Anatomical 3D Style Transfer Enabling Efficient Federated Learning with Extremely Low Communication Costs
Yuto Shibata, Yasunori Kudo, Yohei Sugawara

TL;DR
This paper introduces a novel federated learning method using 3D style transfer and anatomical information to significantly reduce communication costs while maintaining high segmentation accuracy across diverse datasets.
Contribution
It proposes A3DFDG, a 3D style transfer approach that preserves anatomical features and reduces communication costs in federated learning for medical imaging.
Findings
Maintains accuracy with only 1.25% of original communication cost
Achieves a higher global dice score of 4.3% over baselines
Demonstrates practicality with minimal computational overhead
Abstract
In this study, we propose a novel federated learning (FL) approach that utilizes 3D style transfer for the multi-organ segmentation task. The multi-organ dataset, obtained by integrating multiple datasets, has high scalability and can improve generalization performance as the data volume increases. However, the heterogeneity of data owing to different clients with diverse imaging conditions and target organs can lead to severe overfitting of local models. To align models that overfit to different local datasets, existing methods require frequent communication with the central server, resulting in higher communication costs and risk of privacy leakage. To achieve an efficient and safe FL, we propose an Anatomical 3D Frequency Domain Generalization (A3DFDG) method for FL. A3DFDG utilizes structural information of human organs and clusters the 3D styles based on the location of organs. By…
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Taxonomy
TopicsFace recognition and analysis · AI in cancer detection · Generative Adversarial Networks and Image Synthesis
MethodsALIGN
