FedCLAM: Client Adaptive Momentum with Foreground Intensity Matching for Federated Medical Image Segmentation
Journal:
arXiv
Published Date:
Jun 27, 2025
Abstract
Federated learning is a decentralized training approach that keeps data under
stakeholder control while achieving superior performance over isolated
training. While inter-institutional feature discrepancies pose a challenge in
all federated settings, medical imaging is particularly affected due to diverse
imaging devices and population variances, which can diminish the global model's
effectiveness. Existing aggregation methods generally fail to adapt across
varied circumstances. To address this, we propose FedCLAM, which integrates
\textit{client-adaptive momentum} terms derived from each client's loss
reduction during local training, as well as a \textit{personalized dampening
factor} to curb overfitting. We further introduce a novel \textit{intensity
alignment} loss that matches predicted and ground-truth foreground
distributions to handle heterogeneous image intensity profiles across
institutions and devices. Extensive evaluations on two datasets show that
FedCLAM surpasses eight cutting-edge methods in medical segmentation tasks,
underscoring its efficacy. The code is available at
https://github.com/siomvas/FedCLAM.