Medical Federated Model with Mixture of Personalized and Sharing Components
Yawei Zhao, Qinghe Liu, Xinwang Liu, Kunlun He

TL;DR
This paper introduces a personalized federated learning framework for medical data that enhances model performance and communication efficiency while preserving privacy across heterogeneous datasets.
Contribution
It proposes a novel personalized federated learning model with similarity awareness, a differentially sparse regularizer, and computational improvements, outperforming existing methods.
Findings
Achieves the best performance on 5 real medical datasets.
Up to 60% improvement in communication efficiency.
Effectively balances personalization and generalization.
Abstract
Although data-driven methods usually have noticeable performance on disease diagnosis and treatment, they are suspected of leakage of privacy due to collecting data for model training. Recently, federated learning provides a secure and trustable alternative to collaboratively train model without any exchange of medical data among multiple institutes. Therefore, it has draw much attention due to its natural merit on privacy protection. However, when heterogenous medical data exists between different hospitals, federated learning usually has to face with degradation of performance. In the paper, we propose a new personalized framework of federated learning to handle the problem. It successfully yields personalized models based on awareness of similarity between local data, and achieves better tradeoff between generalization and personalization than existing methods. After that, we further…
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Taxonomy
TopicsAI in cancer detection · Privacy-Preserving Technologies in Data · Radiomics and Machine Learning in Medical Imaging
