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A review of privacy enhancement methods for federated learning in healthcare systems.pdf (376.15 kB)

A review of privacy enhancement methods for federated learning in healthcare systems

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journal contribution
posted on 2024-04-03, 02:15 authored by Xin Gu, Fariza SabrinaFariza Sabrina, Zongwen Fan, Shaleeza Sohail
Federated learning (FL) provides a distributed machine learning system that enables participants to train using local data to create a shared model by eliminating the requirement of data sharing. In healthcare systems, FL allows Medical Internet of Things (MIoT) devices and electronic health records (EHRs) to be trained locally without sending patients data to the central server. This allows healthcare decisions and diagnoses based on datasets from all participants, as well as streamlining other healthcare processes. In terms of user data privacy, this technology allows collaborative training without the need of sharing the local data with the central server. However, there are privacy challenges in FL arising from the fact that the model updates are shared between the client and the server which can be used for re-generating the client’s data, breaching privacy requirements of applications in domains like healthcare. In this paper, we have conducted a review of the literature to analyse the existing privacy and security enhancement methods proposed for FL in healthcare systems. It has been identified that the research in the domain focuses on seven techniques: Differential Privacy, Homomorphic Encryption, Blockchain, Hierarchical Approaches, Peer to Peer Sharing, Intelligence on the Edge Device, and Mixed, Hybrid and Miscellaneous Approaches. The strengths, limitations, and trade-offs of each technique were discussed, and the possible future for these seven privacy enhancement techniques for healthcare FL systems was identified.

History

Volume

20

Issue

15

Start Page

1

End Page

25

Number of Pages

25

eISSN

1660-4601

ISSN

1660-4601

Publisher

MDPI AG

Publisher License

CC BY

Additional Rights

CC BY 4.0 DEED

Language

en

Peer Reviewed

  • Yes

Open Access

  • Yes

Acceptance Date

2023-08-04

External Author Affiliations

King’s Own Institute, NSW; Huaqiao University, China; University of Newcastle

Era Eligible

  • Yes

Medium

Electronic

Journal

International Journal of Environmental Research and Public Health

Article Number

6539