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处理治疗中止后部分观察试验数据:引入提取的失访参考中心多重填补。

Handling Partially Observed Trial Data After Treatment Withdrawal: Introducing Retrieved Dropout Reference-Base Centred Multiple Imputation.

机构信息

Imperial Clinical Trials Unit, Imperial College London, London, UK.

Medical Statistics Department, London School of Hygiene & Tropical Medicine, London, UK.

出版信息

Pharm Stat. 2024 Nov-Dec;23(6):1095-1116. doi: 10.1002/pst.2416. Epub 2024 Jul 16.

Abstract

The ICH E9(R1) Addendum (International Council for Harmonization 2019) suggests treatment-policy as one of several strategies for addressing intercurrent events such as treatment withdrawal when defining an estimand. This strategy requires the monitoring of patients and collection of primary outcome data following termination of randomised treatment. However, when patients withdraw from a study early before completion this creates true missing data complicating the analysis. One possible way forward uses multiple imputation to replace the missing data based on a model for outcome on- and off-treatment prior to study withdrawal, often referred to as retrieved dropout multiple imputation. This article introduces a novel approach to parameterising this imputation model so that those parameters which may be difficult to estimate have mildly informative Bayesian priors applied during the imputation stage. A core reference-based model is combined with a retrieved dropout compliance model, using both on- and off-treatment data, to form an extended model for the purposes of imputation. This alleviates the problem of specifying a complex set of analysis rules to accommodate situations where parameters which influence the estimated value are not estimable, or are poorly estimated leading to unrealistically large standard errors in the resulting analysis. We refer to this new approach as retrieved dropout reference-base centred multiple imputation.

摘要

ICH E9(R1)附录(国际协调理事会 2019 年)建议在定义估计量时,将治疗策略作为处理伴随事件(如治疗中止)的几种策略之一。该策略需要监测患者并在随机治疗终止后收集主要结局数据。然而,当患者在完成研究之前提前退出研究时,这会导致真实的缺失数据,从而使分析变得复杂。一种可能的方法是使用多重插补,根据研究退出前治疗期间和治疗结束后的结局模型来替代缺失数据,通常称为检索性脱落多重插补。本文介绍了一种新的方法来对该插补模型进行参数化,以便在插补阶段应用具有轻度信息的贝叶斯先验来估计那些可能难以估计的参数。一个核心的基于参考的模型与一个检索性脱落依从性模型相结合,使用治疗期间和治疗结束后的数据,形成一个扩展的模型用于插补。这减轻了指定一套复杂的分析规则的问题,这些规则用于适应那些影响估计值的参数不可估计或估计不准确的情况,从而导致分析结果中的标准误差不切实际地过大。我们将这种新方法称为检索性脱落基于参考的中心多重插补。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3fd0/11602953/d5630005b5ff/PST-23-1095-g001.jpg

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