PO.PS01.09 · 人群科学

Personalized risk assessment of breast cancer using administrative health data

海报缩略图:Personalized risk assessment of breast cancer using administrative health data
编号 7593 展板 13 时间 4/22 09:00–12:00 区域 Section 35 主讲 Fidela Mushashi, MS
分会场 Risk Prediction Modeling, Screening, Early Detection, and Preneoplastic and Tumor Markers
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作者与单位

Fidela Mushashi1, Shi-ang Qi2, Parveen Bhatti3, Andrew Roth1, Russell Greiner2, Rachel A. Murphy4

1University of British Columbia, Vancouver, BC, Canada,2University of Alberta, Edmonton, AB, Canada,3British Columbia Institute of Cancer Research, Vancouver, BC, Canada,4School of Population and Public Health, University of British Columbia, Vancouver, BC, Canada

摘要 Abstract

Breast cancer screening programs are one-size-fits-most approaches with suboptimal participation rates. Population-level administrative health databases provide a unique opportunity to build scalable, data-driven risk assessment tools capable of identifying women who may benefit from more personalized screening strategies. We assembled nearly two decades of longitudinal health data, including mammographic screening history, medication use, physician visits, and hospital discharge abstracts, for 1.74 million women in British Columbia, among whom 39,211 incident breast cancers were diagnosed. Our team is developing new breast cancer risk assessment models to predict each woman's individual time until Breast Cancer Onset (BCo) using administrative health data from Canada's publicly funded healthcare system. We are applying machine learning Individual Survival Distribution (ISD) models, which identify each subject x with a distribution S (t | x), showing the probability that x's time until BCo is at least t more years, for all t > 0. We can then use these models to estimate each woman's expected time until BCo, as well as her risk score. In preliminary models using 25 features with known/suspected links to breast cancer, random survival forest (RSF) achieved the highest concordance index (CI = 58.9%), while multitask logistic regression (MTLR) achieved a competitive 5-year Brier score (BS = 0.0068) and a low mean absolute error (MAE = 30.4 months). These early results demonstrate the feasibility of leveraging administrative health data for personalized breast cancer risk prediction. Ongoing work will substantially expand the feature sets to improve model discrimination.
利益披露 Disclosure
F. Mushashi, None.. S. Qi, None.. P. Bhatti, None.. A. Roth, None.. R. Greiner, None.. R. A. Murphy, None.

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