医疗保健信息学的联邦学习。

IF 5.9 Q1 Computer Science Journal of Healthcare Informatics Research Pub Date : 2021-01-01 Epub Date: 2020-11-12 DOI:10.1007/s41666-020-00082-4
Jie Xu, Benjamin S Glicksberg, Chang Su, Peter Walker, Jiang Bian, Fei Wang
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引用次数: 559

摘要

随着计算机软件和硬件技术的快速发展,越来越多的医疗保健数据可以从临床机构、患者、保险公司和制药行业等获得。这种访问为数据科学技术提供了前所未有的机会,可以获得数据驱动的见解并提高医疗服务质量。然而,医疗保健数据通常是分散的和私有的,因此很难在人群中产生可靠的结果。例如,不同的医院拥有不同患者群体的电子健康记录(EHR),由于这些记录的敏感性,很难在医院之间共享。这对开发有效的、可推广的分析方法造成了很大的障碍,因为这需要多样化的“大数据”。联邦学习是一种使用中央服务器训练共享全局模型的机制,同时将所有敏感数据保存在数据所属的本地机构中,它为将分散的医疗保健数据源与隐私保护连接起来提供了很大的希望。本调查的目的是为联邦学习技术,特别是在生物医学领域提供一个回顾。特别地,我们总结了联邦学习中统计挑战、系统挑战和隐私问题的一般解决方案,并指出其在医疗保健中的影响和潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Federated Learning for Healthcare Informatics.

With the rapid development of computer software and hardware technologies, more and more healthcare data are becoming readily available from clinical institutions, patients, insurance companies, and pharmaceutical industries, among others. This access provides an unprecedented opportunity for data science technologies to derive data-driven insights and improve the quality of care delivery. Healthcare data, however, are usually fragmented and private making it difficult to generate robust results across populations. For example, different hospitals own the electronic health records (EHR) of different patient populations and these records are difficult to share across hospitals because of their sensitive nature. This creates a big barrier for developing effective analytical approaches that are generalizable, which need diverse, "big data." Federated learning, a mechanism of training a shared global model with a central server while keeping all the sensitive data in local institutions where the data belong, provides great promise to connect the fragmented healthcare data sources with privacy-preservation. The goal of this survey is to provide a review for federated learning technologies, particularly within the biomedical space. In particular, we summarize the general solutions to the statistical challenges, system challenges, and privacy issues in federated learning, and point out the implications and potentials in healthcare.

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来源期刊
Journal of Healthcare Informatics Research
Journal of Healthcare Informatics Research Computer Science-Computer Science Applications
CiteScore
13.60
自引率
1.70%
发文量
12
期刊介绍: Journal of Healthcare Informatics Research serves as a publication venue for the innovative technical contributions highlighting analytics, systems, and human factors research in healthcare informatics.Journal of Healthcare Informatics Research is concerned with the application of computer science principles, information science principles, information technology, and communication technology to address problems in healthcare, and everyday wellness. Journal of Healthcare Informatics Research highlights the most cutting-edge technical contributions in computing-oriented healthcare informatics.  The journal covers three major tracks: (1) analytics—focuses on data analytics, knowledge discovery, predictive modeling; (2) systems—focuses on building healthcare informatics systems (e.g., architecture, framework, design, engineering, and application); (3) human factors—focuses on understanding users or context, interface design, health behavior, and user studies of healthcare informatics applications.   Topics include but are not limited to: ·         healthcare software architecture, framework, design, and engineering;·         electronic health records·         medical data mining·         predictive modeling·         medical information retrieval·         medical natural language processing·         healthcare information systems·         smart health and connected health·         social media analytics·         mobile healthcare·         medical signal processing·         human factors in healthcare·         usability studies in healthcare·         user-interface design for medical devices and healthcare software·         health service delivery·         health games·         security and privacy in healthcare·         medical recommender system·         healthcare workflow management·         disease profiling and personalized treatment·         visualization of medical data·         intelligent medical devices and sensors·         RFID solutions for healthcare·         healthcare decision analytics and support systems·         epidemiological surveillance systems and intervention modeling·         consumer and clinician health information needs, seeking, sharing, and use·         semantic Web, linked data, and ontology·         collaboration technologies for healthcare·         assistive and adaptive ubiquitous computing technologies·         statistics and quality of medical data·         healthcare delivery in developing countries·         health systems modeling and simulation·         computer-aided diagnosis
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