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Notes on odds ratio estimation for a randomized clinical trial with noncompliance and missing outcomes

机译:关于不合规和遗漏结果的随机临床试验的比值比估计的注意事项

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The odds ratio (OR) has been recommended elsewhere to measure the relative treatment efficacy in a randomized clinical trial (RCT), because it possesses a few desirable statistical properties. In practice, it is not uncommon to come across an RCT in which there are patients who do not comply with their assigned treatments and patients whose outcomes are missing. Under the compound exclusion restriction, latent ignorable and monotonicity assumptions, we derive the maximum likelihood estimator (MLE) of the OR and apply Monte Carlo simulation to compare its performance with those of the other two commonly used estimators for missing completely at random (MCAR) and for the intention-to-treat (ITT) analysis based on patients with known outcomes, respectively. We note that both estimators for MCAR and the ITT analysis may produce a misleading inference of the OR even when the relative treatment effect is equal. We further derive three asymptotic interval estimators for the OR, including the interval estimator using Wald's statistic, the interval estimator using the logarithmic transformation, and the interval estimator using an ad hoc procedure of combining the above two interval estimators. On the basis of a Monte Carlo simulation, we evaluate the finite-sample performance of these interval estimators in a variety of situations. Finally, we use the data taken from a randomized encouragement design studying the effect of flu shots on the flu-related hospitalization rate to illustrate the use of the MLE and the asymptotic interval estimators for the OR developed here.
机译:已在其他地方推荐使用比值比(OR)来衡量随机临床试验(RCT)中的相对治疗效果,因为它具有一些理想的统计特性。在实践中,遇到RCT的情况并不少见,在RCT中,有些患者不遵循指定的治疗方法,而其结果却缺失的患者。在复合排斥限制,潜在可燃性和单调性假设下,我们推导了OR的最大似然估计器(MLE),并应用Monte Carlo模拟将其性能与其他两种常用的完全随机缺失估计器的性能进行比较以及分别基于已知结果的患者进行意向治疗(ITT)分析。我们注意到,即使相对治疗效果相同,MCAR和ITT分析的估计量也可能产生OR的误导性推断。我们进一步得出OR的三个渐近间隔估计量,包括使用Wald统计量的间隔估计量,使用对数变换的间隔估计量以及使用结合了上述两个间隔估计量的临时过程的间隔估计量。在蒙特卡洛模拟的基础上,我们评估了这些间隔估计器在各种情况下的有限样本性能。最后,我们使用来自随机鼓励设计的数据研究流感疫苗对流感相关住院率的影响,以说明在此处开发的OR的MLE和渐近间隔估计量的使用。

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