Federated learning for medical imaging radiology
- ,
- Walter Hugo Lopez Pinaya,
- Parashkev Nachev,
- James T. Teo,
- Sebastin Ourselin,
- M. Jorge Cardoso
- ,
- Kings College London,
- University College London
Research Output: Contribution to journal Article Peer-review
Open access
Abstract
Federated learning (FL) is gaining wide acceptance across the medical AI domains. FL promises to provide a fairly acceptable clinical-grade accuracy, privacy, and generalisability of machine learning models across multiple institutions. However, the research on FL for medical imaging AI is still in its early stages. This paper presents a review of recent research to outline the difference between state-of-the-art [SOTA] (published literature) and state-of-the-practice [SOTP] (applied research in realistic clinical environments). Furthermore, the review outlines the future research directions considering various factors such as data, learning models, system design, governance, and human-in-loop to translate the SOTA into SOTP and effectively collaborate across multiple institutions.
Publication Information
Output type
Research Output: Contribution to journal Article Peer-review
Original language
EnglishArticle number
20220890Pages from-to (Number of pages)
Pages 20220890Journal (Volume, Issue Number)
British Journal of Radiology (Volume 96, Issue 1150)Publication milestones
- Published - 25/09/2023
Publication status
Published - 25/09/2023
ISSN
0007-1285External Publication IDs
- ORCID: /0000-0001-7428-2272/work/142957408
- Scopus: 85174192391
- PubMed: 38011227
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