When Collaborative Federated Learning Meets Blockchain to Preserve Privacy in Healthcare

被引:19
|
作者
El Houda, Zakaria Abou [1 ,2 ]
Hafid, Abdelhakim Senhaji [1 ]
Khoukhi, Lyes [3 ]
Brik, Bouziane [4 ]
机构
[1] Univ Montreal, Dept Comp Sci & Operat Res, Montreal, PQ H3T 1J4, Canada
[2] ISEN Yncrea Ouest, L bISEN, F-29200 Brest, France
[3] Normandie Univ, GREYC, ENSICAEN, CNRS, F-76000 Rouen, France
[4] Univ Bourgogne Franche Comt, DRIVE EA1859, F-58000 Besancon, France
关键词
Healthcare; federated learning; B6G; SDN; blockchain; NETWORKS; CHALLENGES;
D O I
10.1109/TNSE.2022.3211192
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Data-driven Machine and Deep Learning (ML/DL) is an emerging approach that uses medical data to build robust and accurate ML/DL models that can improve clinical decisions in some critical tasks (e:g:; cancer diagnosis). However, ML/DL-based healthcare models still suffer from poor adoption due to the lack of realistic and recentmedical data. The privacy nature of these medical datasets makes it difficult for clinicians and healthcare service providers, to share their sensitive data (i:e:; Patient Health Records (PHR)). Thus, privacy-aware collaboration among clinicians and healthcare service providers is expected to become essential to build robust healthcare applications supported by next-generation networking (NGN) technologies, including Beyond sixth-generation (B6G) networks. In this paper, we design a new framework, called HealthFed, that leverages Federated Learning (FL) and blockchain technologies to enable privacy-preserving and distributed learning among multiple clinician collaborators. Specifically, HealthFed enables several distributed SDN-based domains, clinician collaborators, to securely collaborate in order to build robust healthcare ML-based models, while ensuring the privacy of each clinician participant. In addition, HealthFed ensures a secure aggregation of local model updates by leveraging a secure multiparty computation scheme (i:e:; Secure Multiparty Computation (SMPC)). Furthermore, we design a novel blockchain-based scheme to facilitate/maintain the collaboration among clinician collaborators, in a fully decentralized, trustworthy, and flexible way. We conduct several experiments to evaluate HealthFed; in-depth experiments results using public Breast Cancer dataset show the efficiency of HealthFed, by not only ensuring the privacy of each collaborator's sensitive data, but also providing an accurate learning models, which makesHealthFed a promising framework for healthcare systems.
引用
收藏
页码:2455 / 2465
页数:11
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