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Simple adjustments for randomized trials with nonrandomly missing or censored outcomes arising from informative covariates

机译:对于随机试验的简单调整,该随机试验具有因信息性协变量而产生的非随机缺失或审查结果

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In randomized trials with missing or censored outcomes, standard maximum likelihood estimates of the effect of intervention on outcome are based on the assumption that the missing-data mechanism is ignorable. This assumption is violated if there is an unobserved baseline covariate that is informative, namely a baseline covariate associated with both outcome and the probability that the outcome is missing or censored. Incorporating informative covariates in the analysis has the desirable result of ameliorating the violation of this assumption. Although this idea of including informative covariates is recognized in the statistics literature, it is not appreciated in the literature on randomized trials. Moreover, to our knowledge, there has been no discussion on how to incorporate informative covariates into a general likelihood-based analysis with partially missing outcomes to estimate the quantities of interest. Our contribution is a simple likelihood-based approach for using informative covariates to estimate the effect of intervention on a partially missing outcome in a randomized trial. The first step is to create a propensity-to-be-missing score for each randomization group and divide the scores into a small number of strata based on quantiles. The second step is to compute stratum-specific estimates of outcome derived from a likelihood-analysis conditional on the informative covariates, so that the missing-data mechanism is ignorable. The third step is to average the stratum-specific estimates and compute the estimated effect of interventionon outcome. We discuss the computations for univariate, survival, and longitudinal outcomes, and present an application involving a randomized study of dual versus triple combinations of HIV-1 reverse transcriptase inhibitors.
机译:在结果缺失或被审查的随机试验中,干预对结果影响的标准最大似然估计是基于缺失数据机制可忽略的假设。如果存在一个未提供信息的基线协变量,即与结果和结果缺失或检查的概率相关的基线协变量,则违反该假设。在分析中纳入信息性协变量具有缓解违反此假设的理想结果。尽管在统计文献中已经认识到了包括信息性协变量的想法,但是在有关随机试验的文献中却没有意识到这一点。而且,据我们所知,还没有讨论如何将信息性协变量纳入基于似然性的一般分析中,而该分析的结果部分缺少预期的利益量。我们的贡献是一种基于可能性的简单方法,用于使用信息性协变量来估计随机试验中干预对部分缺失结果的影响。第一步是为每个随机分组创建一个缺少倾向的得分,并根据分位数将这些得分分为少量阶层。第二步是计算以信息协变量为条件的似然分析得出的结果的特定于层的估计,以便丢失数据机制可忽略。第三步是对特定于阶层的估计值求平均,并计算干预对结果的估计效果。我们讨论了单变量,生存率和纵向结果的计算,并提出了一项涉及HIV-1逆转录酶抑制剂双重或三次组合的随机研究的应用程序。

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