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A comparison of existing methods for multiple imputation in individual participant data meta-analysis

机译:个体参与者数据荟萃分析中现有多种归因方法的比较

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摘要

Multiple imputation is a popular method for addressing missing data, but its implementation is difficult when data have a multilevel structure and one or more variables are systematically missing. This systematic missing data pattern may commonly occur in meta-analysis of individual participant data, where some variables are never observed in some studies, but are present in other hierarchical data settings. In these cases, valid imputation must account for both relationships between variables and correlation within studies. Proposed methods for multilevel imputation include specifying a full joint model and multiple imputation with chained equations (MICE). While MICE is attractive for its ease of implementation, there is little existing work describing conditions under which this is a valid alternative to specifying the full joint model. We present results showing that for multilevel normal models, MICE is rarely exactly equivalent to joint model imputation. Through a simulation study and an example using data from a traumatic brain injury study, we found that in spite of theoretical differences, MICE imputations often produce results similar to those obtained using the joint model. We also assess the influence of prior distributions in MICE imputation methods and find that when missingness is high, prior choices in MICE models tend to affect estimation of across-study variability more than compatibility of conditional likelihoods.
机译:多重插补是解决丢失数据的一种流行方法,但是当数据具有多级结构并且一个或多个变量被系统地丢失时,实现很难实现。这种系统性的数据丢失模式通常可能发生在单个参与者数据的荟萃分析中,其中某些研究中从未观察到某些变量,而其他分层数据设置中却存在这些变量。在这些情况下,有效插补必须考虑变量和研究中相关性之间的关系。提议的多级插补方法包括指定完整联合模型和带有链式方程式(MICE)的多插补。尽管MICE易于执行,但它几乎没有描述条件的有效方法,在这种情况下,MICE是指定完整联合模型的有效替代方法。我们提供的结果表明,对于多级法线模型,MICE很少完全等同于联合模型估算。通过仿真研究和使用创伤性脑损伤研究数据的示例,我们发现,尽管在理论上存在差异,但MICE推算通常会产生与使用关节模型获得的结果相似的结果。我们还评估了MICE插补方法中先验分布的影响,并发现当缺失率很高时,MICE模型中的先验选择往往比条件似然性更能影响跨研究变异性的估计。

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