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当数据非随机缺失时,使用修剪均值识别治疗效果。

Identifying treatment effects using trimmed means when data are missing not at random.

机构信息

Department of Biostatistics, Harvard T.H. Chan School of Public Health, Boston, Massachusetts, USA.

Novartis Pharma AG, Basel, Switzerland.

出版信息

Pharm Stat. 2021 Nov;20(6):1265-1277. doi: 10.1002/pst.2147. Epub 2021 Jun 24.

Abstract

Patients often discontinue from a clinical trial because their health condition is not improving or they cannot tolerate the assigned treatment. Consequently, the observed clinical outcomes in the trial are likely better on average than if every patient had completed the trial. If these differences between trial completers and non-completers cannot be explained by the observed data, then the study outcomes are missing not at random (MNAR). One way to overcome this problem-the trimmed means approach for missing data due to study discontinuation-sets missing values as the worst observed outcome and then trims away a fraction of the distribution from each treatment arm before calculating differences in treatment efficacy (Permutt T, Li F. Trimmed means for symptom trials with dropouts. Pharm Stat. 2017;16(1):20-28). In this paper, we derive sufficient and necessary conditions for when this approach can identify the average population treatment effect. Simulation studies show the trimmed means approach's ability to effectively estimate treatment efficacy when data are MNAR and missingness due to study discontinuation is strongly associated with an unfavorable outcome, but trimmed means fail when data are missing at random. If the reasons for study discontinuation in a clinical trial are known, analysts can improve estimates with a combination of multiple imputation and the trimmed means approach when the assumptions of each hold. We compare the methodology to existing approaches using data from a clinical trial for chronic pain. An R package trim implements the method. When the assumptions are justifiable, using trimmed means can help identify treatment effects notwithstanding MNAR data.

摘要

患者经常退出临床试验,因为他们的健康状况没有改善或无法耐受分配的治疗。因此,与每个患者都完成试验相比,试验中观察到的临床结果平均来看可能更好。如果试验完成者和未完成者之间的这些差异不能用观察到的数据来解释,那么研究结果就是非随机缺失(MNAR)。一种克服这个问题的方法是针对因研究中断导致的缺失数据的修剪均值方法,将缺失值设置为观察到的最差结果,然后在计算治疗效果差异之前,从每个治疗臂的分布中修剪出一部分(Permutt T,Li F. Trimmed means for symptom trials with dropouts. Pharm Stat. 2017;16(1):20-28)。在本文中,我们推导出了这种方法能够识别平均人群治疗效果的充分和必要条件。模拟研究表明,当数据为 MNAR 且由于研究中断导致缺失与不利结果密切相关时,修剪均值方法能够有效地估计治疗效果,但当数据为随机缺失时,修剪均值方法会失效。如果临床试验中停止研究的原因已知,那么当每个假设成立时,分析人员可以通过多重插补和修剪均值方法的组合来改善估计结果。我们使用慢性疼痛临床试验的数据将该方法与现有方法进行了比较。一个 R 包 trim 实现了该方法。只要假设合理,使用修剪均值方法可以帮助识别治疗效果,即使数据为 MNAR。

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