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Conducting Privacy-Preserving Multivariable Propensity Score Analysis When Patient Covariate Information Is Stored in Separate Locations

机译:当患者协变量信息存储在单独的位置时进行隐私保护的多元倾向得分分析

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摘要

Distributed networks of health-care data sources are increasingly being utilized to conduct pharmacoepidemiologic database studies. Such networks may contain data that are not physically pooled but instead are distributed horizontally (separate patients within each data source) or vertically (separate measures within each data source) in order to preserve patient privacy. While multivariable methods for the analysis of horizontally distributed data are frequently employed, few practical approaches have been put forth to deal with vertically distributed health-care databases. In this paper, we propose 2 propensity score–based approaches to vertically distributed data analysis and test their performance using 5 example studies. We found that these approaches produced point estimates close to what could be achieved without partitioning. We further found a performance benefit (i.e., lower mean squared error) for sequentially passing a propensity score through each data domain (called the “sequential approach”) as compared with fitting separate domain-specific propensity scores (called the “parallel approach”). These results were validated in a small simulation study. This proof-of-concept study suggests a new multivariable analysis approach to vertically distributed health-care databases that is practical, preserves patient privacy, and warrants further investigation for use in clinical research applications that rely on health-care databases.
机译:越来越多地利用分布式卫生保健数据源网络进行药物流行病学数据库研究。这样的网络可能包含未物理合并的数据,而是水平分布(每个数据源内的患者分开)或垂直分布(每个数据源内的单独措施)以保护患者隐私。尽管经常使用用于分析水平分布数据的多变量方法,但很少提出实用方法来处理垂直分布的卫生保健数据库。在本文中,我们提出了两种基于倾向得分的垂直分布数据分析方法,并使用5个示例研究来测试其性能。我们发现,这些方法产生的点估计接近无需分割即可实现的点估计。我们还发现,与拟合单独的特定于领域的倾向得分(称为“并行方法”)相比,将倾向得分依次通过每个数据域(称为“顺序方法”)具有性能优势(即,较低的均方误差)。 。这些结果在一个小型模拟研究中得到了验证。这项概念验证研究提出了一种新的垂直分布医疗数据库的多变量分析方法,该方法实用,可保护患者隐私并需要进一步研究,以用于依赖医疗数据库的临床研究应用。

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