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TRACER: Transfer Learning based Real-time Adaptation for Clinical Evolving Risk

Mengying Yan
Ziye Tian
Siqi Li
Nan Liu
Benjamin A. Goldstein
Molei Liu
Chuan Hong
Main:23 Pages
13 Figures
Bibliography:1 Pages
2 Tables
Appendix:13 Pages
Abstract

Clinical decision support tools built on electronic health records often experience performance drift due to temporal population shifts, particularly when changes in the clinical environment initially affect only a subset of patients, resulting in a transition to mixed populations. Such case-mix changes commonly arise following system-level operational updates or the emergence of new diseases, such as COVID-19. We propose TRACER (Transfer Learning-based Real-time Adaptation for Clinical Evolving Risk), a framework that identifies encounter-level transition membership and adapts predictive models using transfer learning without full retraining. In simulation studies, TRACER outperformed static models trained on historical or contemporary data. In a real-world application predicting hospital admission following emergency department visits across the COVID-19 transition, TRACER improved both discrimination and calibration. TRACER provides a scalable approach for maintaining robust predictive performance under evolving and heterogeneous clinical conditions.

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