Edwin R van den Heuvel, Osama Almalik, Zhuozhao Zhan
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We also compare our simulation approach with other simulation approaches used in literature. We describe their theoretical differences and conduct a simulation study for three meta-analysis methods: DerSimonian and Laird method for pooling aggregated study effect sizes and the Trim & Fill and precision-effect test and precision-effect estimate with standard errors method for adjustment of publication bias. We demonstrate that the choice of simulation model for aggregated data may have an impact on (the conclusions of) the performance of the meta-analysis method. We recommend the use of multiple aggregated data simulation models to investigate the sensitivity in the performance of the meta-analysis method. 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引用次数: 0
摘要
模拟研究通常用于评估新开发的荟萃分析方法的性能。对于为聚合数据荟萃分析而开发的方法,研究人员通常会直接对聚合数据进行模拟,而不是模拟个体参与者的数据,因为现实中的聚合数据是通过个体参与者的数据计算得出的。显然,聚合数据统计的分布特征可能来自基础个体数据的分布假设,但这些假设通常不会在出版物中明确指出。本文提供了由连续个体数据的异方差混合效应模型推导出的汇总数据统计量的分布情况,以及直接模拟汇总数据统计量的程序。我们还将我们的模拟方法与文献中使用的其他模拟方法进行了比较。我们描述了它们的理论差异,并对三种荟萃分析方法进行了模拟研究:DerSimonian 和 Laird 方法用于汇集汇总研究效应大小,Trim & Fill 和精确效应检验以及精确效应估计与标准误差法用于调整发表偏倚。我们证明,对汇总数据模拟模型的选择可能会影响荟萃分析方法的性能(结论)。我们建议使用多种聚合数据模拟模型来研究荟萃分析方法性能的敏感性。此外,我们建议研究人员尝试明确个体参与者数据模型,并从该模型中推导出汇总统计数据的分布后果,以帮助选择合适的汇总数据模拟模型。
Simulation models for aggregated data meta-analysis: Evaluation of pooling effect sizes and publication biases.
Simulation studies are commonly used to evaluate the performance of newly developed meta-analysis methods. For methodology that is developed for an aggregated data meta-analysis, researchers often resort to simulation of the aggregated data directly, instead of simulating individual participant data from which the aggregated data would be calculated in reality. Clearly, distributional characteristics of the aggregated data statistics may be derived from distributional assumptions of the underlying individual data, but they are often not made explicit in publications. This article provides the distribution of the aggregated data statistics that were derived from a heteroscedastic mixed effects model for continuous individual data and a procedure for directly simulating the aggregated data statistics. We also compare our simulation approach with other simulation approaches used in literature. We describe their theoretical differences and conduct a simulation study for three meta-analysis methods: DerSimonian and Laird method for pooling aggregated study effect sizes and the Trim & Fill and precision-effect test and precision-effect estimate with standard errors method for adjustment of publication bias. We demonstrate that the choice of simulation model for aggregated data may have an impact on (the conclusions of) the performance of the meta-analysis method. We recommend the use of multiple aggregated data simulation models to investigate the sensitivity in the performance of the meta-analysis method. Additionally, we recommend that researchers try to make the individual participant data model explicit and derive from this model the distributional consequences of the aggregated statistics to help select appropriate aggregated data simulation models.
期刊介绍:
Statistical Methods in Medical Research is a peer reviewed scholarly journal and is the leading vehicle for articles in all the main areas of medical statistics and an essential reference for all medical statisticians. This unique journal is devoted solely to statistics and medicine and aims to keep professionals abreast of the many powerful statistical techniques now available to the medical profession. This journal is a member of the Committee on Publication Ethics (COPE)