在比较生理学中解释“讨厌的异质性”的元分析方法和效应大小。

D. Noble, Patrice Pottier, M. Lagisz, Samantha Burke, S. Drobniak, R. E. O’Dea, S Nakagawa
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引用次数: 13

摘要

荟萃分析是一种强大的工具,用于产生定量的知情答案,以应对紧迫的全球挑战。通过从广泛的研究设计和研究系统中提取数据,形成标准化的效应大小,荟萃分析为生理学家提供了估计总体效应大小和理解效应变异性驱动因素的机会。尽管有这样的雄心壮志,比较生理学领域的研究设计在一开始可能会因为“令人讨厌的异质性”(例如,不同研究中使用的不同温度或处理剂量)而出现巨大的差异。研究方法上的差异导致许多人认为元分析是一种比较“苹果和橘子”的练习。在这里,我们通过展示如何将标准化效应大小与多水平元回归模型结合使用来消除这个神话,从而解释导致研究差异的因素,并使它们更具可比性。我们评估了比较生理学文献中讨厌的异质性的普遍性-表明它是常见的,但在分析中往往没有考虑到。然后,我们将效应大小测量(例如温度系数,Q10)形式化,为比较生理学家提供了一种消除讨厌的异质性的方法,而不需要求助于可能更难解释的更复杂的统计模型。我们还描述了可以应用于各种不同背景的更一般的方法,以获得新的效应大小和抽样方差,为定量综合开辟了新的可能性。通过使用效应量来解释效应异质性的组成部分,结合现有的元分析模型,比较生理学家可以探索令人兴奋的新问题,同时使大规模数据集的结果更易于获取、比较和广泛解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Meta-analytic approaches and effect sizes to account for 'nuisance heterogeneity' in comparative physiology.
Meta-analysis is a powerful tool used to generate quantitatively informed answers to pressing global challenges. By distilling data from broad sets of research designs and study systems into standardised effect sizes, meta-analyses provide physiologists with opportunities to estimate overall effect sizes and understand the drivers of effect variability. Despite this ambition, research designs in the field of comparative physiology can appear, at the outset, as being vastly different to each other because of 'nuisance heterogeneity' (e.g. different temperatures or treatment dosages used across studies). Methodological differences across studies have led many to believe that meta-analysis is an exercise in comparing 'apples with oranges'. Here, we dispel this myth by showing how standardised effect sizes can be used in conjunction with multilevel meta-regression models to both account for the factors driving differences across studies and make them more comparable. We assess the prevalence of nuisance heterogeneity in the comparative physiology literature - showing it is common and often not accounted for in analyses. We then formalise effect size measures (e.g. the temperature coefficient, Q10) that provide comparative physiologists with a means to remove nuisance heterogeneity without the need to resort to more complex statistical models that may be harder to interpret. We also describe more general approaches that can be applied to a variety of different contexts to derive new effect sizes and sampling variances, opening up new possibilities for quantitative synthesis. By using effect sizes that account for components of effect heterogeneity, in combination with existing meta-analytic models, comparative physiologists can explore exciting new questions while making results from large-scale data sets more accessible, comparable and widely interpretable.
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