Clinical trials with longitudinal outcomes typically include missing data due to missed assessments or structural missingness of outcomes after intercurrent events handled with a hypothetical strategy. Approaches based on Bayesian random multiple imputation and Rubin's rule for pooling results across multiple imputed datasets are increasingly used in order to align the analysis of these trials with the targeted estimand. We propose and justify deterministic conditional mean imputation combined with the jackknife for inference as an alternative approach. The method is applicable to imputations under a missing-at-random assumption as well as for reference-based imputation approaches. In an application and a simulation study, we demonstrate that it provides consistent treatment effect estimates with the Bayesian approach and reliable frequentist inference with accurate standard error estimation and type I error control. A further advantage of the method is that it does not rely on random sampling and is therefore replicable and unaffected by Monte Carlo error.
翻译:具有纵向结果的临床试验通常包括由于在以假设战略处理的周期间事件之后结果的缺失评估或结构性缺失而导致的数据缺失。基于巴伊西亚随机多重估算和Rubin规则的关于将结果汇集到多个估算数据集中的方法正在越来越多地被使用,以便使对这些试验的分析与目标估计值相一致。我们提议并证明确定性有条件平均估算值与千斤顶误算结合作为替代方法是合理的。这种方法适用于根据缺失的随机假设和基于参考的估算法的估算。在应用和模拟研究中,我们证明它提供了与巴伊西亚方法一致的治疗效果估计值以及可靠的常见推断值,准确的标准误差估计和I型错误控制。这种方法的另一个优点是,它不依赖随机抽样,因此可以复制,不受蒙特卡洛错误的影响。