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Federated Causal Inference in Healthcare: Methods, Challenges, and Applications

Main:42 Pages
3 Figures
4 Tables
Abstract

Federated causal inference enables multi-site treatment effect estimation without sharing individual-level data, offering a privacy-preserving solution for real-world evidence generation. However, data heterogeneity across sites, manifested in differences in covariate, treatment, and outcome, poses significant challenges for unbiased and efficient estimation. In this paper, we present a comprehensive review and theoretical analysis of federated causal effect estimation across both binary/continuous and time-to-event outcomes. We classify existing methods into weight-based strategies and optimization-based frameworks and further discuss extensions including personalized models, peer-to-peer communication, and model decomposition. For time-to-event outcomes, we examine federated Cox and Aalen-Johansen models, deriving asymptotic bias and variance under heterogeneity. Our analysis reveals that FedProx-style regularization achieves near-optimal bias-variance trade-offs compared to naive averaging and meta-analysis. We review related software tools and conclude by outlining opportunities, challenges, and future directions for scalable, fair, and trustworthy federated causal inference in distributed healthcare systems.

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@article{li2025_2505.02238,
  title={ Federated Causal Inference in Healthcare: Methods, Challenges, and Applications },
  author={ Haoyang Li and Jie Xu and Kyra Gan and Fei Wang and Chengxi Zang },
  journal={arXiv preprint arXiv:2505.02238},
  year={ 2025 }
}
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