When To Adapt? Adapting the Model or Data in Federated Medical Imaging
arXiv cs.CV / 5/5/2026
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Key Points
- The paper studies how to adapt federated learning in medical imaging when clients face domain heterogeneity, comparing two approaches: model-side personalization and data-side harmonization.
- It runs comprehensive experiments across six imaging tasks (segmentation and classification) spanning multiple domain-shift types, using a unified evaluation framework for state-of-the-art methods.
- The authors find a conditional trade-off: input/appearance-focused harmonization works better for appearance-based variation, while model personalization is more effective for structurally different variations.
- When client differences are small, both strategies achieve similar performance, indicating that adaptation effectiveness depends on the domain-shift type and magnitude rather than the chosen strategy alone.
- The work provides practical guidelines for selecting harmonization vs. personalization and points to future hybrid methods combining both paradigms, with accompanying code released on GitHub.
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