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

arXiv

Mengying Yan, Ziye Tian, Siqi Li, Nan Liu, Benjamin A. Goldstein, Molei Liu, Chuan Hong

Mixed data pattern caused by temporal shift due to COVID-19 pandemic. We only know when the pandemic (transition) starts, but don’t know the transition status of each encounter.

Summary

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.

Citation

Yan, Mengying, et al. “TRACER: Transfer Learning based Real-time Adaptation for Clinical Evolving Risk.” arXiv preprint arXiv:2512.12795 (2025).

BibTex

@article{yan2025tracer, title={TRACER: Transfer Learning based Real-time Adaptation for Clinical Evolving Risk}, author={Yan, Mengying and Tian, Ziye and Li, Siqi and Liu, Nan and Goldstein, Benjamin A and Liu, Molei and Hong, Chuan}, journal={arXiv preprint arXiv:2512.12795}, year={2025} }

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