LGAICRDCNov 15, 2022

Federated Learning for Healthcare Domain - Pipeline, Applications and Challenges

arXiv:2211.07893v2168 citationsh-index: 10
AI Analysis

It provides a comprehensive overview for healthcare professionals and researchers, but is incremental as it synthesizes existing studies without introducing new methods.

This survey examines federated learning in healthcare, outlining its pipeline, applications, and challenges to guide practitioners in developing models across distributed datasets like hospitals and mobile devices without data leakage.

Federated learning is the process of developing machine learning models over datasets distributed across data centers such as hospitals, clinical research labs, and mobile devices while preventing data leakage. This survey examines previous research and studies on federated learning in the healthcare sector across a range of use cases and applications. Our survey shows what challenges, methods, and applications a practitioner should be aware of in the topic of federated learning. This paper aims to lay out existing research and list the possibilities of federated learning for healthcare industries.

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