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High-dimensional propensity score algorithm in comparative effectiveness research with time-varying interventions

机译:具有时变干预的比较有效性研究中的高维倾向得分算法

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The high-dimensional propensity score (hdPS) algorithm was proposed for automation of confounding adjustment in problems involving large healthcare databases. It has been evaluated in comparative effectiveness research (CER) with point treatments to handle baseline confounding through matching or covariance adjustment on the hdPS. In observational studies with time-varying interventions, such hdPS approaches are often inadequate to handle time-dependent confounding and selection bias. Inverse probability weighting (IPW) estimation to fit marginal structural models can adequately handle these biases under the fundamental assumption of no unmeasured confounders. Upholding of this assumption relies on the selection of an adequate set of covariates for bias adjustment. We describe the application and performance of the hdPS algorithm to improve covariate selection in CER with time-varying interventions based on IPW estimation and explore stabilization of the resulting estimates using Super Learning. The evaluation is based on both the analysis of electronic health records data in a real-world CER study of adults with type 2 diabetes and a simulation study. This report (i) establishes the feasibility of IPW estimation with the hdPS algorithm based on large electronic health records databases, (ii) demonstrates little impact on inferences when supplementing the set of expert-selected covariates using the hdPS algorithm in a setting with extensive background knowledge, (iii) supports the application of the hdPS algorithm in discovery settings with little background knowledge or limited data availability, and (iv) motivates the application of Super Learning to stabilize effect estimates based on the hdPS algorithm. Copyright (C) 2014 John Wiley & Sons, Ltd.
机译:提出了一种高维倾向得分(hdPS)算法,用于在涉及大型医疗数据库的问题中自动进行混杂调整。它已在比较有效性研究(CER)中进行了评估,该研究采用点疗法通过对hdPS进行匹配或协方差调整来处理基线混淆。在随时间变化的干预措施的观察性研究中,此类hdPS方法通常不足以处理随时间变化的混杂和选择偏差。在没有不可测混杂因素的基本假设下,适合边际结构模型的逆概率加权(IPW)估计可以充分处理这些偏差。维持这一假设依赖于选择适当的一组协变量来进行偏差调整。我们描述了hdPS算法的应用和性能,以改进基于IPW估计的时变干预措施在CER中的协变量选择,并探索使用超级学习对所得估计值的稳定性。该评估基于对现实世界中2型糖尿病成年人的CER研究中电子健康记录数据的分析和模拟研究。本报告(i)建立了基于大型电子健康记录数据库的hdPS算法进行IPW估计的可行性;(ii)在背景广泛的环境中使用hdPS算法补充专家选择的协变量集时,对推理的影响很小知识,(iii)支持hdPS算法在背景知识很少或数据可用性有限的发现环境中的应用,并且(iv)激励超级学习的应用,以稳定基于hdPS算法的效果估计。版权所有(C)2014 John Wiley&Sons,Ltd.

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