Investigator

Sharon H. Giordano

Banner Md Anderson Cancer Center

About

SHGSharon H. Giordano
Papers(3)
Association Between S…Trends in Medicare pa…Algorithm to Identify…
Institutions(1)
Banner Md Anderson Ca…

Papers

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

PURPOSE Use of cytotoxic chemotherapy at end-of-life (EOL) is associated with adverse quality of life, increased health care utilization, and lower hospice rates. Although EOL cytotoxic chemotherapy use has declined in recent years, EOL novel (immunotherapy and targeted therapy) use has increased. The association between use of novel therapies at EOL and health care utilization has not been widely studied. METHODS We identified patients within SEER-Medicare who had part D coverage (excluding those with Medicare Advantage) age 66 years and older, and breast, colorectal, lung, prostate, bladder, cervical, kidney, liver, ovarian, pancreatic, melanoma, or uterine cancer. Patients were diagnosed between 2005 and 2019 and died between 2015 and 2020. We analyzed associations between EOL systemic anticancer therapy (SACT) use (overall and by subtype), and health care utilization in the last 30 days of life (emergency department [ED], hospitalization, intensive care unit [ICU], and inpatient death), and hospice with multivariable regression, controlling for sociodemographic and cancer covariates. RESULTS Of 315,089 beneficiaries, 23,970 (7.6%) received SACT within 30 days of death. The breakdown by type was cytotoxic therapy 50.6%, immunotherapy 20.8%, targeted therapy 18%, and combination therapies 10.6%. After adjusting for covariates, any SACT use at EOL was associated with higher ED use (odds ratio [OR], 3.05 [95% CI, 2.95 to 3.15]), hospital admissions (OR, 2.64 [95% CI, 2.56 to 2.72]), ICU admission (OR, 1.78 [95% CI, 1.72 to 1.83]), hospital death (OR, 2.02 [95% CI, 1.96 to 2.08]), and lower hospice use (OR, 0.51 [95% CI, 0.50 to 0.53]) compared with no SACT. All subtypes of SACT were individually associated with higher health care utilization and lower hospice use ( P < .001). CONCLUSION All subtypes of SACT use were associated with markers of worse-quality EOL care. These data can inform decisions for current care guidelines and efforts to reduce overutilization.

Algorithm to Identify Incident Epithelial Ovarian Cancer Cases Using Claims Data

PURPOSE To create an algorithm to identify incident epithelial ovarian cancer cases in claims-based data sets and evaluate performance of the algorithm using SEER-Medicare claims data. METHODS We created a five-step algorithm on the basis of clinical expertise to identify incident epithelial ovarian cancer cases using claims data for (1) ovarian cancer diagnosis, (2) receipt of platinum-based chemotherapy, (3) no claim for platinum-based chemotherapy but claim for tumor debulking surgery, (4) removed cases with nonplatinum chemotherapy, and (5) removed patients with prior claims with personal history of ovarian cancer code to exclude prevalent cases. We evaluated algorithm performance using SEER-Medicare claims data by creating four cohorts: incident epithelial ovarian cancer, a 5% random sample of cancer-free Medicare beneficiaries, a 5% random sample of incident nonovarian cancer, and prevalent ovarian cancer cases. RESULTS Using SEER tumor registry data as the gold standard, our algorithm correctly classified 89.9% of incident epithelial ovarian cancer cases (cohort n = 572) and almost 100% of cancer-free controls (n = 97,127), nonovarian cancer (n = 714), and prevalent ovarian cancer cases (n = 3,712). The overall algorithm sensitivity was 89.9%, the positive predictive value was 93.8%, and the specificity and negative predictive value were > 99.9%. Patients were more likely to be correctly classified as incident ovarian cancer if they had stage III or IV disease compared with early stage I or II disease (93.5% v 83.7%, P < .01), and grade 1-4 compared with unknown grade tumors (93.8% v 81.4%, P < .01). CONCLUSION Our algorithm correctly identified most incident epithelial ovarian cancer cases, especially those with advanced disease. This algorithm will facilitate research in other claims-based data sets where cancer registry data are unavailable.

3Papers
Breast NeoplasmsNeoplasm StagingNeoplasmsColorectal NeoplasmsLung NeoplasmsProstatic NeoplasmsUterine Cervical Neoplasms

Education

1996

MD

Johns Hopkins Medicine

2004

MPH

University of Texas School of Public Health

1991

BS

Yale University

Country

US

Keywords
Medical OncologyHealth Services ResearchBreast CancerHealth Care DeliveryCancer OutcomesDisparities