Federated Learning in Medical Image Analysis: A Systematic Survey
-
Published:2023-12-21
Issue:1
Volume:13
Page:47
-
ISSN:2079-9292
-
Container-title:Electronics
-
language:en
-
Short-container-title:Electronics
Author:
da Silva Fabiana Rodrigues1, Camacho Rui2ORCID, Tavares João Manuel R. S.3ORCID
Affiliation:
1. Faculdade de Engenharia, Universidade do Porto, R. Dr. Roberto Frias, 4200-465 Porto, Portugal 2. Departamento de Engenharia Informática, Faculdade de Engenharia, Universidade do Porto, R. Dr. Roberto Frias, 4200-465 Porto, Portugal 3. Instituto de Ciência e Inovação em Engenharia Mecânica e Engenharia Industrial, Departamento de Engenharia Mecânica, Faculdade de Engenharia, Universidade do Porto, R. Dr. Roberto Frias, 4200-465 Porto, Portugal
Abstract
Medical image analysis is crucial for the efficient diagnosis of many diseases. Typically, hospitals maintain vast repositories of images, which can be leveraged for various purposes, including research. However, access to such image collections is largely restricted to safeguard the privacy of the individuals whose images are being stored, as data protection concerns come into play. Recently, the development of solutions for Automated Medical Image Analysis has gained significant attention, with Deep Learning being one solution that has achieved remarkable results in this area. One promising approach for medical image analysis is Federated Learning (FL), which enables the use of a set of physically distributed data repositories, usually known as nodes, satisfying the restriction that the data do not leave the repository. Under these conditions, FL can build high-quality, accurate deep-learning models using a lot of available data wherever it is. Therefore, FL can help researchers and clinicians diagnose diseases and support medical decisions more efficiently and robustly. This article provides a systematic survey of FL in medical image analysis, specifically based on Magnetic Resonance Imaging, Computed Tomography, X-radiography, and histology images. Hence, it discusses applications, contributions, limitations, and challenges and is, therefore, suitable for those who want to understand how FL can contribute to the medical imaging domain.
Subject
Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering
Reference33 articles.
1. Federated learning: A collaborative effort to achieve better medical imaging models for individual sites with small labelled datasets;Ng;Quant. Imaging Med. Surg.,2021 2. Federated learning for medical imaging: An updated state of the art;Mouhni;Ing. Syst. D’Inf.,2022 3. Gomathisankaran, M., Yuan, X., and Kamongi, P. (2013, January 13–15). Ensure privacy and security in the process of medical image analysis. Proceedings of the 2013 IEEE International Conference on Granular Computing (GrC), Beijing, China. 4. Li, W., Milletarì, F., Xu, D., Rieke, N., Hancox, J., Zhu, W., Baust, M., Cheng, Y., Ourselin, S., and Cardoso, M.J. (2019, January 13). Privacy-preserving federated brain tumour segmentation. Proceedings of the Machine Learning in Medical Imaging: 10th International Workshop, MLMI 2019, Held in Conjunction with MICCAI 2019, Shenzhen, China. 5. Gkoulalas-Divanis, A., and Loukides, G. (2015). Medical Data Privacy Handbook, Springer.
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|