López-López José A, Page Matthew J, Lipsey Mark W, Higgins Julian P T
Department of Population Health Sciences, Bristol Medical School, University of Bristol, Bristol, UK.
School of Public Health and Preventive Medicine, Monash University, Melbourne, Victoria, Australia.
Res Synth Methods. 2018 Sep;9(3). doi: 10.1002/jrsm.1310. Epub 2018 Jul 3.
Systematic reviews often encounter primary studies that report multiple effect sizes based on data from the same participants. These have the potential to introduce statistical dependency into the meta-analytic data set. In this paper, we provide a tutorial on dealing with effect size multiplicity within studies in the context of meta-analyses of intervention and association studies, recommending a three-step approach. The first step is to define the research question and consider the extent to which it mainly reflects interest in mean effect sizes (which we term a convergent approach) or an interest in exploring heterogeneity (which we term a divergent approach). A second step is to identify the types of multiplicities that appear in the initial database of effect sizes relevant to the research question, and we propose a categorization scheme to differentiate them. The third step is to select a strategy for dealing with each type of multiplicity. The researcher can choose between a reductionist meta-analytic approach, which is characterized by inclusion of a single effect size per study, and an integrative approach, characterized by inclusion of multiple effect sizes per study. We present an overview of available analysis strategies for dealing with effect size multiplicity within studies and provide recommendations intended to help researchers decide which strategy might be preferable in particular situations. Last, we offer caveats and cautions about addressing the challenges multiplicity poses for systematic reviews and meta-analyses.
系统评价常常会遇到一些原始研究,这些研究基于同一组参与者的数据报告了多个效应量。这有可能将统计相关性引入到荟萃分析的数据集中。在本文中,我们提供了一个教程,介绍在干预研究和关联研究的荟萃分析背景下处理研究内效应量多重性的方法,推荐一种三步法。第一步是定义研究问题,并考虑它主要反映对平均效应量的关注程度(我们称之为收敛方法)还是对探索异质性的关注程度(我们称之为发散方法)。第二步是识别出与研究问题相关的效应量初始数据库中出现的多重性类型,我们提出了一种分类方案来区分它们。第三步是选择一种处理每种多重性类型的策略。研究者可以在一种简化主义的荟萃分析方法(其特点是每个研究只纳入一个效应量)和一种整合方法(其特点是每个研究纳入多个效应量)之间做出选择。我们概述了处理研究内效应量多重性的可用分析策略,并提供了一些建议,旨在帮助研究者决定在特定情况下哪种策略可能更可取。最后,我们对解决多重性给系统评价和荟萃分析带来的挑战提出了一些注意事项和警示。