FL-MedSegBench: A Comprehensive Benchmark for Federated Learning on Medical Image Segmentation
arXiv cs.CV / 3/13/2026
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Key Points
- FL-MedSegBench is announced as the first comprehensive benchmark for federated learning on medical image segmentation, covering nine tasks across ten imaging modalities in 2D and 3D with realistic clinical heterogeneity.
- It systematically benchmarks eight generic FL methods and five personalized FL methods across metrics including segmentation accuracy, fairness, communication efficiency, convergence, and generalization to unseen domains.
- Key findings show that personalization methods with client-specific batch normalization (e.g., FedBN) tend to outperform generic approaches, results are dataset-dependent, and normalization-based personalization is robust to lower communication frequency; Ditto and FedRDN help protect underperforming clients.
- The authors plan to release an open-source toolkit and guidelines for real-world deployment, with source code available at https://github.com/meiluzhu/FL-MedSegBench.
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