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Move over LOCF: Principled methods for handling missing data in sleep disorder trials

机译:超越LOCF:处理睡眠障碍试验中缺失数据的原则方法

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摘要

Missing data, e.g. patient attrition, are endemic in sleep disorder clinical trials. Common approaches for dealing with this situation include complete-case analysis (CCA) and last observation carried forward (LOCF). Although these methods are simple to implement, they are deeply flawed in that they may introduce bias and underestimate uncertainty, leading to erroneous conclusions. There are alternative principled approaches, however, that are available in statistical software namely mixed-effects models and multiple imputation. In this paper we introduce terminology used to describe different assumptions about missing data. We emphasize that understanding reasons for missingness is a critical step in the analysis process. We describe and implement both linear mixed-effects models and an inclusive multiple imputation strategy for handling missing data in a randomized trial examining sleep outcomes. These principled strategies are compared with "complete-case analysis" and LOCF. These analyses illustrate that methodologies for accommodating missing data can produce different results in both direction and strength of treatment effects. Our goal is for this paper to serve as a guide to sleep disorder clinical trial researchers on how to utilize principled methods for incomplete data in their trial analyses.
机译:缺少数据,例如患者的消耗,是睡眠障碍临床试验中的地方病。处理这种情况的常用方法包括完整案例分析(CCA)和结转最后观察(LOCF)。尽管这些方法易于实施,但它们存在严重缺陷,因为它们可能会引入偏差并低估不确定性,从而导致错误的结论。但是,统计软件中还提供了其他有原则的方法,即混合效应模型和多重插补。在本文中,我们介绍了用于描述有关丢失数据的不同假设的术语。我们强调了解缺失的原因是分析过程中的关键步骤。在描述睡眠结果的随机试验中,我们描述并实现了线性混合效应模型和包容性多重归因策略,用于处理缺失数据。将这些原则性策略与“完整案例分析”和LOCF进行比较。这些分析表明,适应缺失数据的方法可以在治疗效果的方向和强度方面产生不同的结果。我们的目标是使本文成为睡眠障碍临床试验研究人员的指南,以指导他们如何在其试验分析中利用原则方法获得不完整的数据。

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