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医疗保健中的联邦机器学习:临床应用和技术架构的系统评价。

Federated machine learning in healthcare: A systematic review on clinical applications and technical architecture.

机构信息

Singapore National Eye Centre, Singapore, Singapore; Singapore Eye Research Institute, Singapore, Singapore.

Singapore Eye Research Institute, Singapore, Singapore; Duke-NUS Medical School, Singapore, Singapore.

出版信息

Cell Rep Med. 2024 Feb 20;5(2):101419. doi: 10.1016/j.xcrm.2024.101419. Epub 2024 Feb 9.

Abstract

Federated learning (FL) is a distributed machine learning framework that is gaining traction in view of increasing health data privacy protection needs. By conducting a systematic review of FL applications in healthcare, we identify relevant articles in scientific, engineering, and medical journals in English up to August 31st, 2023. Out of a total of 22,693 articles under review, 612 articles are included in the final analysis. The majority of articles are proof-of-concepts studies, and only 5.2% are studies with real-life application of FL. Radiology and internal medicine are the most common specialties involved in FL. FL is robust to a variety of machine learning models and data types, with neural networks and medical imaging being the most common, respectively. We highlight the need to address the barriers to clinical translation and to assess its real-world impact in this new digital data-driven healthcare scene.

摘要

联邦学习(FL)是一种分布式机器学习框架,鉴于人们对健康数据隐私保护的需求不断增加,它正受到越来越多的关注。我们通过对医疗保健领域的 FL 应用进行系统的文献回顾,确定了截至 2023 年 8 月 31 日英文科学、工程和医学期刊中的相关文章。在总共审查的 22693 篇文章中,有 612 篇文章被纳入最终分析。大多数文章都是概念验证研究,只有 5.2%是具有实际应用的 FL 研究。放射学和内科是最常见的涉及 FL 的专业。FL 对各种机器学习模型和数据类型具有鲁棒性,其中神经网络和医学成像分别是最常见的。我们强调需要解决临床转化的障碍,并评估其在这个新的数字化数据驱动的医疗保健场景中的实际影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7c98/10897620/b84cc3763898/fx1.jpg

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