Federated Learning for Medical Imaging with Adaptive Client Sampling

research-article
Received: Sep 10, 2025
Published: Oct 1, 2025
Authors: Clark Mitchell ✉ Mei Lin

Abstract

We present an adaptive client sampling strategy for federated training of medical image classifiers across 42 hospitals. The approach reduces straggler impact and achieves +2.8% AUROC over uniform sampling on chest X-ray anomaly detection.

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Cite this article

Mitchell, C. & Lin, M. (2025). Federated Learning for Medical Imaging with Adaptive Client Sampling. Research Explorations in Global Knowledge & Technology (REGKT), 3 (7). Retrieved from https://regkt.com/article.php?id=131&slug=federated-learning-medical-imaging-adaptive-client-sampling

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