Lian Yi, Jiang Xiaoqian, Long Qi
medRxiv. 2024 Sep 16:2024.09.15.24313479. doi: 10.1101/2024.09.15.24313479.
Large electronic health records (EHR) have been widely implemented and are available for research activities. The magnitude of such databases often requires storage and computing infrastructure that are distributed at different sites. Restrictions on data-sharing due to privacy concerns have been another driving force behind the development of a large class of distributed and/or federated machine learning methods. While missing data problem is also present in distributed EHRs, albeit potentially more complex, distributed multiple imputation (MI) methods have not received as much attention. An important advantage of distributed MI, as well as distributed analysis, is that it allows researchers to borrow information across data sites, mitigating potential fairness issues for minority groups that do not have enough volume at certain sites. In this paper, we propose a communication-efficient and privacy-preserving distributed MI algorithms for variables that are missing not at random.
大型电子健康记录(EHR)已得到广泛应用,并可用于研究活动。这类数据库的规模通常需要分布在不同站点的存储和计算基础设施。由于隐私问题对数据共享的限制,是一大类分布式和/或联邦机器学习方法发展背后的另一个驱动力。虽然分布式EHR中也存在缺失数据问题,尽管可能更复杂,但分布式多重填补(MI)方法并未受到同等程度的关注。分布式MI以及分布式分析的一个重要优势在于,它允许研究人员跨数据站点借用信息,减轻某些站点中数量不足的少数群体潜在的公平性问题。在本文中,我们针对非随机缺失的变量提出了一种通信高效且隐私保护的分布式MI算法。