Structured Transfer Learning for Survival Risk Stratification in Data-Sparse Clinical Cohorts
Junhan Yu, Yurui Chen, Juan Delgado-SanMartin, Dennis Wang, Hong Pan, Doudou Zhou

TL;DR
This paper introduces CORE-Cox, a transfer learning framework that enhances survival risk prediction in small clinical cohorts by leveraging shared patterns from larger datasets and adapting them to specific populations.
Contribution
The study presents a novel two-stage transfer learning model, CORE-Cox, that improves survival risk stratification in data-sparse cohorts by combining shared outcome structures with cohort-specific adjustments.
Findings
CORE-Cox outperformed other models in discrimination metrics.
C-index improved significantly in both datasets.
Enhanced risk enrichment in top risk groups.
Abstract
Background: Survival prediction models are often less reliable in clinical groups with limited sample sizes or few outcome events. Target-only models may be unstable, whereas models from larger cohorts may transfer poorly when risk-factor effects differ across populations. We evaluated whether structured transfer learning can improve survival risk stratification in data-sparse cohorts while allowing cohort-specific adaptation. Methods: We developed the COhort-shared Rank-rEduced Cox model (CORE-Cox), a two-stage framework for multi-outcome survival prediction. CORE-Cox learns shared risk-factor patterns across related outcomes in a larger source cohort via a low-rank Cox coefficient structure, then adapts these patterns to a smaller target cohort through regularized residual correction. We evaluated CORE-Cox in UK Biobank (White source, n=150,093; Asian target, n=2,534) and MIMIC-IV…
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