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Meta‐analysis using individual participant data: one‐stage and two‐stage approaches and why they may differ

机译:使用个体参与者数据进行荟萃分析:一阶段和两阶段方法以及它们为何可能不同的原因

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摘要

Meta‐analysis using individual participant data (IPD) obtains and synthesises the raw, participant‐level data from a set of relevant studies. The IPD approach is becoming an increasingly popular tool as an alternative to traditional aggregate data meta‐analysis, especially as it avoids reliance on published results and provides an opportunity to investigate individual‐level interactions, such as treatment‐effect modifiers. There are two statistical approaches for conducting an IPD meta‐analysis: one‐stage and two‐stage. The one‐stage approach analyses the IPD from all studies simultaneously, for example, in a hierarchical regression model with random effects. The two‐stage approach derives aggregate data (such as effect estimates) in each study separately and then combines these in a traditional meta‐analysis model. There have been numerous comparisons of the one‐stage and two‐stage approaches via theoretical consideration, simulation and empirical examples, yet there remains confusion regarding when each approach should be adopted, and indeed why they may differ.In this tutorial paper, we outline the key statistical methods for one‐stage and two‐stage IPD meta‐analyses, and provide 10 key reasons why they may produce different summary results. We explain that most differences arise because of different modelling assumptions, rather than the choice of one‐stage or two‐stage itself. We illustrate the concepts with recently published IPD meta‐analyses, summarise key statistical software and provide recommendations for future IPD meta‐analyses. © 2016 The Authors. Statistics in Medicine published by John Wiley & Sons Ltd.
机译:使用单个参与者数据(IPD)进行的荟萃分析可从一组相关研究中获得并综合原始的参与者级别数据。 IPD方法已成为一种日益流行的工具,可以代替传统的汇总数据元分析,尤其是因为它避免了对已发布结果的依赖,并提供了研究个体水平相互作用的机会,例如治疗效果修饰剂。进行IPD元分析的统计方法有两种:一阶段和两阶段。一步法同时分析所有研究的IPD,例如,在具有随机效应的分层回归模型中。分两阶段进行的方法是分别得出每个研究中的汇总数据(例如效果估算值),然后将其合并到传统的荟萃分析模型中。通过理论考虑,模拟和经验示例对一阶段方法和两阶段方法进行了大量比较,但对于何时应采用每种方法以及为什么它们可能有所不同仍然存在困惑。在本教程中,我们概述了一阶段和两阶段IPD荟萃分析的关键统计方法,并提供了它们可能产生不同汇总结果的10个关键原因。我们解释说,大多数差异是由不同的建模假设引起的,而不是一阶段或两阶段本身的选择。我们用最近发布的IPD荟萃分析说明了这些概念,总结了关键的统计软件,并为以后的IPD荟萃分析提供了建议。 ©2016作者。 John Wiley&Sons Ltd.出版的《医学统计学》。

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