Considerations for choosing an imputation method for addressing sparse measurement issues dictated by the study design - An illustration from per-protocol analysis in pragmatic trials

Mohammad Ehsanul Karim, M. B. Hossain
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引用次数: 2

Abstract

Last Observation Carried Forward (LOCF) is an ad-hoc method, with known limitations. In recent years, several methods publications have used LOCF in estimating the per-protocol effect via inverse probability of adherence weighted (IPAW) model, when a time-varying factor is partially measured by the study design. We compare the statistical performances of LOCF and multiple imputation approaches for estimating the per-protocol effects via the IPAW model in the presence of incomplete treatment adherence. We used a validated pragmatic trial data generating simulation algorithm to generate datasets under 7 different simulation scenarios, where a post-randomization prognostic factor was measured after regular intervals. Unmeasured values of a partially observed factor were imputed using LOCF and multiple imputation approaches, and IPAW model was fitted on the imputed data to obtain the estimates, and statistical performances were assessed. When confounding exists, for higher variability of the time-varying factor, multiple imputation approach shows desirable statistical properties under MCAR assumption; otherwise, LOCF approach can be adequate. Both imputation methods performed well in terms of statistical properties, when there is no confounding or when all necessary confounders are adjusted. A case study from Coronary Primary Prevention Trial data was presented, which included some participants with incomplete treatment adherence.
为解决由研究设计决定的稀疏测量问题而选择一种归算方法的考虑——实用试验中按方案分析的例证
最后观测结转(LOCF)是一种特殊方法,具有已知的局限性。近年来,当研究设计部分测量时变因素时,一些方法出版物使用LOCF通过逆依从性概率加权(IPAW)模型来估计每个方案的效果。我们比较了LOCF和多重插补方法在存在不完全治疗依从性的情况下通过IPAW模型估计方案效果的统计性能。我们使用经过验证的实用试验数据生成模拟算法在7种不同的模拟场景下生成数据集,其中在规则的间隔后测量随机化后的预后因素。使用LOCF和多重插补方法对部分观测因子的未测量值进行插补,并在插补数据上拟合IPAW模型以获得估计值,并评估统计性能。当存在混淆时,对于时变因素的较高可变性,在MCAR假设下,多重插补方法显示出理想的统计特性;否则,LOCF方法就足够了。当没有混杂因素或调整了所有必要的混杂因素时,这两种插补方法在统计特性方面都表现良好。根据冠状动脉一级预防试验数据进行了一项案例研究,其中包括一些治疗依从性不完全的参与者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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