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首页> 外文期刊>Statistics in medicine >Analyzing sequentially randomized trials based on causal effect models for realistic individualized treatment rules.
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Analyzing sequentially randomized trials based on causal effect models for realistic individualized treatment rules.

机译:基于因果模型分析顺序随机试验,以得出切实可行的个性化治疗规则。

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In this paper, we argue that causal effect models for realistic individualized treatment rules represent an attractive tool for analyzing sequentially randomized trials. Unlike a number of methods proposed previously, this approach does not rely on the assumption that intermediate outcomes are discrete or that models for the distributions of these intermediate outcomes given the observed past are correctly specified. In addition, it generalizes the methodology for performing pairwise comparisons between individualized treatment rules by allowing the user to posit a marginal structural model for all candidate treatment rules simultaneously. This is particularly useful if the number of such rules is large, in which case an approach based on individual pairwise comparisons would be likely to suffer from too much sampling variability to provide an informative answer. In addition, such causal effect models represent an interesting alternative to methods previously proposed for selecting an optimal individualized treatment rule in that they immediately give the user a sense of how the optimal outcome is estimated to change in the neighborhood of the identified optimum. We discuss an inverse-probability-of-treatment-weighted (IPTW) estimator for these causal effect models, which is straightforward to implement using standard statistical software, and develop an approach for constructing valid asymptotic confidence intervals based on the influence curve of this estimator. The methodology is illustrated in two simulation studies that are intended to mimic an HIV/AIDS trial.
机译:在本文中,我们认为现实的个体化治疗规则的因果模型代表了一种分析顺序随机试验的诱人工具。与先前提出的许多方法不同,此方法不依赖以下假设:中间结果是离散的,或者在正确指定观察到的过去的情况下,这些中间结果的分布模型。另外,它通过允许用户同时为所有候选治疗规则提出边际结构模型,概括了在个性化治疗规则之间进行成对比较的方法。如果此类规则的数量很大,这将特别有用,在这种情况下,基于单个成对比较的方法可能会遭受太大的采样变异性,从而无法提供有用的答案。另外,这种因果模型代表了先前提出的用于选择最佳个性化治疗规则的方法的一种有趣的替代方法,因为它们立即为用户提供了一种方式,即如何估算最佳结果以估计所确定的最佳附近变化。我们讨论了这些因果效应模型的加权治疗逆概率(IPTW)估计量,该估计量可以使用标准统计软件轻松实现,并根据该估计量的影响曲线开发一种构造有效渐近置信区间的方法。在旨在模拟HIV / AIDS试验的两项模拟研究中说明了该方法。

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