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Distributed Regression Analysis Application in Large Distributed Data Networks: Analysis of Precision and Operational Performance

机译:大型分布式数据网络中的分布式回归分析应用:精度和操作性能分析

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Background A distributed data network approach combined with distributed regression analysis (DRA) can reduce the risk of disclosing sensitive individual and institutional information in multicenter studies. However, software that facilitates large-scale and efficient implementation of DRA is limited. Objective This study aimed to assess the precision and operational performance of a DRA application comprising a SAS-based DRA package and a file transfer workflow developed within the open-source distributed networking software PopMedNet in a horizontally partitioned distributed data network. Methods We executed the SAS-based DRA package to perform distributed linear, logistic, and Cox proportional hazards regression analysis on a real-world test case with 3 data partners. We used PopMedNet to iteratively and automatically transfer highly summarized information between the data partners and the analysis center. We compared the DRA results with the results from standard SAS procedures executed on the pooled individual-level dataset to evaluate the precision of the SAS-based DRA package. We computed the execution time of each step in the workflow to evaluate the operational performance of the PopMedNet-driven file transfer workflow. Results All DRA results were precise (10?12), and DRA model fit curves were identical or similar to those obtained from the corresponding pooled individual-level data analyses. All regression models required less than 20 min for full end-to-end execution. Conclusions We integrated a SAS-based DRA package with PopMedNet and successfully tested the new capability within an active distributed data network. The study demonstrated the validity and feasibility of using DRA to enable more privacy-protecting analysis in multicenter studies.
机译:背景技术分布式数据网络方法与分布式回归分析(DRA)相结合,可以降低多中心研究中披露敏感个人和制度信息的风险。但是,有助于大规模和高效实施DRA的软件是有限的。目的本研究旨在评估DRA应用程序的精度和操作性能,包括基于SAS的DRA包和在水平分区分布式数据网络中开源分布式网络软件POPMEDNET中开发的文件传输工作流程。方法我们执行了基于SAS的DRA封装,以在具有3个数据合作伙伴的真实测试用例上执行分布式线性,逻辑和COX比例危险危险性回归分析。我们使用PopMednet来迭代并自动在数据合作伙伴和分析中心之间传输高度总结的信息。我们将DRA结果与在汇集的单级数据集上执行的标准SAS程序中的结果进行了比较,以评估基于SAS的DRA包的精度。我们计算了工作流程中的每个步骤的执行时间,以评估PopMednet驱动的文件传输工作流的操作性能。结果所有DRA结果都精确(<10?12),并且DRA模型拟合曲线与从相应的汇集单位数据分析中获得的那些相同或类似。所有回归模型都需要少于20分钟,以便全端到端执行。结论我们将基于SAS的DRA包装与PopMednet集成并成功测试了主动分布式数据网络内的新功能。该研究表明了使用DRA在多中心研究中实现更多隐私保护分析的有效性和可行性。

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