The potential of federated learning for public health purposes: a qualitative analysis of GDPR compliance, Europe, 2021.

IF 9.9 2区 医学 Q1 INFECTIOUS DISEASES
Natalie Lieftink, Carolina Dos S Ribeiro, Mark Kroon, George B Haringhuizen, Albert Wong, Linda Hm van de Burgwal
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引用次数: 0

Abstract

BackgroundThe wide application of machine learning (ML) holds great potential to improve public health by supporting data analysis informing policy and practice. Its application, however, is often hampered by data fragmentation across organisations and strict regulation by the General Data Protection Regulation (GDPR). Federated learning (FL), as a decentralised approach to ML, has received considerable interest as a means to overcome the fragmentation of data, but it is yet unclear to which extent this approach complies with the GDPR.AimOur aim was to understand the potential data protection implications of the use of federated learning for public health purposes.MethodsBuilding upon semi-structured interviews (n = 14) and a panel discussion (n = 5) with key opinion leaders in Europe, including both FL and GDPR experts, we explored how GDPR principles would apply to the implementation of FL within public health.ResultsWhereas this study found that FL offers substantial benefits such as data minimisation, storage limitation and effective mitigation of many of the privacy risks of sharing personal data, it also identified various challenges. These challenges mostly relate to the increased difficulty of checking data at the source and the limited understanding of potential adverse outcomes of the technology.ConclusionSince FL is still in its early phase and under rapid development, it is expected that knowledge on its impracticalities will increase rapidly, potentially addressing remaining challenges. In the meantime, this study reflects on the potential of FL to align with data protection objectives and offers guidance on GDPR compliance.

联合学习在公共卫生方面的潜力:对 GDPR 合规性的定性分析,欧洲,2021 年。
背景机器学习(ML)的广泛应用为政策和实践提供了数据分析支持,在改善公共卫生方面具有巨大潜力。然而,其应用往往受到各组织数据分散和《通用数据保护条例》(GDPR)严格监管的阻碍。联合学习(FL)作为一种分散的 ML 方法,作为克服数据分散的一种手段受到了广泛关注,但目前尚不清楚这种方法在多大程度上符合 GDPR。方法在半结构化访谈(14 人)和与欧洲主要意见领袖(包括 FL 和 GDPR 专家)进行小组讨论(5 人)的基础上,我们探讨了 GDPR 原则将如何适用于在公共卫生领域实施 FL。结果本研究发现,FL 具有极大的优势,如数据最小化、存储限制和有效降低共享个人数据的许多隐私风险,但也发现了各种挑战。这些挑战主要涉及从源头检查数据的难度增加,以及对该技术潜在不良后果的了解有限。结论由于 FL 仍处于早期阶段,而且正在快速发展之中,预计有关其不实用性的知识将迅速增加,从而有可能解决其余的挑战。与此同时,本研究对 FL 在实现数据保护目标方面的潜力进行了反思,并为遵守 GDPR 提供了指导。
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来源期刊
Eurosurveillance
Eurosurveillance INFECTIOUS DISEASES-
CiteScore
32.70
自引率
2.10%
发文量
430
审稿时长
3-8 weeks
期刊介绍: Eurosurveillance is a European peer-reviewed journal focusing on the epidemiology, surveillance, prevention, and control of communicable diseases relevant to Europe.It is a weekly online journal, with 50 issues per year published on Thursdays. The journal includes short rapid communications, in-depth research articles, surveillance reports, reviews, and perspective papers. It excels in timely publication of authoritative papers on ongoing outbreaks or other public health events. Under special circumstances when current events need to be urgently communicated to readers for rapid public health action, e-alerts can be released outside of the regular publishing schedule. Additionally, topical compilations and special issues may be provided in PDF format.
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