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Doubly robust inference for targeted minimum loss-based estimation in randomized trials with missing outcome data

机译:随机试验中具有缺失结果数据的随机试验中的目标最小损失估计的稳健推断

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摘要

Missing outcome data is a crucial threat to the validity of treatment effect estimates from randomized trials. The outcome distributions of participants with missing and observed data are often different, which increases bias. Causal inference methods may aid in reducing the bias and improving efficiency by incorporating baseline variables into the analysis. In particular, doubly robust estimators incorporate 2 nuisance parameters: the outcome regression and the missingness mechanism (ie, the probability of missingness conditional on treatment assignment and baseline variables), to adjust for differences in the observed and unobserved groups that can be explained by observed covariates. To consistently estimate the treatment effect, one of these nuisance parameters must be consistently estimated. Traditionally, nuisance parameters are estimated using parametric models, which often precludes consistency, particularly in moderate to high dimensions. Recent research on missing data has focused on data-adaptive estimation to help achieve consistency, but the large sample properties of such methods are poorly understood. In this article, we discuss a doubly robust estimator that is consistent and asymptotically normal under data-adaptive estimation of the nuisance parameters. We provide a formula for an asymptotically exact confidence interval under minimal assumptions. We show that our proposed estimator has smaller finite-sample bias compared to standard doubly robust estimators. We present a simulation study demonstrating the enhanced performance of our estimators in terms of bias, efficiency, and coverage of the confidence intervals. We present the results of an illustrative example: a randomized, double-blind phase 2/3 trial of antiretroviral therapy in HIV-infected persons.
机译:缺少的结果数据是对随机试验的治疗效果估算有效性的关键威胁。与缺失和观察数据的参与者的结果分布通常不同,这增加了偏差。因果推断方法可以帮助通过将基线变量纳入分析来帮助降低偏差和提高效率。特别是,双重稳健估计器包含2个滋扰参数:结果回归和缺失机制(即,处理分配和基线变量的缺失条件的概率),以调整观察和未观察到的群体的差异协变量。为了始终估计治疗效果,必须一致地估计这些滋扰参数中的一种。传统上,使用参数模型估计滋扰参数,该参数模型通常排除一致性,特别是在中等至高维中。最近关于缺失数据的研究专注于数据适应性估计,以帮助实现一致性,但这种方法的大样本理解得很差。在本文中,我们讨论了一个双重稳健的估计,在滋扰参数的数据自适应估计下是一致和渐近的正常正常。在最小的假设下,我们提供了一种用于渐近精确置信区间的公式。我们表明,与标准双重稳健估计器相比,我们所提出的估计器具有较小的有限样本偏差。我们提出了一种仿真研究,证明了在偏见,效率和置信区间的覆盖范围内提高了我们的估算。我们介绍了说明性实例的结果:艾滋病毒感染者中的抗逆转录病毒治疗的随机,双盲期2/3试验。

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