The Cox Proportional Hazards model is a widely used method for survival analysis in medical research. However, training an accurate model requires access to a sufficiently large dataset, which is often challenging due to data fragmentation. A potential solution is to combine data from multiple medical institutions, but privacy constraints typically prevent direct data sharing. Federated learning offers a privacy-preserving alternative by allowing multiple parties to collaboratively train a model without exchanging raw data. In this work, we develop algorithms for training Cox models in a federated setting, leveraging survival stacking to facilitate distributed learning. In addition, we introduce a novel secure computation of Schoenfeld residuals, a key diagnostic tool for validating the Cox model. We provide an open-source implementation of our approach and present empirical results that demonstrate the accuracy and benefits of federated Cox regression.
Horizontal federated learning and assessment of Cox models.
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作者:Westers Frank, Leder Sam, Tealdi Lucia
| 期刊: | Frontiers in Digital Health | 影响因子: | 3.800 |
| 时间: | 2025 | 起止号: | 2025 Jun 12; 7:1603630 |
| doi: | 10.3389/fdgth.2025.1603630 | ||
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