14 days / < 30 days

      Numerator Options:

      Performance Met:                                      Patient received systemic cancer-directed therapy in the last 14 days of life (G9847)

                                                                           /

                                                                           Patient received systemic cancer-directed therapy in the last 30 days of life (GXXXX)

      OR

      Denominator Exception:                           Patients received systemic cancer-directed therapy due to 1) receipt or in process of receipt of bone marrow or peripheral blood stem cell transplant (transplant status) in the last 60 days of life, or 2) receipt or in process of receipt of CAR T cell therapy in the last 60 days of life (GXXXX) 

       

      NOTE: Patients typically given bridging chemotherapy and other cancer-directed therapies while awaiting transplant or CAR T cell therapy.

       

      OR

      Numerator Exclusion:                               Patients given hydroxyurea or BTK inhibitors (GXXXX)

       

      Note: Hydroxyurea and BTK inhibitors may be inappropriate to withdraw at the end of life and/or are used for palliative purposes.

       

      OR

       

      Performance Not Met:                               Patient did not receive systemic cancer-directed therapy in the last 14 days of life (G9848)

                                                                           /

                                                                           Patient did not receive systemic cancer-directed therapy in the last 30 days of life (GXXXX)

       

      Note: GXXXX is a placeholder for HCPCS codes.

      1.15 Denominator

      Patients, aged 18 years and older, who died with cancer

      1.15a Denominator Details

      Patients, aged 18 years and older, who died with cancer

      Denominator Criteria (Eligible Cases):

                          Patients aged ≥ 18 years on date of any of the eligible patient encounters

                        AND

      Encounter diagnosis of cancer (ICD-10-CM): C00.0, C00.1, C00.2, C00.3, C00.4, C00.5, C00.6, C00.8, C00.9, C01, C02.0, C02.1, C02.2, C02.3, C02.4, C02.8, C02.9, C03.0, C03.1, C03.9, C04.0, C04.1, C04.8, C04.9, C05.0, C05.1, C05.2, C05.8, C05.9, C06.0, C06.1, C06.2, C06.80, C06.89, C06.9, C07, C08.0, C08.1, C08.9, C09.0, C09.1, C09.8, C09.9, C10.0, C10.1, C10.2, C10.3, C10.4, C10.8, C10.9, C11.0, C11.1, C11.2, C11.3, C11.8, C11.9, C12, C13.0, C13.1, C13.2, C13.8, C13.9, C14.0, C14.2, C14.8, C15.3, C15.4, C15.5, C15.8, C15.9, C16.0, C16.1, C16.2, C16.3, C16.4, C16.5, C16.6, C16.8, C16.9, C17.0, C17.1, C17.2, C17.3, C17.8, C17.9, C18.0, C18.1, C18.2, C18.3, C18.4, C18.5, C18.6, C18.7, C18.8, C18.9, C19, C20, C21.0, C21.1, C21.2, C21.8, C22.0, C22.1, C22.2, C22.3, C22.4, C22.7, C22.8, C22.9, C23, C24.0, C24.1, C24.8, C24.9, C25.0, C25.1, C25.2, C25.3, C25.4, C25.7, C25.8, C25.9, C26.0, C26.1, C26.9, C30.0, C30.1, C31.0, C31.1, C31.2, C31.3, C31.8, C31.9, C32.0, C32.1, C32.2, C32.3, C32.8, C32.9, C33, C34.00, C34.01, C34.02, C34.10, C34.11, C34.12, C34.2, C34.30, C34.31, C34.32, C34.80, C34.81, C34.82, C34.90, C34.91, C34.92, C37, C38.0, C38.1, C38.2, C38.3, C38.4, C38.8, C39.0, C39.9, C40.00, C40.01, C40.02, C40.10, C40.11, C40.12, C40.20, C40.21, C40.22, C40.30, C40.31, C40.32, C40.80, C40.81, C40.82, C40.90, C40.91, C40.92, C41.0, C41.1, C41.2, C41.3, C41.4, C41.9, C43.0, C43.10, C43.111, C43.112, C43.121, C43.122, C43.20, C43.21, C43.22, C43.30, C43.31, C43.39, C43.4, C43.51, C43.52, C43.59, C43.60, C43.61, C43.62, C43.70, C43.71, C43.72, C43.8, C43.9, C44.00, C44.01, C44.02, C44.09, C44.101, C44.1021, C44.1022, C44.1091, C44.1092, C44.111, C44.1121, C44.1122, C44.1191, C44.1192, C44.121, C44.1221, C44.1222, C44.1291, C44.1292, C44.131, C44.1321, C44.1322, C44.1391, C44.1392, C44.191, C44.1921, C44.1922, C44.1991, C44.1992, C44.201, C44.202, C44.209, C44.211, C44.212, C44.219, C44.221, C44.222, C44.229, C44.291, C44.292, C44.299, C44.300, C44.301, C44.309, C44.310, C44.311, C44.319, C44.320, C44.321, C44.329, C44.390, C44.391, C44.399, C44.40, C44.41, C44.42, C44.49, C44.500, C44.501, C44.509, C44.510, C44.511, C44.519, C44.520, C44.521, C44.529, C44.590, C44.591, C44.599, C44.601, C44.602, C44.609, C44.611, C44.612, C44.619, C44.621, C44.622, C44.629, C44.691, C44.692, C44.699, C44.701, C44.702, C44.709, C44.711, C44.712, C44.719, C44.721, C44.722, C44.729, C44.791, C44.792, C44.799, C44.80, C44.81, C44.82, C44.89, C44.90, C44.91, C44.92, C44.99, C45.0, C45.1, C45.2, C45.7, C45.9, C46.0, C46.1, C46.2, C46.3, C46.4, C46.50, C46.51, C46.52, C46.7, C46.9, C47.0, C47.10, C47.11, C47.12, C47.20, C47.21, C47.22, C47.3, C47.4, C47.5, C47.6, C47.8, C47.9, C48.0, C48.1, C48.2, C48.8, C49.0, C49.10, C49.11, C49.12, C49.20, C49.21, C49.22, C49.3, C49.A0, C49.A1, C49.A2, C49.A3, C49.A4, C49.A5, C49.A9, C49.4, C49.5, C49.6, C49.8, C49.9, C4A.0, C4A.10, C4A.111, C4A.112, C4A.121, C4A.122, C4A.20, C4A.21, C4A.22, C4A.30, C4A.31, C4A.39, C4A.4, C4A.51, C4A.52, C4A.59, C4A.60, C4A.61, C4A.62, C4A.70, C4A.71, C4A.72, C4A.8, C4A.9, C50.011, C50.012, C50.019, C50.021, C50.022, C50.029, C50.111, C50.112, C50.119, C50.121, C50.122, C50.129, C50.211, C50.212, C50.219, C50.221, C50.222, C50.229, C50.311, C50.312, C50.319, C50.321, C50.322, C50.329, C50.411, C50.412, C50.419, C50.421, C50.422, C50.429, C50.511, C50.512, C50.519, C50.521, C50.522, C50.529, C50.611, C50.612, C50.619, C50.621, C50.622, C50.629, C50.811, C50.812, C50.819, C50.821, C50.822, C50.829, C50.911, C50.912, C50.919, C50.921, C50.922, C50.929, C51.0, C51.1, C51.2, C51.8, C51.9, C52, C53.0, C53.1, C53.8, C53.9, C54.0, C54.1, C54.2, C54.3, C54.8, C54.9, C55, C56.1, C56.2, C56.3, C56.9, C57.00, C57.01, C57.02, C57.10, C57.11, C57.12, C57.20, C57.21, C57.22, C57.3, C57.4, C57.7, C57.8, C57.9, C58, C60.0, C60.1, C60.2, C60.8, C60.9, C61, C62.00, C62.01, C62.02, C62.10, C62.11, C62.12, C62.90, C62.91, C62.92, C63.00, C63.01, C63.02, C63.10, C63.11, C63.12, C63.2, C63.7, C63.8, C63.9, C64.1, C64.2, C64.9, C65.1, C65.2, C65.9, C66.1, C66.2, C66.9, C67.0, C67.1, C67.2, C67.3, C67.4, C67.5, C67.6, C67.7, C67.8, C67.9, C68.0, C68.1, C68.8, C68.9, C69.00, C69.01, C69.02, C69.10, C69.11, C69.12, C69.20, C69.21, C69.22, C69.30, C69.31, C69.32, C69.40, C69.41, C69.42, C69.50, C69.51, C69.52, C69.60, C69.61, C69.62, C69.80, C69.81, C69.82, C69.90, C69.91, C69.92, C70.0, C70.1, C70.9, C71.0, C71.1, C71.2, C71.3, C71.4, C71.5, C71.6, C71.7, C71.8, C71.9, C72.0, C72.1, C72.20, C72.21, C72.22, C72.30, C72.31, C72.32, C72.40, C72.41, C72.42, C72.50, C72.59, C72.9, C73, C74.00, C74.01, C74.02, C74.10, C74.11, C74.12, C74.90, C74.91, C74.92, C75.0, C75.1, C75.2, C75.3, C75.4, C75.5, C75.8, C75.9, C76.0, C76.1, C76.2, C76.3, C76.40, C76.41, C76.42, C76.50, C76.51, C76.52, C76.8, C77.0, C77.1, C77.2, C77.3, C77.4, C77.5, C77.8, C77.9, C78.00, C78.01, C78.02, C78.1, C78.2, C78.30, C78.39, C78.4, C78.5, C78.6, C78.7, C78.80, C78.89, C79.00, C79.01, C79.02, C79.10, C79.11, C79.19, C79.2, C79.31, C79.32, C79.40, C79.49, C79.51, C79.52, C79.60, C79.61, C79.62, C79.63, C79.70, C79.71, C79.72, C79.81, C79.82, C79.89, C79.9, C7A.00, C7A.010, C7A.011, C7A.012, C7A.019, C7A.020, C7A.021, C7A.022, C7A.023, C7A.024, C7A.025, C7A.026, C7A.029, C7A.090, C7A.091, C7A.092, C7A.093, C7A.094, C7A.095, C7A.096, C7A.098, C7A.1, C7A.8, C7B.00, C7B.01, C7B.02, C7B.03, C7B.04, C7B.09, C7B.1, C7B.8, C80.0, C80.1, C80.2, C81.00, C81.01, C81.02, C81.03, C81.04, C81.05, C81.06, C81.07, C81.08, C81.09, C81.10, C81.11, C81.12, C81.13, C81.14, C81.15, C81.16, C81.17, C81.18, C81.19, C81.20, C81.21, C81.22, C81.23, C81.24, C81.25, C81.26, C81.27, C81.28, C81.29, C81.30, C81.31, C81.32, C81.33, C81.34, C81.35, C81.36, C81.37, C81.38, C81.39, C81.40, C81.41, C81.42, C81.43, C81.44, C81.45, C81.46, C81.47, C81.48, C81.49, C81.70, C81.71, C81.72, C81.73, C81.74, C81.75, C81.76, C81.77, C81.78, C81.79, C81.90, C81.91, C81.92, C81.93, C81.94, C81.95, C81.96, C81.97, C81.98, C81.99, C82.00, C82.01, C82.02, C82.03, C82.04, C82.05, C82.06, C82.07, C82.08, C82.09, C82.10, C82.11, C82.12, C82.13, C82.14, C82.15, C82.16, C82.17, C82.18, C82.19, C82.20, C82.21, C82.22, C82.23, C82.24, C82.25, C82.26, C82.27, C82.28, C82.29, C82.30, C82.31, C82.32, C82.33, C82.34, C82.35, C82.36, C82.37, C82.38, C82.39, C82.40, C82.41, C82.42, C82.43, C82.44, C82.45, C82.46, C82.47, C82.48, C82.49, C82.50, C82.51, C82.52, C82.53, C82.54, C82.55, C82.56, C82.57, C82.58, C82.59, C82.60, C82.61, C82.62, C82.63, C82.64, C82.65, C82.66, C82.67, C82.68, C82.69, C82.80, C82.81, C82.82, C82.83, C82.84, C82.85, C82.86, C82.87, C82.88, C82.89, C82.90, C82.91, C82.92, C82.93, C82.94, C82.95, C82.96, C82.97, C82.98, C82.99, C83.00, C83.01, C83.02, C83.03, C83.04, C83.05, C83.06, C83.07, C83.08, C83.09, C83.10, C83.11, C83.12, C83.13, C83.14, C83.15, C83.16, C83.17, C83.18, C83.19, C83.30, C83.31, C83.32, C83.33, C83.34, C83.35, C83.36, C83.37, C83.38, C83.39, C83.50, C83.51, C83.52, C83.53, C83.54, C83.55, C83.56, C83.57, C83.58, C83.59, C83.70, C83.71, C83.72, C83.73, C83.74, C83.75, C83.76, C83.77, C83.78, C83.79, C83.80, C83.81, C83.82, C83.83, C83.84, C83.85, C83.86, C83.87, C83.88, C83.89, C83.90, C83.91, C83.92, C83.93, C83.94, C83.95, C83.96, C83.97, C83.98, C83.99, C84.00, C84.01, C84.02, C84.03, C84.04, C84.05, C84.06, C84.07, C84.08, C84.09, C84.10, C84.11, C84.12, C84.13, C84.14, C84.15, C84.16, C84.17, C84.18, C84.19, C84.40, C84.41, C84.42, C84.43, C84.44, C84.45, C84.46, C84.47, C84.48, C84.49, C84.60, C84.61, C84.62, C84.63, C84.64, C84.65, C84.66, C84.67, C84.68, C84.69, C84.7A, C84.70, C84.71, C84.72, C84.73, C84.74, C84.75, C84.76, C84.77, C84.78, C84.79, C84.90, C84.91, C84.92, C84.93, C84.94, C84.95, C84.96, C84.97, C84.98, C84.99, C84.A0, C84.A1, C84.A2, C84.A3, C84.A4, C84.A5, C84.A6, C84.A7, C84.A8, C84.A9, C84.Z0, C84.Z1, C84.Z2, C84.Z3, C84.Z4, C84.Z5, C84.Z6, C84.Z7, C84.Z8, C84.Z9, C85.10, C85.11, C85.12, C85.13, C85.14, C85.15, C85.16, C85.17, C85.18, C85.19, C85.20, C85.21, C85.22, C85.23, C85.24, C85.25, C85.26, C85.27, C85.28, C85.29, C85.80, C85.81, C85.82, C85.83, C85.84, C85.85, C85.86, C85.87, C85.88, C85.89, C85.90, C85.91, C85.92, C85.93, C85.94, C85.95, C85.96, C85.97, C85.98, C85.99, C86.0, C86.1, C86.2, C86.3, C86.4, C86.5, C86.6, C88.0, C88.2, C88.3, C88.4, C88.8, C88.9, C90.00, C90.01, C90.02, C90.10, C90.11, C90.12, C90.20, C90.21, C90.22, C90.30, C90.31, C90.32, C91.00, C91.01, C91.02, C91.10, C91.11, C91.12, C91.30, C91.31, C91.32, C91.40, C91.41, C91.42, C91.50, C91.51, C91.52, C91.60, C91.61, C91.62, C91.90, C91.91, C91.92, C91.A0, C91.A1, C91.A2, C91.Z0, C91.Z1, C91.Z2, C92.00, C92.01, C92.02, C92.10, C92.11, C92.12, C92.20, C92.21, C92.22, C92.30, C92.31, C92.32, C92.40, C92.41, C92.42, C92.50, C92.51, C92.52, C92.60, C92.61, C92.62, C92.90, C92.91, C92.92, C92.A0, C92.A1, C92.A2, C92.Z0, C92.Z1, C92.Z2, C93.00, C93.01, C93.02, C93.10, C93.11, C93.12, C93.30, C93.31, C93.32, C93.90, C93.91, C93.92, C93.Z0, C93.Z1, C93.Z2, C94.00, C94.01, C94.02, C94.20, C94.21, C94.22, C94.30, C94.31, C94.32, C94.40, C94.41, C94.42, C94.6, C94.80, C94.81, C94.82, C95.00, C95.01, C95.02, C95.10, C95.11, C95.12, C95.90, C95.91, C95.92, C96.0, C96.20, C96.21, C96.22, C96.29, C96.4, C96.5, C96.6, C96.9, C96.A, C96.Z, D37.01, D37.02, D37.030, D37.031, D37.032, D37.039, D37.04, D37.05, D37.09, D37.1, D37.2, D37.3, D37.4, D37.5, D37.6, D37.8, D37.9, D38.0, D38.1, D38.2, D38.3, D38.4, D38.5, D38.6, D39.0, D39.10, D39.11, D39.12, D39.2, D39.8, D39.9, D40.0, D40.10, D40.11, D40.12, D40.8, D40.9, D41.00, D41.01, D41.02, D41.10, D41.11, D41.12, D41.20, D41.21, D41.22, D41.3, D41.4, D41.8, D41.9, D42.0, D42.1, D42.9, D43.0, D43.1, D43.2, D43.3, D43.4, D43.8, D43.9, D44.0, D44.10, D44.11, D44.12, D44.2, D44.3, D44.4, D44.5, D44.6, D44.7, D44.9, D45, D46.0,D46.1, D46.20, D46.21, D46.22, D46.4, D46.9, D46.A, D46.B, D46.C, D46.Z, D47.01, D47.02, D47.09, D47.1, D47.2, D47.3, D47.4, D47.9, D47.Z1, D47.Z2, D47.Z9, D48.0, D48.2, D48.3, D48.4, D48.5, D48.60, D48.61, D48.62, D48.7, D48.9, D49.0, D49.1, D49.2, D49.3, D49.4, D49.511, D49.512, D49.519, D49.59, D49.6, D49.7, D49.81, D49.89, D49.9

      AND

      At least two patient encounters during the performance period (CPT): 98000, 98001, 98002, 98003, 98004, 98005, 98006, 98007, 99202, 99203, 99204, 99205, 99212, 99213, 99214, 99215, 99242, 99243, 99244, 99245, 99495, 99496, 99441, 99442, 99443

      NOTE: Both eligible patient encounters must include a diagnosis of cancer. 

      AND

      Patients who died during performance period: G9846

      1.15d Age Group
      Adults (18-64 years)
      Older Adults (65 years and older)
      1.15b Denominator Exclusions

      This quality measure has no denominator exclusions, but does have a denominator exception and numerator exclusion. See 1.14a Numerator Details. 

      1.15c Denominator Exclusions Details

      See 1.14a Numerator Details. 

      1.13 Data Dictionary
      Not attached. I attest that all information will be provided where codes and/or value sets are needed (1.14a - 1.15c).
      1.16 Type of Score
      1.17 Measure Score Interpretation
      Better performance = Lower score
      1.18 Calculation of Measure Score

      The developer provided a Measure Calculation Diagram:

      1.18a Attach measure score calculation diagram
      1.19 Measure Stratification Details

      This measure is stratified by the timeframe (lookback period) preceding the date of death to assess varying intensities of systemic therapy at the end of life.

       

      Stratification Variables:

      Lookback Period: Defined as the number of days prior to the patient’s date of death.

       

      Stratum Definitions:

       

      - Stratum 1 (14-Day Lookback): Percentage of patients in the denominator who received one or more systemic cancer-directed therapies (chemotherapy, immunotherapy, or targeted therapy) within 14 days of the date of death.

       

      - Stratum 2 (30-Day Lookback): Percentage of patients in the denominator who received one or more systemic cancer-directed therapies (chemotherapy, immunotherapy, or targeted therapy) within 30 days of the date of death.

       

      Code and Value Sets:

      The clinical identifying codes for "Systemic Cancer-Directed Therapy" are identical for both strata. These include HCPCS, CPT, and ICD-10-PCS codes for chemotherapy administration, immunotherapy, and targeted therapy agents.

       

      Please refer to the numerator and denominator details sections of this form for coding specifications.

       

      Risk Adjustment:

      The measure is currently not risk-adjusted. Results are reported as observed rates for each stratum to identify clinical practice patterns across the population.

      1.26 Minimum Sample Size

      Minimum of five (5) patients.

      Supplemental Attachment
      7.1 Supplemental Attachment
      Initial Endorsement
      Last Updated
      Steward Organization
      American Society of Clinical Oncology (ASCO)
      Steward POC email
      Steward Organization Copyright

      COPYRIGHT:

      The Measure is not a clinical guideline, does not establish a standard of medical care, and has not been tested for all potential applications. 

       

      The Measure, while copyrighted, can be reproduced and distributed, without modification, for noncommercial purposes, e.g., use by health care providers in connection with their practices. Commercial use is defined as the sale, license, or distribution of the Measures for commercial gain, or incorporation of the Measure into a product or service that is sold, licensed or distributed for commercial gain. 

       

      Commercial uses of the Measure require a license agreement between the user and the American Society of Clinical Oncology (ASCO) and prior written approval of ASCO. Contact [email protected] for licensing this measure. Neither ASCO nor its members shall be responsible for any use of the Measure. 

       

      ASCO encourages use of the Measures by other health care professionals, where appropriate.

       

      THE MEASURE AND SPECIFICATIONS ARE PROVIDED "AS IS" WITHOUT WARRANTY OF ANY KIND.

       

      © 2026 American Society of Clinical Oncology.  All Rights Reserved.

       

      Limited proprietary coding is contained in the Measure specifications for user convenience. Users of proprietary code sets should obtain all necessary licenses from the owners of the code sets. ASCO disclaims all liability for use or accuracy of any third party codes contained in the specifications.

       

      CPT® contained in the Measure specifications is copyright 2004-2026 American Medical Association. LOINC® copyright 2004-2026 Regenstrief Institute, Inc. This material contains SNOMED Clinical Terms® (SNOMED CT®) copyright 2004-2026 International Health Terminology Standards Development Organisation. ICD-10 copyright 2026 World Health Organization. All Rights Reserved.

      Steward Address

      Neha Agrawal
      Alexandria, VA
      United States

      Measure Developer POC

      Neha Agrawal
      ASCO
      Alexandria, VA
      United States

        Evidence
        2.1 Attach Logic Model
        2.2 Evidence of Measure Importance

        In the United States, cancer is the second leading cause of death overall and the leading cause of death among people younger than 85 years (Siegel et al., 2026). It is projected that in 2026 there will be approximately 2.1 million new cancer cases and over half a million cancer deaths (Siegel et al., 2026). While individual patients have their own preferences that can change over time, consistently across various populations, most patients nearing end of life wish to die at home (Gomes et al., 2013). Patients with early referral to palliative care (90 days or more prior to death) are less likely to receive chemotherapy in the last 30 days of life (Woldie et al., 2022) and cancer-directed therapy received near the end of life continues to be associated with higher rates of hospitalizations, ED visits, ICU stays, hospital deaths, and lower hospice use (Canavan et al., 2025, Garg et al., 2024 & Adelson et al., 2024). Furthermore, cancer-directed therapy received at the end of life does not affect overall survival - a recent cohort study specifically looking at overall survival amongst the highest and lowest CBE 0210 quintiles at the practice level found no statistically significant difference in survival rates (Canavan et al., 2024).

         

        The goal of Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 14 Days of Life (lower score – better) is to, alongside ASCO’s suite of EOL measures, highlight performance trends over time and encourage timely enrollment in palliative care that focuses on symptom management, rather than low utility and aggressive treatments, among people dying with cancer. The seminal NAM report Dying in America states that a palliative approach often offers the best chance of maintaining the highest possible quality of life for those living with advanced serious illness (IOM, 2015) and proposes, as a core component to quality end-of-life care, to offer palliative care services and a personalized revision of the care plan, as well as access to services based on the changing needs of the patient and family (IOM, 2015). A 2023 systematic review of cancer-specific studies published from 1990 to 2022 found that advance care planning (ACP) significantly reduces the odds of aggressive end-of-life care. Analyzing a cohort of approximately 33,500 patients, researchers found that ACP was associated with a lower likelihood of chemotherapy, ICU stays, hospitalizations, and in-hospital deaths, as well as fewer late-stage hospice referrals of less than seven days (Levoy et al.).

         

        Timely enrollment in palliative care also reduces resource utilization costs and aligns with MedPAC’s goal to reduce high-intensity, low-value care at the end of life by promoting hospice and palliative care (MedPAC, 2025). Studies show that the integration of palliative care into the cancer care continuum improves patient outcomes in many ways, including quality of life, symptoms intensity, and end-of-life care (NCCN, 2026). 

         

        ASCO, Choosing Wisely, and NCCN guidelines contain the following recommendations:

        • Patients with months to weeks to live should be provided with guidance regarding the anticipated course of the disease. Physicians should reassess prognostic awareness and goals of therapy. As functional status worsens, these patients may become more concerned about the side effects of cancer-directed treatment and consider focusing their care on maintaining quality of life. The option of discontinuing cancer treatment aligned with goals of care and initiating goal-directed supportive care should be discussed. (Category 2A) (NCCN, 2026)
        • In general, patients with weeks to days to live (eg, dying patients) and comfort-oriented goals should discontinue all treatments not directly contributing to patient comfort. Intensive palliative care focusing on symptom management should be provided in addition to preparation for the dying process. Referral for hospice care should be placed, if not already done. (Category 2A) (NCCN, 2026)
        • Clinicians should refer patients with advanced solid tumors and hematologic malignancies to specialized interdisciplinary palliative care teams that provide inpatient and outpatient care early in the course of disease, alongside active treatment of their cancer. (Moderate, Strong) (Sanders et al., 2024)
        • Don’t use cancer-directed therapy for solid tumor patients with the following characteristics: low performance status (3 or 4), no benefit from prior evidence-based interventions, and no strong evidence supporting the clinical value of further anti-cancer treatment. (Schnipper et al., 2012)
          • Cancer directed treatments are likely to be ineffective and more toxic for solid tumor patients who meet the above-stated criteria.
          • Exceptions may include when disease characteristics (e.g., an extremely chemo-sensitive tumor, or a sensitive and targetable alteration in the tumor) suggest a high likelihood of a response to therapy that may reverse functional limitations related to the cancer.
          • While this Choosing Wisely statement originally referred to cytotoxic chemotherapy, it also applies to novel, purportedly less-toxic treatments such as immunotherapy and off-label targeted therapy in patients who meet the above-stated criteria.

        Definitions of Categories of Evidence and Ratings:

        • Category 2A: Based upon lower-level evidence, there is uniform NCCN consensus (≥85% support of the Panel) that the intervention is appropriate. Note there are no Category 1 recommendations within NCCN’s guidelines on Palliative Care.
        • Strong Strength of Recommendation: In recommendations for an intervention, the desirable effects of an intervention outweigh its undesirable effects. In recommendations against an intervention, the undesirable effects of an intervention outweigh its desirable effects. All or almost all informed people would make the recommended choice for or against an intervention
        • Moderate Quality of Evidence: We are moderately confident in the effect estimate: The true effect is likely to be close to the estimate of the effect, but there is a possibility that it is substantially different

         

        In addition to the literature, ASCO received positive feedback on measure importance via its May 2025 public comment; almost all respondents strongly agreed or agreed with the following statements across all of ASCO’s updated EOL measures: “I believe this measure captures what it intends to capture, i.e., promoting early palliative care among dying patients and reducing aggressive interventions at the end of patients’ lives” and “I believe this measure differentiates good from poor quality care among providers of healthcare services.”

         

         

        References:

        1. Adelson, K. B., Canavan, M., Niu, J., Zhao, H., Nortje, N., Xiang, J. J., Giordano, S. H., & Cheng, L. (2024). Systemic anti-cancer treatment and healthcare utilization at end of life: A SEER Medicare analysis. JCO Oncology Practice, 20(10_suppl), 276. https://doi.org/10.1200/OP.2024.20.10_suppl.276
        2. Canavan, M. E., Cheng, L., Xiang, J. J., Lin, J. K., Hui, D., Zhao, H., Nortje, N., Ratan, R., Cherny, N., Pham, T., Giordano, S. H., Niu, J., & Adelson, K. B. (2025). Association Between Systemic Anticancer Therapy Administration Near the End of Life With Health Care and Hospice Utilization in Older Adults: A SEER Medicare Analysis of End-of-Life Care Quality. Journal of Clinical Oncology: Official Journal of the American Society of Clinical Oncology43(31), 3391–3402. https://doi.org/10.1200/JCO-25-00530 
        3. Canavan, M. E., Wang, X., Ascha, M. S., Miksad, R. A., Showalter, T. N., Calip, G. S., Gross, C. P., & Adelson, K. B. (2024). Systemic Anticancer Therapy and Overall Survival in Patients With Very Advanced Solid Tumors. JAMA Oncology, e241129. Advance online publication. https://doi.org/10.1001/jamaoncol.2024.1129
        4. Garg, V., Ruiz Buenrostro, A., Heuniken, K., Bagnarol, R., Yousef, M., Sajewicz, K., Dhanju, S., Wentlandt, K., Kuruvilla, J., Lheureux, S., Zimmermann, C., & Hannon, B. (2024). Novel Systemic Anticancer Therapy and Healthcare Utilization at the End of Life: A Retrospective Cohort Study. Cancer medicine13(23), e70450. https://doi.org/10.1002/cam4.70450 
        5. Gomes, B., Calanzani, N., Gysels, M., Hall, S., & Higginson, I. J. (2013). Heterogeneity and changes in preferences for dying at home: a systematic review. BMC palliative care12, 7. https://doi.org/10.1186/1472-684X-12-7
        6. Institute of Medicine. (2015). Dying in America: Improving Quality and Honoring Individual Preferences Near The End of Life. National Academies Press. https://doi.org/10.17226/18748
        7. Levoy, K., Sullivan, S. S., Chittams, J., Myers, R. L., Hickman, S. E., & Meghani, S. H. (2023). Don't throw the baby out with the bathwater: Meta-analysis of advance care planning and end-of-life cancer care. Journal of Pain and Symptom Management, 65(6), e715–e743. https://doi.org/10.1016/j.jpainsymman.2023.02.003
        8. Medicare Payment Advisory Commission. (2025, March). Report to the Congress: Medicare payment policyhttps://www.medpac.gov/wp-content/uploads/2025/03/Mar25_MedPAC_Report_To_Congress_SEC.pdf
        9. National Comprehensive Cancer Network. (2026). NCCN Clinical Practice Guidelines in Oncology (NCCN Guidelines®): Palliative Care (Version 1.2026). https://www.nccn.org/guidelines/guidelines-detail?id=1454
        10. Sanders, J. J., Temin, S., Ghoshal, A., Alesi, E. R., Ali, Z. V., Chauhan, C., Cleary, J. F., Epstein, A. S., Firn, J. I., Jones, J. A., Litzow, M. R., Lundquist, D. M., Mardones, M. A., Nipp, R. D., Rabow, M. W., Rosa, W. E., Zimmermann, C., & Ferrell, B. R. (2024). Palliative Care for Patients with Cancer: ASCO guideline Update. Journal of Clinical Oncology, 42(19), 2336–2357. https://doi.org/10.1200/JCO.24.00542
        11. Schnipper, L. E., Smith, T. J., Raghavan, D., Blayney, D. W., Ganz, P. A., Mulvey, T. M., & Wollins, D. S. (2012). American Society of Clinical Oncology Identifies Five Key Opportunities to Improve Care and Reduce costs: The Top Five List For Oncology. Journal of Clinical Oncology: Official Journal of the American Society of Clinical Oncology30(14), 1715–1724. https://doi.org/10.1200/JCO.2012.42.8375 
        12. Siegel, R. L., Kratzer, T. B., Wagle, N. S., Sung, H., & Jemal, A. (2026). Cancer statistics, 2026. CA: A Cancer Journal for Clinicians, 76(1), Article e70043. https://doi.org/10.3322/caac.70043
        13. Woldie, I., Elfiki, T., Kulkarni, S., Springer, C., McArthur, E., & Freeman, N. (2022). Chemotherapy during the last 30 days of life and the role of palliative care referral, a single center experience. BMC palliative care21(1), 20. https://doi.org/10.1186/s12904-022-00910-x

         

        2.6 Meaningfulness to Target Population

        ASCO’s end-of-life quality measures were originally developed in 2003 using a patient-centered methodology to capture outcomes meaningful to those with advanced illness (Earle et al., 2003). This included:

        • Focus groups consisting of patients with incurable cancer and family members of deceased patients. These participants identified and vetted potential EOL quality measures to ensure they reflected patient-centered priorities. 
        • Expert Consensus: A multidisciplinary expert panel applied a modified Delphi approach to rank the importance and meaningfulness of potential measures based on the focus group input. Measures that did not resonate with patient and family values (such as those focused solely on economic efficiency) were excluded.
        • Literature searches.

        ASCO has continued to integrate the patient and caregiver voice into the current versions of these measures:

        • Expert Panel Participation: A family caregiver representative served as a formal member of the 2023–2024 ASCO EOL Expert Panel, providing direct input during the review and updating of the measures.
        • May 2025 Public Comment Period: Following the updates, ASCO held a public comment period to ensure the measures remained valuable to stakeholders. Of the respondents, which included a patient representative, a significant majority agreed that the measures effectively differentiate between high- and low-quality care and assess what they intend to assess (i.e., quality of end-of-life care). The patient representative specifically "strongly agreed" that 1) this measure captures what it intends to capture , i.e., promoting early palliative care among dying patients and reducing aggressive interventions at the end of patients’ lives and 2) this measure differentiates good from poor quality care among providers of healthcare services.

         

        References:

        Earle, C. C., Park, E. R., Lai, B., Weeks, J. C., Ayanian, J. Z., & Block, S. (2003). Identifying potential indicators of the quality of end-of-life cancer care from administrative data. Journal of Clinical Oncology: Official Journal of the American Society of Clinical Oncology21(6), 1133–1138. https://doi.org/10.1200/JCO.2003.03.059

        2.4 Performance Gap

        Individual Clinician Performance (158 Entities)

        ASCO evaluated performance on the "Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 14 Days of Life" measure. Using combined data from January 2023 to December 2024, the study included 158 physicians who met the minimum requirement of five eligible patients (refer to Sections 1.26 and 5.1.1 for details on sample size and testing).

        Because this measure tracks aggressive treatment at the end of life, a lower percentage reflects stronger performance in end-of-life care. Results spanned from 0% to 40%, showing a broad spectrum in how physicians manage systemic therapy transitions. The mean performance was 10% (±7%) with a 95% confidence level of ±1%; the median was slightly lower at 10%.

        The distribution shows a strong positive skew of 1.19, indicating that while many physicians are performing near or below the mean, there is a tail of entities with significantly higher rates of treatment near death. Notably, the mode is 0%, meaning that the most frequent outcome across individual physicians was a complete avoidance of systemic therapy in the final 14 days of life. These results show that while the highest-performing physicians (0%) have eliminated this intervention, those at the top of the range (40%) exceed the median rate of aggressive treatment by 319% (4.19 times). For physicians performing above the median, these results highlight a clear opportunity to reassess the timing of therapy cessation and ensure patients are transitioned to comfort-focused care.

         

        ASCO also evaluated performance on the "Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 30 Days of Life" measure. Using combined data from January 2023 to December 2024, the study included 158 physicians who met the minimum requirement of five eligible patients (refer to Sections 1.26 and 5.1.1 for details on sample size and testing).

        Because this measure tracks aggressive treatment at the end of life, a lower percentage reflects stronger performance in end-of-life care. Results spanned from 0% to 60%, showing a wide variation in how physicians manage the cessation of systemic therapy. The mean performance was 25% (±9%) with a 95% confidence level of ±1.5%; the median was slightly lower at 24%.

        The distribution shows a moderate positive skew of 0.48, indicating that while many physicians are clustered around the mean, there is a distinct group with higher rates of treatment in the final month of life. Notably, the mode is 25%, meaning the most frequent outcome across individual physicians was that one-quarter of their patients received systemic therapy in their last 30 days. These results show that while the highest-performing physicians (0%) successfully avoided systemic interventions in this window, those at the top of the range (60%) exceed the median rate of aggressive treatment by 150% (2.5 times). For physicians performing above the median, these results highlight a clear opportunity to improve the transition to palliative care and reduce the utilization of aggressive therapies as death approaches.

         

        Practice Performance (10 Entities)

        ASCO evaluated performance on the "Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 14 Days of Life" measure. Using combined data from January 2023 to December 2024, the study included 10 practices that met the minimum requirement of five eligible patients (refer to Sections 1.26 and 5.1.1 for details on sample size and testing).

        Because this measure tracks aggressive treatment at the end of life, a lower percentage reflects stronger performance in end-of-life care. Results spanned from 6% to 12%, showing a relatively narrow spectrum in how these practices manage systemic therapy transitions. The mean performance was 10% (±2%) with a 95% confidence level of ±1%; the median was identical to the mean at 10%.

        The distribution shows a negative skew of -0.71, indicating that the tail of the distribution extends toward the lower (better-performing) percentages, though the majority of scores are clustered near the higher end of this specific range. Notably, there was no single mode recorded, meaning no specific performance rate occurred more frequently than others in this sample.

        These results show that while the highest-performing practices in this group reached a rate of 6%, those at the top of the range (12%) exceed the median rate of aggressive treatment by 20% (1.2 times). For practices performing above the median, these results highlight a continued opportunity to reassess the timing of therapy cessation and ensure patients are transitioned to comfort-focused care.

         

        ASCO also evaluated performance on the "Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 30 Days of Life" measure. Using combined data from January 2023 to December 2024, the study included 10 practices that met the minimum requirement of five eligible patients (refer to Sections 1.26 and 5.1.1 for details on sample size and testing). 
        Because this measure tracks aggressive treatment at the end of life, a lower percentage reflects stronger performance in end-of-life care. Results spanned from 20% to 32%, showing a relatively narrow variation in how practices manage the cessation of systemic therapy. The mean performance was 25% (±4%) with a 95% confidence level of ±3%; the median was identical at 25%. 
        The distribution shows a slight positive skew of 0.22, indicating that while many practices are clustered around the mean, there is a small tail of entities with higher rates of treatment in the final month of life. Notably, there was no single mode recorded (#N/A), meaning no specific performance rate occurred more frequently than others in this sample.

        These results show that while the highest-performing practices reached a rate of 20%, those at the top of the range (32%) exceed the median rate of aggressive treatment by 28% (1.28 times). For practices performing above the median, these results highlight a clear opportunity to improve the transition to palliative care and reduce the utilization of aggressive therapies as death approaches.

        Table 1. Performance Scores by Decile

         

        Mean Performance Score by Decile (Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 14 Days of Life - Registry) - Clinician Level

         

        Overall

        Min

        Decile 1

        Decile 2

        Decile 3

        Decile 4

        Decile 5

        Decile 6

        Decile 7

        Decile 8

        Decile 9

        Decile 10

        Max

        Mean Performance Score

        9.42%

        0.00%

        0.00%

        2.59%

        4.60%

        6.09%

        7.45%

        8.81%

        10.42%

        12.11%

        14.12%

        21.84%

        40.00%

        Number of Entities

        153

        1

        16

        16

        16

        15

        15

        15

        15

        15

        15

        15

        1

        Number of Persons

        10,268

        5

        247

        1,113

        1,027

        1,119

        1,036

        1,009

        952

        1,059

        1,217

        1,489

        5

        Mean Performance Score by Decile (Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 30 Days of Life - Registry) - Clinician Level

         

        Overall

        Min

        Decile 1

        Decile 2

        Decile 3

        Decile 4

        Decile 5

        Decile 6

        Decile 7

        Decile 8

        Decile 9

        Decile 10

        Max

        Mean Performance Score

        24.97%

        0.00%

        8.84%

        15.68%

        19.34%

        21.92%

        24.37%

        27.20%

        29.74%

        32.14%

        35.39%

        45.63%

        60.00%

        Number of Entities

        153

        1

        16

        16

        16

        15

        15

        15

        15

        15

        15

        15

        1

        Number of Persons

        10,268

        5

        1,223

        911

        1,018

        837

        955

        1,263

        1,029

        864

        1,327

        841

        5

        Mean Performance Score by Decile (Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 14 Days of Life - Registry) - Practice Level

         OverallMinDecile 1Decile 2Decile 3Decile 4Decile 5Decile 6Decile 7Decile 8Decile 9Decile 10Max
        Mean Performance Score 9.80%6.00%6.00%8.00%9.00%9.00%10.00%10.00%11.00%11.00%12.00%12.00%12.00%
        Number of Entities 10111111111111
        Number of Persons13,8127037032,5151,0511,4163,3501,2619598801,009668668

        Mean Performance Score by Decile (Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 30 Days of Life - Registry) - Practice Level

         OverallMinDecile 1Decile 2Decile 3Decile 4Decile 5Decile 6Decile 7Decile 8Decile 9Decile 10Max
        Mean Performance Score25.40%20.00%20.00%21.00%22.00%24.00%24.00%26.00%27.00%29.00%29.00%32.00%32.00%
        Number of Entities10111111111111
        Number of Persons13,8127037031,4161,0519592,5153,3501,0098801,261668668
          Closing Care Gaps
          3.1 Contributions Toward Closing Care Gaps

          A recent systematic review and meta-analysis looked at aggressive EOL cancer care among ~2.7 million patients across 129 studies, and found that aggressive EOL care is a common global practice (Ma et al., 2024): 

          • Repeated hospital admissions (>1) in the last 30 days of life: 17.9%.
          • Repeated emergency room visits (>1) in the last 30 days of life: 14.8%.
          • Intensive care unit (ICU) stays in the last 30 days of life: 14.4%.
          • Hospice enrollment less than 3 days before death: 14.4%.
          • Chemotherapy in the last 14 days of life: 11.6%.

          Additionally, of the studies using a composite score, more than half of the patients experienced at least one measure of aggressive care at the end of their lives. The research also showed that patients with hematologic malignancies were significantly more likely to receive aggressive care, including higher rates of late hospice enrollment, ICU stays, and chemotherapy in the last weeks of life, compared to those with solid tumors (Ma et al., 2024). 

           

          Another study analyzed EMR data from ~60,000 patients with advanced cancer who died between 2015 and 2019 and found that over 30 percent of patients received systemic treatment within 30 days of death (Canavan et al., 2023). Study authors found disparities as well; White patients were more likely to receive EOL systemic therapy within 30 days of death than Black patients (36.6% v 32.7% [P<.001]) and within 14 days of death (15.7% v 13.6% [P < .001]). Commercially insured patients were more likely to receive EOL systemic therapy within 30- and 14-days compared with those covered by Medicare or Medicaid (30-day rates were 43.3% v 37.3% and 37.0%, respectively (P <.001), and 14-day rates were 18.6% v 15.6% and 14.9%, respectively (P < .001)) (Canavan et al., 2023). A retrospective cohort study looked at EMR data from deceased adult patients with cancer and  found that ~12 percent received cancer treatment in the last two weeks of life. Among these 92 patients, almost 60% had metastatic disease and 60% died in the hospital. Only about 30 % had advanced directives or dedicated palliative care that lasted longer than one week (Wilkerson et al., 2021).

          CMS launched the Enhancing Oncology Model (EOM) in July 2023. EOM is a voluntary, episode-based model that 44 oncology practices treating patients with high-risk cancer participate in. Per the 2025 Enhancing Oncology Model – First Evaluation Report, both EOM and non-EOM practices had a high share of episodes where patients received systemic cancer-directed treatment in the last 14 days of life (16.8% and 15.6% respectively), indicating room for improvement on this measure (CMS, 2025). 

          References:

          1. Canavan, M., Wang, X., Ascha, M., Miksad, R., Showalter, T. N., Calip, G., Gross, C. P., & Adelson, K. (2023). End-of-Life Systemic Oncologic Treatment in the Immunotherapy Era: The Role of Race, Insurance, and Practice Setting. Journal of Clinical Oncology: Official Journal of the American Society of Clinical Oncology41(30), 4729–4738. https://doi.org/10.1200/JCO.22.02180&nbsp;
          2. Centers for Medicare & Medicaid Services. (2025). EOM First Evaluation Main Reporthttps://www.cms.gov/priorities/innovation/data-and-reports/2025/eom-1st-eval-report
          3. Ma, Z., Li, H., Zhang, Y., Zhang, L., Huang, G., Zhang, Y., Shi, L., Liu, W., An, Z., & Guan, X. (2024). Prevalence of aggressive care among patients with cancer near the end of life: a systematic review and meta-analysis. EClinicalMedicine71, 102561. https://doi.org/10.1016/j.eclinm.2024.102561
          4. Wilkerson, D. H., Santos, J. L., Tan, X., & Gomez, T. H. (2021). Too Much Too Late? Chemotherapy Administration at the End of Life: A Retrospective Observational Study. The American journal of hospice & palliative care38(10), 1182–1188. https://doi.org/10.1177/1049909120966619 
            Feasibility
            4.1a Data Structure and Availability

            The measure is designated as a Clinical Quality Measure (CQM), with all underlying data elements fully aligned with USCDI (United States Core Data for Interoperability) and USCDI+ Quality standard definitions. Calculation is performed via digital methodology, utilizing electronic sources where key data elements are captured within defined, structured fields.

            4.1b Implementation Costs and Burden

            The measure’s high level of utilization and successful reporting within the Merit-based Incentive Payment System (MIPS) demonstrate its low administrative burden and overall ease of reporting. By adhering to the national interoperability standards and leveraging existing electronic data fields, the measure ensures high data fidelity and standardized reporting across clinical environments.

            4.1c Confidentiality

            Data collection for this measure is conducted in strict accordance with HIPAA Privacy and Security Rules. Confidentiality is maintained because the measure utilizes de-identified Electronic Health Record (EHR) data sourced from clinical systems. Direct identifiers are removed or masked prior to the data being made available for measure calculation, ensuring that the analysis remains focused on clinical patterns and outcomes rather than individual patient identities.

             

            To mitigate the risk of re-identification in small patient populations (the "Small N" problem), a minimum threshold of five (5) patients is suggested for performance reporting. This recommended suppression guideline is intended to prevent "deductive disclosure," where an individual’s identity could potentially be inferred from a very small data set or outlier results within a specific clinical facility. By suggesting this minimum volume, the measure balances the need for transparent, data-driven reporting with the highest standards of patient privacy.

             

            Finally, confidentiality risks associated with patient surveys are not applicable to this measure, as it relies entirely on clinical data extracted from EHRs with no direct patient interaction or survey-based data collection.

            4.3 Feasibility Informed Final Measure

            The continued use of the measure reflects a mature, data-driven tool that leverages existing electronic health record capabilities to ensure efficient reporting and reliable performance. This long-standing measure is fully optimized for contemporary clinical environments.

            4.4 Proprietary Information
            Proprietary measure or components with fees
            4.4a Fees, Licensing, or Other Requirements

            As the world’s leading professional organization for physicians and others engaged in clinical cancer research and cancer patient care, American Society of Clinical Oncology, Inc. (“Society”) and its affiliates1 publishes and presents a wide range of oncologist‐approved cancer information, educational and practice tools, and other content. The ASCO trademarks, including without limitation ASCO®, American Society of Clinical Oncology®, JCO®, Journal of Clinical Oncology®, Cancer.Net™, QOPI®, QOPI Certification Program™, and Conquer Cancer®, are among the most highly respected trademarks in the fields of cancer research, oncology education, patient information, and quality care. This outstanding reputation is due in large part to the contributions of ASCO members and volunteers. Any goodwill or commercial benefit from the use of ASCO content and trademarks will therefore accrue to the Society and its respective affiliates and further their tax‐exempt charitable missions. Any use of ASCO content and trademarks that may depreciate their reputation and value will be prohibited.

            ASCO does not charge a licensing fee to not-for-profit hospitals, healthcare systems, or practices to use the measure for quality improvement, research or reporting to federal programs. ASCO encourage all of these not-for-profit users to obtain a measure library license so ASCO can:

            • Keep users informed about measure updates and/or changes
            • Learn from measure users about any implementation challenges to inform future measure updates and/or changes
            • Track measure utilization (outside of federal reporting programs) and performance rates

            ASCO has adopted the Council of Medical Specialty Society’s Code for Interactions with Companies (https://cmss.org/wp-content/uploads/2026/04/CMSS-Code-for-Interactions-…), which provides guidance on interactions with for‐profit entities that develop produce, market or distribute drugs, devices, services or therapies used to diagnose, treat, monitor, manage, and alleviate health conditions. The Society’s Board of Directors has set Licensing Standards of American Society of Clinical Oncology ( https://cdn.bfldr.com/KOIHB2Q3/as/bsrth8mwgbsrpvrsbt6gxqb/2023-ASCO-Lic…) to guide all licensing arrangements.


            In addition, ASCO has adopted the Council of Medical Specialty Society’s Policy on Antitrust Compliance (https://cmss.org/statements/cmss-policy-on-antitrust-compliance/), which provided guidance on compliance with all laws applicable to its programs and activities, specifically including federal and state antitrust laws, including guidance to not discuss, communicate, or make announcements about fixing prices, allocating customers or markets, or unreasonably restraining trade.

              Testing Data
              5.1.1 Data Used for Testing

              Testing for this measure was conducted using Electronic Health Record (EHR) data sourced from The US Oncology Network (USON)/McKesson databases. This data provided comprehensive national geographic coverage, spanning urban, suburban, and rural regions. The analysis included a total of 158 physicians and 10 practices identified within the USON network.

              5.1.1a Dates of Testing Data

              The testing period for both data sources encompassed the timeframe from January 1, 2023, to December 31, 2024. This two-year window ensures the measure was validated against the most current coding standards and clinical practice patterns, providing a stable and contemporary baseline for analysis.

              5.1.2 Differences in Data

              There are specific differences in the sample sizes used for various aspects of testing, driven by the clinical sensitivity of the measure and the statistical requirements of the analysis:

               

              Performance Gap and Validity Testing

              Threshold: Entities with a minimum of five (5) patients meeting the measure denominator.

              Sample Size: 

              • At the individual clinician level, the analysis included 158 reporting entities (derived from USON/McKesson Electronic Health Record (EHR) data, Jan 1, 2023 – Dec 31, 2024).
              • At the practice level, the analysis included 10 reporting entities (derived from USON/McKesson Electronic Health Record (EHR) data, Jan 1, 2023 – Dec 31, 2024).

              Rationale: This is an end-of-life systemic cancer directed therapy utilization measure. Because harmful systemic cancer directed therapy in the last days of life is a critical quality indicator in oncology, ASCO determined that "each patient matters" in the assessment of care delivery. A lower threshold of N ≥ 5 was utilized to prioritize “Visibility over Volatility.”

              • Health Equity: Utilizing a broader inclusion criteria prevents quality "blind spots" in community-based or rural oncology settings where EOL events are significant but may occur less frequently. High thresholds would effectively penalize these practices by making their care invisible to the measure.
              • Clinical Significance: While smaller denominators inherently have a higher standard error, the clinical priority of avoiding systemic cancer directed therapy in the last days of life outweighs the statistical risk of "noisy" scores at the individual entity level.

               

              Reliability Testing

              Threshold: Entities with a minimum of twelve (12) patients meeting the measure denominator.

              Sample Size: 

              • At the individual clinician level, the analysis included 147 reporting entities (a subset of the EHR dataset described above).
              • For practice-level reporting, 10 entities were identified. This group represents the full aggregate of the aforementioned cohort, as all practices met or exceeded the 12-patient minimum threshold.

              Rationale: A higher threshold of N ≥ 12 was applied specifically for reliability testing to maintain psychometric rigor.

              • Signal-to-Noise Ratio: For a measure’s reliability coefficient (Beta) to be stable, there must be enough patient volume to distinguish true clinical variation from random statistical noise.
              • Instrument Validation: Using these 271 higher-volume entities ensures that the reliability of the "measurement instrument" itself is validated on a stable data set before being applied to the broader clinical population.

               

              Exclusions and Risk Adjustment

              No other differences in data sources or timeframes were utilized for exclusions or risk-adjustment testing.

              5.1.3 Characteristics of Measured Entities

              Performance on this measure was assessed for a cohort of 158 physicians and 10 practices affiliated with the US Oncology Network (USON)/McKesson across the United States.

              5.1.4 Characteristics of Units of the Eligible Population

              To ensure patient privacy, characteristics of the eligible population were not attributed to specific practices or physicians. We obtained aggregate demographic data from USON for patients who reported gender and race; the demographic profile for the overall sample is detailed in the tables below.

              CharacteristicCategoryPatient Count (n)Percentage (%)
              Gender (N=9,023)Male4,99955.4%
               Female4,02444.6%
                  
              Race (N=8,468)White7,01082.8%
               Black or African American4365.1%
               Other3053.6%
               Asian1491.8%
               American Indian or Alaska Native300.4%
               Native Hawaiian or Other Pacific Islander110.1%
               Declined to Specify5206.1%
               Unknown70.1%

              Note: Race data was available for 93.8% (n=8,468) of the total eligible population (N=9,023). The discrepancy reflects instances of missing or undocumented values in the source dataset and does not impact the statistical integrity of the overall analysis.

              5.2.2 Method(s) of Reliability Testing

              Person or Encounter Level (Data Element) Testing

              Firstly, To verify the reliability of the data elements in this measure, a random sample of 105 patients was selected across 8 different test sites. Scoring for each data element was performed by both a measure abstractor and an automated algorithm, with the Kappa statistic used to evaluate the level of agreement between the two methods. The denominator, numerator, denominator exception, and numerator exception data elements were assessed for all 105 patients.

               

              Accountable Entity Level (Measure Score) Testing

              Secondly, An assessment of the measure's reliability was performed through the utilization of signal-to-noise analysis, a method that determines the precision of the actual construct in comparison to the random variation. The signal-to-noise ratio is determined by calculating the ratio of between-unit variance to total variance. This analysis provides valuable insight into the measure's reliability and its ability to produce consistent results by describing how well one can confidently distinguish the performance of one clinician from another.

               

              Based on the hierarchical modeling approach for provider profiling, the following steps were taken:  

              • Data Aggregation: Patient-level data were captured as binary (pass/fail) events and aggregated to the clinician level to determine the numerator and denominator for each physician.
              • Model Selection: We utilized a Beta-Binomial model, which is the natural fit for estimating the reliability of simple pass/fail rate measures.
              • Variance Partitioning: The model partitioned the total observed variability in practice scores into two components: between-unit variance (the "signal," or true differences in physician quality) and within-unit variance (the "noise," or random sampling error).
              • Reliability Calculation: For each clinician, a reliability coefficient (R) was calculated using the ratio of the estimated provider-to-provider variance to the sum of the provider-to-provider variance and the binomial error variance (p(1-p)/n).
              • Threshold Application: The analysis focused on identifying the stability of these scores for physicians meeting a minimum patient count of 12.
              5.2.3 Reliability Testing Results

              Person or Encounter Level (Data Element) Testing

              Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 14 Days of Life

              Measure Data Element Kappa Estimate Standard Error 95% Confidence Limits 
              Denominator 1.0000.0000 1.00001.0000
              Numerator 0.96190.01870.90530.9895
              Denominator Exception1.0000 0.0000 1.0000 1.0000 
              Numerator Exception0.99050.0095 0.9481 0.9998

              Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 30 Days of Life

              Measure Data Element Kappa Estimate Standard Error 95% Confidence Limits 
              Denominator 1.0000.0000 1.00001.0000
              Numerator 0.96190.01870.90530.9895
              Denominator Exception1.0000 0.0000 1.0000 1.0000 
              Numerator Exception0.99050.00950.9481 0.9998

              Accountable Entity Level (Measure Score) Testing

              At the clinician level, the 14-day measure yielded an overall reliability of 0.446, with all deciles (0.275–0.584) falling below the 0.60 threshold alongside a mean performance of 9.9%. The 30-day clinician-level measure demonstrated an overall reliability of 0.468 (range 0.218–0.647), where only the highest volume decile exceeded the 0.60 benchmark as mean performance rose to 24.8%. Reliability scores improved significantly when aggregated at the practice level; the 14-day measure reached an overall score of 0.685 (range 0.513–0.864) and met the 0.60 threshold from Decile 3 onward. The 30-day practice-level measure showed the highest stability with an overall reliability of 0.860, with every decile (0.762–0.947) exceeding the 0.60 reporting standard at a mean performance rate of 25.4%.

              5.2.4 Interpretation of Reliability Results

              Person or Encounter Level (Data Element) Testing

              The results show very strong agreement across all data elements. The measure abstractor and the automated algorithm agreed completely on the Denominator and Denominator Exception, scoring a perfect 1.0. Agreement was also nearly perfect for the Numerator (0.9619) and Numerator Exception (0.9905). This high level of agreement is directly attributable to the long-standing operationalization of these measures. Rather than relying on subjective clinical interpretation or manual abstraction, these measures are built upon highly specific, structured data fields that have been refined over several years of use. By utilizing standardized coding sets and discrete data elements, these measures eliminate the "noise" typically associated with human error or varying clinical documentation styles.

               

              Accountable Entity Level (Measure Score) Testing

              Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 14 Days of Life - Clinician Level
              This measure shows moderate reliability (0.446), indicating noisy clinician-level data. Reliability scales with volume from 0.275 to 0.584, remaining below the 0.60 accepted threshold for high-stakes reporting. Despite a 9.9% mean performance (8.8%–12.7% range) suggesting practice variation, the moderate reliability warrants caution when ranking individual clinicians.

               

              Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 30 Days of Life - Clinician Level
              Reliability for the 30-day measure is slightly higher (0.468) but remains noisy overall. However, reliability scales from 0.218 to 0.647, with high-volume clinicians in Decile 10 successfully exceeding the 0.60 threshold. Mean performance rose to 24.8% (23.4%–28.2% range). While high-volume data is more stable, overall moderate reliability still warrants caution when using this measure for definitive accountability.

               

              Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 14 Days of Life - Practice Level

              At the practice level, the 14-day measure demonstrates significantly higher stability with an overall reliability of 0.685, comfortably exceeding the 0.60 threshold for performance reporting. Reliability scales from 0.513 in the lowest decile to 0.864 in the highest. Notably, from Decile 3 onward, all practices meet or exceed the 0.60 standard, and the top three deciles (Deciles 8–10) achieve high-confidence scores above 0.74. These results suggest the measure is very robust for accountability and definitive ranking when aggregated at the practice level with greater patient numbers.

               

              Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 30 Days of Life - Practice Level

              The 30-day practice-level measure demonstrates excellent overall reliability (0.86), with every decile significantly exceeding the 0.60 threshold. Reliability remains exceptionally robust across the sample, ranging from a minimum of 0.762 to a maximum of 0.947, indicating that nearly all observed variation reflects true differences in clinical practice rather than random noise. With a mean performance score of 25.4%, these results are highly stable and well-suited for high-stakes reporting, definitive ranking, and practice-level accountability.

              Table 2a. Accountable Entity Level Reliability Testing Results by Denominator, Target Population Size

              Reliability and Performance Score by Denominator Decile: Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 14 Days of Life (Registry version), Clinician Level, Jan 2023 – Dec 2024

               OverallMinDecile 1Decile 2Decile 3Decile 4Decile 5Decile 6Decile 7Decile 8Decile 9Decile 10Max
              Reliability0.4460.570.2750.3420.3660.3650.4630.4490.5360.5490.5520.5840.599
              Mean Performance Score9.9%4.0%12.7%10.5%9.4%11.2%8.8%9.3%8.8%8.8%9.5%10.4%16.0%
              Number of Entities1472151515151515151414141
              Number of Persons8,939242724155246658309431,0931,1841,3081,705195

              Reliability and Performance Score by Denominator Decile: Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 30 Days of Life (Registry version), Clinician Level, Jan 2023 – Dec 2024

               OverallMinDecile 1Decile 2Decile 3Decile 4Decile 5Decile 6Decile 7Decile 8Decile 9Decile 10Max
              Reliability 0.4680.1320.2180.3010.3340.380.4390.490.5280.5690.5950.6470.703
              Mean Performance Score 24.8%33.0%28.2%23.4%24.4%25.1%24.2%24.4%24.5%26.2%24.6%26.1%37.0%
              Number of Entities 1472151515151515151414141
              Number of Persons8,939242724155246658309431,0931,1841,3081,705195

              Reliability and Performance Score by Denominator Decile: Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 14 Days of Life (Registry version), Practice Level, Jan 2023 – Dec 2024

               OverallMinDecile 1Decile 2Decile 3Decile 4Decile 5Decile 6Decile 7Decile 8Decile 9Decile 10Max
              Reliability 0.6850.5130.5130.6650.5970.6230.620.6860.6950.740.8470.8640.864
              Mean Performance Score 9.8%12.0%12.0%6.0%11.0%11.0%12.0%9.0%10.0%9.0%8.0%10.0%10.0%
              Number of Entities 10111111111111
              Number of Persons13,8126686687038809591,0091,0511,2611,4162,5153,3503,350

              Reliability and Performance Score by Denominator Decile: Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 30 Days of Life (Registry version), Practice Level, Jan 2023 – Dec 2024

               OverallMinDecile 1Decile 2Decile 3Decile 4Decile 5Decile 6Decile 7Decile 8Decile 9Decile 10Max
              Reliability0.860.7620.7620.8210.8180.8460.8430.8640.8640.8980.9350.9470.947
              Mean Performance Score25.4%32.0%32.0%20.0%29.0%24.0%27.0%22.0%29.0%21.0%24.0%26.0%26.0%
              Number of Entities10111111111111
              Number of Persons13,8126686687038809591,0091,0511,2611,4162,5153,3503,350
              Table 2b. Accountable Entity Level Reliability Testing Results by Reliability Score

              Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 14 Days of Life - Clinician Level

               OverallMinDecile 1Decile 2Decile 3Decile 4Decile 5Decile 6Decile 7Decile 8Decile 9Decile 10Max
              Reliability0.4460.0590.1380.2210.2970.3710.4320.460.5120.5830.6380.8551

              Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 30 Days of Life - Clinician Level

               OverallMinDecile 1Decile 2Decile 3Decile 4Decile 5Decile 6Decile 7Decile 8Decile 9Decile 10Max
              Reliability 0.4680.1320.180.2770.3340.3850.4330.4850.540.5820.6270.710.761

              Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 14 Days of Life - Practice Level

               OverallMinDecile 1Decile 2Decile 3Decile 4Decile 5Decile 6Decile 7Decile 8Decile 9Decile 10Max
              Reliability 0.6850.5130.5130.5970.620.6230.6650.6860.6950.740.8470.8640.864

              Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 30 Days of Life - Practice Level

               OverallMinDecile 1Decile 2Decile 3Decile 4Decile 5Decile 6Decile 7Decile 8Decile 9Decile 10Max
              Reliability0.860.7620.7620.8180.8210.8430.8460.8640.8640.8980.9350.9470.947
              5.3.3 Method(s) of Validity Testing

              We evaluated the construct validity of three oncology performance measures focused on end-of-life care at both the physician and practice levels. By examining the Pearson correlation coefficients and their statistical significance, we determined whether the empirical relationships reliably align with expected clinical logic and theoretical frameworks regarding end-of-life care pathways.

               

              Measures Evaluated

              1. Hospice ≥ 3 Days: Percentage of patients who died with cancer enrolled in hospice for at least 3 days immediately before death.
              2. Therapy Last 14 Days: Percentage of patients who died with cancer receiving systemic cancer-directed therapy in the last 14 days of life.
              3. Therapy Last 30 Days: Percentage of patients who died with cancer receiving systemic cancer-directed therapy in the last 30 days of life.

              Physician-Level Analysis (N = 158)

              Hypothesized Relationships 

              At the individual provider level, we expect a convergent (positive) relationship between the two aggressive systemic therapy measures, and a divergent/inverse (negative) relationship between meaningful hospice enrollment and end-of-life systemic therapy.

               

              Practice-Level Analysis (N = 10)

              Hypothesized Relationships

              Consistent with the physician-level analysis, we expect practices with a high propensity to administer late systemic therapy to show strong positive correlations between the two therapy timelines, and strong negative correlations regarding timely hospice enrollment, as meaningful hospice care requires the cessation of curative therapies.

              5.3.4 Validity Testing Results

              Physician-Level Analysis (N = 158)

              Empirical Findings & Significance

              • Evidence of Convergent Validity (Therapy vs. Therapy)
                • Result: A strong, highly significant positive correlation (r = 0.6669, p < 0.0001) exists between Therapy Last 14 Days and Therapy Last 30 Days.
                • Interpretation: Individual physicians who tend to prescribe systemic therapy within the last month of life are also highly likely to prescribe it within the final two weeks of life. The incredibly low p-value confirms with near absolute certainty that these two measures are capturing the same underlying physician behavioral construct regarding aggressive end-of-life treatment.
              • Evidence of Divergent/Inverse Validity (Hospice vs. Therapy)
                • Result: Statistically significant negative correlations were observed between Hospice ≥ 3 Days and both systemic therapy measures (r = -0.2478, p = 0.0017 for 14 Days; r = -0.1950, p = 0.0141 for 30 Days).
                • Interpretation: The relationships are highly statistically significant due to the large sample size. This confirms the clinical trade-off holds true at the provider level: physicians with a higher tendency to utilize late-stage systemic treatments systematically display lower rates of effectively transitioning patients to hospice care for at least 3 days prior to death.

              Practice-Level Analysis (N = 10)

              Empirical Findings & Significance

              • Evidence of Convergent Validity (Therapy vs. Therapy)
                • Result: A strong, highly significant positive correlation (r = 0.7998, p = 0.0055) was observed between Therapy Last 14 Days and Therapy Last 30 Days.
                • Interpretation: As expected, practices that frequently administer systemic therapy in the final month of life also frequently administer it in the final two weeks. The high statistical significance indicates there is less than a 1% probability that this strong alignment occurred by random chance.
              • Evidence of Divergent/Inverse Validity (Hospice vs. Therapy)
                • Result: Strong, significant negative correlations were observed between the Hospice ≥ 3 Days measure and both therapy measures (r = -0.8045, p = 0.0050 for Therapy Last 30 Days; r = -0.6446, p = 0.0442 for Therapy Last 14 Days).
                • Interpretation: This inverse relationship provides excellent, statistically backed validation. It demonstrates that the measures successfully capture the clinical trade-off between palliative/hospice care and aggressive systemic treatment at the aggregate organizational level. Practices with higher utilization of end-of-life systemic therapy are demonstrably and non-randomly delaying or underutilizing hospice care.
              5.3.4a Attach Additional Validity Testing Results
              5.3.5 Interpretation of Validity Results

              Physician-Level Analysis (N = 158)

              The analysis of 158 individual providers strongly supports the construct validity of these measures. The empirical data reliably reflects expected clinical pathways, demonstrating that timely hospice enrollment and late-stage systemic therapy act as competing, inverse clinical priorities at the physician level.

               

              Practice-Level Analysis (N = 10)

              The correlation data provides robust, statistically significant evidence for the construct validity of these three performance measures. Even with a smaller sample size of 10 practices, the strength of the clinical relationships drives highly significant results.

               

              • Overall Summary
                Across both individual physician behaviors (N=158) and aggregated practice patterns (N=10), these three measures interact exactly as predicted by established clinical pathways. The empirical data mathematically and significantly reflects the reality that aggressive systemic treatment and timely hospice enrollment are competing clinical events. Stakeholders can be highly confident that these measures are accurately and reliably capturing valid dimensions of end-of-life oncology care quality across different levels of attribution.
              5.4.1 Methods Used to Address Risk Factors
              5.4.1b Rationale For No Adjustment or Stratification

              The decision to maintain unadjusted performance scores for these end-of-life measures is rooted in the philosophy that quality palliative care and clinical stewardship represent universal standards that should not fluctuate based on patient complexity. Unlike outcomes heavily influenced by biological variance, metrics such as systemic therapy administration and ICU utilization reflect direct clinical decision-making and provider agency; therefore, risk adjustment could inadvertently "normalize" aggressive care by suggesting that medical complexity justifies a departure from palliative best practices. Furthermore, because these measures are calculated using a denominator of patients who have already deceased, the cohort is inherently characterized by high clinical risk, making additional adjustment statistically redundant and potentially misleading. By prioritizing unadjusted data, ASCO maintains a transparent view of the raw clinical reality, ensuring that gaps in service and health inequities remain visible rather than being masked by statistical smoothing. Ultimately, this approach upholds the principle that every patient, regardless of their diagnosis or comorbidities, deserves a timely transition to hospice and a coordinated, comfort-focused end-of-life experience.

                Use
                6.1.1 Current Status
                In use
                6.1.2a Other Current or Planned Use

                As the measure steward, ASCO is committed to the broad implementation of this measure across the national quality landscape. We are in ongoing consultations with CMS regarding its inclusion in programs such as MIPS, PCHQR and IQR. Our roadmap includes finalizing the technical specifications required for federal uptake while simultaneously promoting the measure for use in private payer quality initiatives, VBPs and ASCO’s own quality improvement portfolio.

                 

                Note that this updated CBE 0210 quality measure will be used in MIPS beginning PY 2027; the annual update process is currently underway. It will also be used in ASCO Certified in the future. 

                6.1.3 Program Details
                Name of the program and sponsor
                14-day version of the measure used in Merit-based Incentive Payment System (MIPS) reporting program, Center for Medicare and Medicaid Services (CMS)
                Purpose of the program

                MIPS takes a comprehensive approach to payment by basing consideration of quality on a set of evidence-based measures that were primarily developed by clinicians, thus encouraging improvement in clinical practice and supporting advances in technology that allow for easy exchange of information. 

                Geographic area and percentage of accountable entities and patients included

                MIPS eligible providers may earn performance-based payment adjustments for the services provided to Medicare patients in the USA. For the 2023 MIPS reporting year, 3,368 individual clinicians reported on MIPS 453. Of these, 3,288 practice in urban or suburban locations, while 80 practice in rural locations. The Northeast has the highest overall volume of reporting clinicians (2,300), led by New York with 1,775 practitioners and New Jersey with 508. Following the Northeast in total volume are the South (481), the West (330), and the Midwest (257). Notably, the South has the highest number of clinicians practicing at rural locations with 50, a concentration primarily driven by Arkansas (47).

                Applicable level of analysis and care setting

                Clinician/Group Level; Registry Data Source; Outpatient Services/Ambulatory Care Setting

                6.1.4 Attributes for Accountability Use

                1. Target Populations
                The measure is applicable to adult patients (aged 18 and older) with a confirmed diagnosis of cancer.

                 

                2. Accountable Entities
                Accountability is attributed at the level of the individual clinician or physician.

                • Attribution Logic: Patients are attributed to the entity that provides the plurality of oncology-related services or manages the "episode of care" (e.g., the six-month period following the initiation of chemotherapy).
                • Responsibility: The entity is held accountable for the patient’s clinical outcomes, resource utilization (such as avoidable ER visits), and adherence to evidence-based pathways.

                3. Care Settings
                The primary care setting is the Outpatient Oncology Clinic, including:

                • Community-based oncology practices.
                • Hospital Outpatient Departments (HOPDs).
                • Infusion Centers.

                Note on Care Settings: Clinical oncologists provide care within the outpatient setting; however, this measure set monitors related clinical outcomes across multiple sites of service. Evaluated events include, but are not limited to, inpatient/outpatient hospital infusions, ICU stays, and emergency department encounters stemming from complications of the outpatient treatment.

                6.2.1 Actions of Measured Entities to Improve Performance

                There is evidence that there are interventions that can be put in place to reduce unnecessary systemic cancer-directed therapies in the last weeks of life:

                • Patients with months to weeks to live should be provided with guidance regarding the anticipated course of the disease. Physicians should reassess prognostic awareness and goals of therapy. As functional status worsens, these patients may become more concerned about the side effects of cancer-directed treatment and consider focusing their care on maintaining quality of life. The option of discontinuing cancer treatment aligned with goals of care and initiating goal-directed supportive care should be discussed. (Category 2A) (NCCN, 2026)
                • In general, patients with weeks to days to live (eg, dying patients) and comfort-oriented goals should discontinue all treatments not directly contributing to patient comfort. Intensive palliative care focusing on symptom management should be provided in addition to preparation for the dying process. Referral for hospice care should be placed, if not already done. (Category 2A) (NCCN, 2026)
                • Clinicians should refer patients with advanced solid tumors and hematologic malignancies to specialized interdisciplinary palliative care teams that provide inpatient and outpatient care early in the course of disease, alongside active treatment of their cancer. (Moderate, Strong) (Sanders et al., 2024)
                • Don’t use cancer-directed therapy for solid tumor patients with the following characteristics: low performance status (3 or 4), no benefit from prior evidence-based interventions, and no strong evidence supporting the clinical value of further anti-cancer treatment. (Schnipper et al., 2012)
                  • Cancer directed treatments are likely to be ineffective and more toxic for solid tumor patients who meet the above-stated criteria.
                  • Exceptions may include when disease characteristics (e.g., an extremely chemo-sensitive tumor, or a sensitive and targetable alteration in the tumor) suggest a high likelihood of a response to therapy that may reverse functional limitations related to the cancer.
                  • While this Choosing Wisely statement originally referred to cytotoxic chemotherapy, it also applies to novel, purportedly less-toxic treatments such as immunotherapy and off-label targeted therapy in patients who meet the above-stated criteria.

                The below outlines the difficulty of the actions described above and how measured entities can overcome those difficulties:

                 

                ActionDifficulty LevelWhy it is DifficultHow to Overcome
                Providing guidance on disease trajectory, reassessing prognostic awareness, and discussing the discontinuation of treatment.High
                • Clinicians often feel inadequately trained to deliver bad news or navigate the "prognostic transition." There is a fear that being too honest will destroy a patient's hope.
                • Even in 2026, predicting the exact "months to weeks" window remains an imprecise science. Clinicians may wait for "perfect certainty" before having the talk, which often results in the talk happening too late.
                • These are not quick conversations. They require emotional space and time that the standard 15-minute oncology follow-up appointment does not provide.

                 

                • Implement mandatory training modules that give oncologists "scripts" for navigating these conversations.
                • Use a dedicated "Goals of Care" tab in the Electronic Health Record (EHR) to track these discussions. If the tab isn't updated every 30–60 days for advanced patients, the system can trigger a reminder.
                • Frame these talks as a standard part of high-quality care rather than a "crisis intervention."

                 

                Stopping all treatments not contributing to comfort, initiating intensive symptom management, and placing hospice referrals.High
                • Family members often view the cessation of therapy as "giving up" or "letting the patient die," leading to intense pressure on the physician to continue futile treatments.
                • Once a patient is on a systemic therapy cycle, it is logistically easier to keep the next appointment than it is to stop everything, coordinate hospice, and manage the emotional fallout.
                • Patients in the "weeks to days" phase often experience sudden symptoms (shortness of breath, pain) that lead them to the Emergency Room, where the default is "stabilize and treat" rather than "comfort and release."

                 

                • For hospitalized patients, a mandatory palliative care consult for any stage IV patient with an acute decline ensures that comfort is prioritized over further diagnostic testing.
                • Using non-physician staff to support the family's emotional transition helps the physician focus on the clinical transition to comfort meds.
                • Use prognostic tools and multidisciplinary team reviews (doctors, nurses, social workers) to assess decline more holistically.

                 

                Early ReferralModerate

                Shortage of specialist palliative care clinicians and the stigma that palliative care means "giving up." Clinician reluctance to initiate "hospice" talk, often due to a desire to pursue further curative lines of therapy.

                 

                In addition to physicians, oncology nurses can be positioned to provide primary palliative care and provide increased advance care planning with patients with advanced cancer (NCCN, 2026). The <NCCN> Panel emphasizes the importance of initiating or continuing advance care planning conversations and systematically reviewing advance care plans to ensure ongoing accuracy as illness or situation evolves. To avoid demeaning the value of end of life care, palliative and/or hospice care should not be framed as “giving up” but instead refocusing the care plan to achieve a better quality of life (NCCN, 2026) Frame hospice as an "extra layer of support" that maximizes quality of life (QOL) alongside or following treatment.
                ACP DocumentationHighThese conversations are time-intensive and clinicians often lack training in high-stakes communication.Embed ACP templates in the EHR. Use a "primary care/oncology" shared model where social workers or nurses lead initial goals of care discussions.

                 

                References:

                1. National Comprehensive Cancer Network. (2026). NCCN Clinical Practice Guidelines in Oncology (NCCN Guidelines®): Palliative Care (Version 1.2026). https://www.nccn.org/guidelines/guidelines-detail?id=1454
                2. Sanders, J. J., Temin, S., Ghoshal, A., Alesi, E. R., Ali, Z. V., Chauhan, C., Cleary, J. F., Epstein, A. S., Firn, J. I., Jones, J. A., Litzow, M. R., Lundquist, D. M., Mardones, M. A., Nipp, R. D., Rabow, M. W., Rosa, W. E., Zimmermann, C., & Ferrell, B. R. (2024). Palliative Care for Patients with Cancer: ASCO guideline Update. Journal of Clinical Oncology, 42(19), 2336–2357. https://doi.org/10.1200/JCO.24.00542
                3. Schnipper, L. E., Smith, T. J., Raghavan, D., Blayney, D. W., Ganz, P. A., Mulvey, T. M., & Wollins, D. S. (2012). American Society of Clinical Oncology Identifies Five Key Opportunities to Improve Care and Reduce costs: The Top Five List For Oncology. Journal of Clinical Oncology: Official Journal of the American Society of Clinical Oncology30(14), 1715–1724. https://doi.org/10.1200/JCO.2012.42.8375 

                 

                6.2.2 Feedback on Measure Performance

                ASCO has not received any feedback on measure performance or implementation. 

                6.2.3 Consideration of Measure Feedback

                N/A

                6.2.4 Progress on Improvement

                Per the 2024-2026 MIPS Quality Benchmark reports, the average performance rates on the 14-day version of this registry measure are 10.71 (2024), 10.74 (2025), and 8.37 (2026) (CMS, n.d.), indicating modest improvements in the most recent year. Since the updated measure has exceptions for patients getting stem cell transplants and/or CART T-cell therapy and exclusions for patients getting hydroxyurea and/or BTK inhibitors, we anticipate performance rates will continue to improve. However, the 30-day version of the measure will have more substantive gaps. 

                 

                Centers for Medicare & Medicaid Services. (n.d.). 2024-2026 Quality Benchmarks. Quality Payment Program. https://qpp.cms.gov/reporting-requirements/measures-activities/benchmarks

                6.2.5 Unexpected Findings

                As part of its May 2025 call for public comments on ASCO’s updated EOL measures, ASCO did receive feedback from respondents to add more exclusions and exceptions for treatment intent, clinical trial enrollment, patient preferences, and barriers to access palliative care and hospice. ASCO’s End of Life Measures Technical Expert Panel emphasizes that performance is not expected to be perfect on these quality measures. A margin of error should be expected to account for the above. 

                  Public Comments

                  Submitted by Katherine Ast,… (not verified) on Tue, 07/07/2026 - 17:50

                  Permalink

                  Dear Partnership for Quality Measurement:

                   

                  On behalf of the more than 5,000 members of the American Academy of Hospice and Palliative Medicine (AAHPM), we appreciate the opportunity to submit comments in response to the Partnership for Quality Measurement (PQM) Spring 2026 Endorsement and Maintenance (E&M) cycle. AAHPM is the professional organization for physicians specializing in Hospice and Palliative Medicine (HPM). Our membership also includes nurses, social workers, spiritual care providers, pharmacists, and other health professionals deeply committed to improving quality of life for the expanding population of patients facing serious illness as well as their families and caregivers. Together, we strive to advance the field and ensure that patients across all communities and geographies have access to high-quality palliative and hospice care.

                   

                  We appreciate PQM’s review of several measures focused on hospice and end-of-life care for patients with cancer. These measures address a meaningful gap in quality measurement and support patient-centered care at the end of life. We offer the following comments on the individual measures.

                   

                  Percentage of Patients who Died with Cancer Receiving Systemic Cancer-Directed Therapy in the Last 14 / 30 Days of Life (Registry version (CBE ID 0210) / Claims version (CBE ID 5594)) 

                  AAHPM supports this measure and its goals of encouraging more timely enrollment in palliative care that prioritizes symptom management, rather than low utility and aggressive treatments among people dying of cancer. However, we support modifying this measure to focus on the last 30 days of life. We believe a 30-day measure can be an effective lever for prompting timely transition to appropriate palliative care, supporting better symptom management and a more positive end -of-life experience.

                   

                  Conclusion

                  AAHPM appreciates the opportunity to provide comment on these measures and supports adoption of measures that continue to support high-value, patient-centered end-of-life care. Please direct questions or requests for additional information to Katherine Ast, AAHPM Director of Quality and Research, at [email protected]

                  Organization
                  American Academy of Hospice and Palliative Medicine (AAHPM)

                  Importance

                  Importance Rating
                  Importance

                  Strengths:

                  • A clear logic model is provided, depicting the relationships between inputs (e.g., specialized staff, clinician training, and guidelines), activities (e.g., prognostic disclosure, early palliative integration, shared decision-making), and desired outcomes (e.g., fewer emergency department [ED] visits, hospitalizations, and intensive care unit [ICU] visits). This model demonstrates how the measure’s implementation will lead to the anticipated outcomes.
                  • The problem this measure addresses presents a significant burden for patients, as cancer is the second leading cause of death overall and the leading cause of death among people younger than 85 years old in the United States. There are projected to be approximately 2.1 million new cancer diagnoses and over half a million cancer deaths in 2026.
                  • The measure is supported by a comprehensive literature review, including systematic reviews with high evidence quality and clinical practice guidelines with evidence grading of strong/high and high quality empirical studies, including National Comprehensive Cancer Network (NCCN) guidelines and a retrospective cohort study, demonstrating a clear net benefit in terms of improved outcomes and reduced cost/resource use among people dying with cancer.
                  • At the individual clinician performance level (158 entities), data from the US Oncology Network (USON)/McKesson databases from January 2023-December 2024 show a performance gap for the Percentage of Patients who Died with Cancer Receiving Systematic Cancer Directed Therapy in the Last 14 Days of Life and the Last 30 days of Life measure, with decile ranges from 0% to 40% with a median of 7.5% and 0% to 60% with a median of 24.4%, respectively, indicating variation in measure performance.
                  • Description of patient input supports the conclusion that the measured intermediate outcome is meaningful with at least moderate certainty. The American Society of Clinical Oncology's (ASCO) end-of-life measures were originally developed using patient-centered methodology (e.g., focus groups consisting of patients with incurable cancer and family members of deceased patients) to capture outcomes meaningful to those with advanced illness. Patient and caregiver input has continued to be obtained through expert panel participation and public comment. 

                  Limitations:

                  • At the clinician practice level (10 entities), data from the USON/McKesson databases from January 2023-December 2024 show limited variation in performance for the Percentage of Patients who Died with Cancer Receiving Systematic Cancer Directed Therapy in the Last 14 Days of Life and the Last 30 days of Life measure, with decile ranges from 6% to 12% and 20% to 32%, respectively, suggesting a small performance gap. The measure  submission could be strengthened by expanding performance gap testing to a larger population or exploring additional literature sources that demonstrate a gap in care at the clinician: practice level.
                  • The use of 10 group practices only does raise a question about how widely this measure is used in the MIPS program.
                  • Although the developer indicated they had gathered patient input through a family caregiver and a patient representative across two engagements (technical expert panel and public comment), direct engagement with and feedback from patients themselves is limited.

                  Rationale:

                  • This maintenance measure meets all criteria for ‘Met’ for importance due to the significance of the problem it addresses, its robust evidence base, a documented performance gap at the clinician: individual level, and well-articulated logic model, making it essential for encouraging timely enrollment in palliative care among people dying from cancer. 

                  Closing Care Gaps

                  Closing Care Gap Rating
                  Closing Care Gaps

                  Strengths:

                  • The developer provided evidence of gaps in care related to the measure focus for subgroups, including systematic study, meta-analysis, retrospective cohort study, and literature review, but they did not clearly articulate how the measure will close gaps in care

                  Limitations:

                  • Although the developer refers and reports results from  studies that have analyzed gaps in care, they did not provide any description of their own measure testing for evaluating gaps in care for subgroups.
                  • The developer did not provide recommended actions entities can take to close care gaps.

                  Rationale:

                  • While the developer attempted to assess gaps in care across subgroups, statistical methods and results for their analyses were not reported. 

                  Feasibility Assessment

                  Feasibility Assessment Rating
                  Feasibility Assessment

                  Strengths:

                  • The developer described how all required data elements can be collected without risk to patient confidentiality, including strict accordance with Health Insurance Portability and Accountability Act (HIPAA) Privacy and Security Rules, de-identified Electronic Health Record (EHR) data, and a minimum threshold of five patients for performance reporting.
                  • Licensing, or other requirements to use any aspect of the measure (e.g., value/code set, risk model, programming code, algorithm) are clearly described and justified. Non-profit entities are not charged a fee. 

                  Limitations:

                  • The fee for entities that are not non-profits is not stated. There is an outstanding question if the fee structure places the measure out of reach for rural and safety net clinicians and group practices.
                  • The developer states that, the measure relies entirely on clinical data extracted from EHRs with no direct patient interaction or survey-based data collection. It seems that this is the case for the measure implemented within the McKesson Oncology Network Registry. It is unclear if these findings are the same with entities reporting the measure that are not reporting in the McKesson Oncology Network Registry. The fact that the measure can be reported using EHR data raised the question why the measure is not specified as a digital measure (eCQM, Fast Health Interoperability Resources (FHIR) digital quality measure), which may reduce reporting burden.
                  • The measure specification is embedded in the measure submission, which makes review challenging. In addition, there is not a corresponding file with codes used in the measure specification, for ease of review. The developer may consider including the complete specification as an attachment, to ease review by endorsement and maintenance committee members. 

                  Rationale:

                  • The maintenance measure is rated as ‘Not Met, but Addressable’ for feasibility due to lack of clarity in the following areas: 1) Cost for use by clinicians and group practices that are NOT non-profits and if this is manageable for rural and safety net systems; and 2) Question regarding the electronic implementation by entities not reporting to the McKesson registry. 

                  Scientific Acceptability

                  Scientific Acceptability Reliability Rating
                  Scientific Acceptability Reliability

                  Strengths:

                  • The developer performed the required reliability testing for this maintenance measure, namely, they conducted accountable entity-level (“measure score”) reliability testing at the level(s) for which the measure is specified. Data sources used for reliability analysis are adequately described and include EHR data sourced from the US Oncology Network (USON)/McKesson databases consisting of a national representation of 13,812 patients across 10 practices and 8,939 patients across 147 clinicians during the period of 2023 and 2024.
                  • The developer conducted signal-to-noise reliability testing at the practice level, both for patients in the last 14 days of life and the last 30 days of life. For patients in both the last 14 days of life and the last 30 days of life, more than 70% of accountable entities meet the expected threshold of 0.6 and 100% of entities meet the expected threshold of 0.4 for signal-to-noise testing. 
                     

                  Limitations:

                  • The developer conducted signal-to-noise reliability testing at the at the clinician level, both for patients in the last 14 days of life and the last 30 days of life. For patients in both the last 14 days of life and the last 30 days of life, fewer than 30% of accountable entities meet the expected threshold of 0.6 and at least 30% of entities are below the expected threshold of 0.4 for signal-to-noise testing. The developer mentions that this "warrants caution" at the clinician level but offers no other justification for the low reliability.
                  • Data used for reliability testing were sourced from a two-year period of performance. If this measure is intended to be calculated over shorter periods of performance, the accountable-entity level reliability will be lower. For a one-year period of performance, at least 70% of the clinicians are still likely to have a reliability greater than 0.6 for patients in the last 30 days of life. However, for patients in the last 14 days of life, it is likely that fewer than 30% of the clinicians will have a reliability greater than 0.6. 

                  Rationale:

                  • This maintenance measure is rated as ‘Not Met’ for reliability because the reliability testing results significantly fall below the established thresholds at the clinician level indicating major issues with the consistency and accuracy of the results across different settings and populations. The developer may consider recommending against the use of this measure at the clinician level. By addressing this issue, there is potential to enhance the reliability, provided the period of performance is intended to be at least two years.
                  Scientific Acceptability Validity Rating
                  Scientific Acceptability Validity

                  Strengths:

                  • The developer performed the required validity testing for this maintenance measure, namely, they conducted accountable entity-level (“measure score”) validity testing at the levels for which the measure is specified (physician and practice). Data sources used for validity analysis were adequately described and include electronic health record (EHR) data from January 2023 through December 2024 for 158 physicians and 10 practices affiliated with USON.
                  • The developer conducted empirical validity testing at both accountable entity levels using Pearson correlation to compare the measure score with the percentage of patients who died with cancer enrolled in hospice for at least 3 days immediately before death (CBE ID 0216). The developer hypothesized negative relationships between the therapy measure and the hospice measure, reasoning that these measures reflect opposing clinical priorites near end of life. Pearson correlation coefficients confirmed the expected direction and significance of associations of both strata of the therapy measure (14 days and 30 days) and the hospice measure at both the physician level (therapy at 14 days: r = -0.2478, p = 0.0017; therapy at 30 days: r = -0.1950, p = 0.0141; n=158) and practice level (therapy at 14 days: r = -0.6446, p = 0.0442; therapy at 30 days: -0.8045, p = 0.0050; n=10). While the developer did not state this, it my be reasonable to expect the stronger negative relationship between the therapy in the last 14 days of life and the hospice measure vs. between the therapy in the last 30 days of life and the hospice measure, as was observed at the physician level, due to the tighter time frame within which to potentially make a shift in clinical direction from agressive treatment to hospice. The developer also reported the expected strongly positive correlation between 14-day and 30-day therapy at the physician and practice levels (respectively: r=0.6669, p<0.0001, n=158; r=0.7998, p=0.0055, n=10).
                  • A well-grounded, thorough logic model support an inference of validity for the measure.

                  Limitations:

                  • Given the small sample of facilities and providers, there may be gaps in the overall representativeness of  accountable entities. As noted by the developer, the small sample size of the practice-level correlation analysis may result in less precise estimates than at the physician-level.
                  • While the direction of the relationship between the hospice measure and both therapy measures aligns with their hypothesis at both levels of analysis, the developer could provide additional interpretation for the stronger relationships at the practice-level compared with the physician-level. Another limitation of the testing presented is that the developer did not report testing relationships of the therapy measure with one or more independent measures, which could help establish discriminant validity or provide more robust evidence of a shared quality mechanism.
                  • The developer did not conduct risk adjustment or stratification, but provided the rationale that quality palliative care is a universal standard that should not vary based on patient complexity and that adjustment could normalize departures from palliative care best practices. The developer did not provide supporting literature, a conceptual model, or empirical analysis demonstrating that differences in patient characteristics do not affect measure results or inhibit fair comparisons.

                  Rationale:

                  • This maintenance measure is rated as ‘Not Met But Addressable’ for validity; measure score testing results partially support an inference of validity, suggesting that the measure somewhat accurately reflects performance on quality and can distinguish good from poor performance to a limited extent.
                  • The developer did not conduct risk adjustment or stratification and provided a rationale for the decision, but did not support the rationale with supporting literature or empirical analysis.

                  Use and Usability

                  Use and Usability Rating
                  Use and Usability

                  Strengths:

                  • The version of the measure without recent material specifications is currently used in the MIPS reporting program, and developers are in consultation with CMS regarding inclusion in programs such as Prospective Payment System (PPS)-Exempt Cancer Hospital Quality Reporting (PCHQR) Program and Inpatient Quality Reporting (IQR) Program in addition to MIPS. This updated version of the measure will be used in MIPS beginning Payment Year (PY) 2027. Attributes of a suitable program for the measure are described, and these include adult patients (aged 18 and older) with a confirmed diagnosis of cancer, accountability at the group practice level.
                  • The developer provided a summary of how accountable entities can use the measure results to improve performance. Specifically, entities can provide guidance on disease trajectory, reassessing prognostic awareness, and discuss the continuation of treatment; stop all treatments not contributing to comfort, initiating intensive symptom management, and placing hospice referrals; early referrals; and Advanced Care Plan (ACP) documentation. The developer include information as to why the mechanisms to improve performance can be difficult and offered strategies to overcome difficulties within this section of the submission. 

                  Limitations:

                  • In 6.2.2 Feedback on Measure Performance, the developer indicates that ASCO has not received any feedback on measure performance or implementation. It is unclear if a there is a systematic feedback approach that is used to better understand if challenges exist within entities implementing the measure or with their actionability toward improving performance on the measure. To strengthen the submission, the developer should clarify whether or not they have a systematic feedback approach.

                  Rationale:

                  • This maintenance measure is rated ‘Met' for use and usabiltiy because it is actively used in one accountability application. The developer indicated they have not received any feedback on this measure. The measure demonstrates modest improvements in performance results and the developer noted performance trends are expected to continue to improve, affirming its ongoing usability. 
                  First Name
                  Karie
                  Last Name
                  Fugate

                  Submitted by Karie Fugate on Wed, 07/08/2026 - 14:44

                  Permalink

                  Importance

                  Importance Rating
                  Importance

                  I agree with the staff assessment

                  Closing Care Gaps

                  Closing Care Gaps Rating
                  Closing Care Gaps

                  I agree with the staff assessment that while the developer attempted to assess gaps in care across subgroups, statistical methods and results for their analyses were not reported. 

                  Feasibility Assessment

                  Feasibility Assessment Rating
                  Feasibility Assessment

                  The staff assessment brought up some good questions: 1) Cost for use by clinicians and group practices that are NOT non-profits and if this is manageable for rural and safety net systems; and 2) Question regarding the electronic implementation by entities not reporting to the McKesson registry.

                  Scientific Acceptability

                  Scientific Acceptability Reliability Rating
                  Scientific Acceptability Reliability

                  As a Patient Partner, I am not a subject matter expert in this area and will rely on the staff assessment.

                  Scientific Acceptability Validity Rating
                  Scientific Acceptability Validity

                  As a Patient Partner, I am not a subject matter expert in this area and will rely on the staff assessment.

                  Use and Usability

                  Use and Usability Rating
                  Use and Usability

                  I agree with the staff assessment that this measure is actively used in one accountability application.

                  Summary

                  As a patient partner, I was hoping the developer provided additional data on why patients chose aggressive care at the end of their lives. Could it be the age of the patient (younger versus older), geographic location, beliefs, religion, hoping for a miracle?  Should these decisions be excluded from the measure?

                  First Name
                  Emily
                  Last Name
                  Martin

                  Submitted by Emily Martin on Fri, 07/10/2026 - 00:44

                  Permalink

                  Importance

                  Importance Rating
                  Importance

                  This measure brings attention to systemic cancer treatments that may be non-beneficial for a patient so close to end of life. I rank it high in importance. 

                  Closing Care Gaps

                  Closing Care Gaps Rating
                  Closing Care Gaps

                  There is a gap in quality of care when patients are receiving systemic therapy in their final days of life. This suggests a need for more discussions about the expected benefits (and risks, alternatives) or treatment in a dying patient.  

                  Feasibility Assessment

                  Feasibility Assessment Rating

                  Scientific Acceptability

                  Scientific Acceptability Reliability Rating
                  Scientific Acceptability Validity Rating

                  Use and Usability

                  Use and Usability Rating
                  Advisory Committee Comments
                  Advisory Group Feedback

                  A patient partner expressed concerns about the framing and terminology used in the measure description, particularly the implied separation between treatment and comfort-focused care. The patient partner noted that the phrasing suggests a transition point where “treatment” stops and “comfort care” begins, whereas their experience indicates these should occur concurrently. 

                  Additionally, the patient partner questioned the use of the term “aggressive,” noting it lacks precision and is not standardized in the literature, and recommended clearer definitions, including for “advanced cancer.” Another patient partner suggested substituting “aggressive” with “intensive,” describing it as less alarming while conveying a similar meaning.

                  In Meeting Developer Responses

                  The measure addresses the continued use of systemic therapy beyond the point of benefit, which is associated with worse outcomes.

                  Clarifying “aggressive” and “advanced cancer” are sound suggestions, particularly as “aggressive” is vague, may be interpreted inconsistently, and may also apply in a palliative care context.

                  Advisory Group Feedback

                  Several Advisory Group members raised questions about whether the measure should incorporate risk adjustment or stratification, including by demographic characteristics (e.g., age), geography (e.g., rural vs. urban), health status, and historically underserved populations. A patient partner expressed concern that some populations may be more likely to pursue intensive therapies due to prior experiences with the health care system.

                  Another committee member questioned whether risk adjustment is conceptually appropriate for a measure intended to apply uniformly across populations.

                  Advisory Group members questioned whether the measure should account for differences across age groups, noting that younger patients may be more likely to receive continued therapy. A member suggested stratifying results by age.

                  In Meeting Developer Responses

                  In prior analyses using large datasets, black patients or those with government insurance were less likely to receive systemic therapy at the end of life compared to patients who had commercial insurance or were white patients. 

                  Risk adjustment is important when evaluating downstream outcomes, such as hospitalization and intensive care unit (ICU) use, because confounding factors may influence results. However, for this measure, which focuses on the use of systemic therapy near the end of life, the intent is to apply a consistent standard across populations. 

                  Younger patients are more likely to receive systemic therapy near the end of life, possibly reflecting differences in preferences. However, the developer does not recommend stratifying the measure by age group, because the underlying principle, that such treatment is generally not appropriate near the end of life, applies across age groups.

                  Advisory Group Feedback

                  A few Advisory Group members raised concerns about whether the measure captures patient preferences and goal-concordant care. One committee member noted that patient preferences may influence decisions to continue therapy, particularly among younger patients. Another highlighted that better prognostic awareness is associated with less intensive care, suggesting that preferences may shift with improved understanding.

                  In Meeting Developer Responses

                  Capturing individual patient preferences is not feasible within this measure due to reliance on claims and structured registry data and is a known limitation. Assessing preferences would require more complex methods, such as natural language processing or review of documented goals-of-care conversations, which were outside the scope of this measure. 

                  Advisory Group Feedback

                  An Advisory Group member questioned whether the denominator is stable over time given rapid changes in cancer treatment. The member specifically asked whether “systemic cancer-directed therapy” can be consistently identified across years and whether there is a common definition that can be operationalized through claims or registry data. 

                  In Meeting Developer Responses

                  The measure was specifically updated to account for changes in cancer treatment. While treatment patterns have shifted from traditional cytotoxic chemotherapy toward targeted therapies, overall rates of systemic anti-cancer therapy have remained stable. The measure uses a pharmacy-based grouper that captures both traditional chemotherapy and targeted therapies, allowing the measure to remain current as treatment options evolve.

                  Advisory Group Feedback

                  An Advisory Group member raised concerns about “look-back” methodology, noting that the measure may misclassify clinicians who provided appropriate care to patients with poor outcomes. The member questioned whether risk adjustment could mitigate this issue.

                  In Meeting Developer Responses

                  In analyses comparing practices with high versus low use of systemic therapy at the end of life, the developer found no survival benefit in higher-use practices across six common solid tumors. This suggests that the concern is theoretically valid but does not materially affect outcomes at the population level. Very few patients benefit from therapy at that stage.

                  Advisory Group Feedback

                  N/A

                  In Meeting Developer Responses

                  The Battelle facilitator noted feasibility considerations highlighted in the staff assessment, including cost for nonprofit versus for-profit entities and whether the measure can be implemented outside a specific registry.
                  The measure is for quality improvement, and clinicians and institutions using it in that capacity, including for-profit entities, do not pay licensing fees. Only commercial payers using the measure in payment models pay the fees. 
                  The measure is already used broadly outside the registry, including within the Merit-based Incentive Payment System (MIPS).

                  Advisory Group Feedback

                  Echoing the discussion from #0216 (another ASCO end-of-life cancer measure), a patient partner noted that although the measure development process included a technical expert panel (TEP), the submission materials did not demonstrate direct engagement with patients experiencing hospice care or their caregivers. The patient partner suggested that future measure development efforts incorporate more direct patient or caregiver feedback to inform the measure.

                  In Meeting Developer Responses

                  The developer collected patient and caregiver perspectives through multiple public comment periods, targeted outreach to patient advocacy groups, and a caregiver representative on the TEP.