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Missing binary outcomes under covariate‐dependent missingness in cluster randomised trials

机译:集群随机试验中协变量依赖性缺失下的二元结果缺失

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摘要

Missing outcomes are a commonly occurring problem for cluster randomised trials, which can lead to biased and inefficient inference if ignored or handled inappropriately. Two approaches for analysing such trials are cluster‐level analysis and individual‐level analysis. In this study, we assessed the performance of unadjusted cluster‐level analysis, baseline covariate‐adjusted cluster‐level analysis, random effects logistic regression and generalised estimating equations when binary outcomes are missing under a baseline covariate‐dependent missingness mechanism. Missing outcomes were handled using complete records analysis and multilevel multiple imputation. We analytically show that cluster‐level analyses for estimating risk ratio using complete records are valid if the true data generating model has log link and the intervention groups have the same missingness mechanism and the same covariate effect in the outcome model. We performed a simulation study considering four different scenarios, depending on whether the missingness mechanisms are the same or different between the intervention groups and whether there is an interaction between intervention group and baseline covariate in the outcome model. On the basis of the simulation study and analytical results, we give guidance on the conditions under which each approach is valid. © 2017 The Authors. Statistics in Medicine Published by John Wiley & Sons Ltd.
机译:结果丢失是集群随机试验的一个普遍存在的问题,如果忽略或处理不当,可能导致有偏见和低效的推断。分析此类试验的两种方法是聚类分析和个体分析。在这项研究中,我们评估了在基线协变量依赖性缺失机制下二元结果缺失时,未经调整的聚类分析,基线协变量调整的聚类分析,随机效应对数回归和广义估计方程的性能。缺失的结果使用完整记录分析和多级多重插补进行处理。我们的分析表明,如果真实的数据生成模型具有对数链接并且干预组在结果模型中具有相同的缺失机制和相同的协变量效应,则使用完整记录估算风险比率的聚类分析是有效的。我们根据四种不同的情况进行了模拟研究,这取决于干预组之间的缺失机制是相同还是不同,以及干预组与结果模型中的基线协变量之间是否存在相互作用。在仿真研究和分析结果的基础上,我们对每种方法有效的条件提供了指导。 ©2017作者。 John Wiley&Sons Ltd.发布的医学统计资料。

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