Great Ormond Street Institute of Child Health, UCL, London, UK.
Centre for Health Informatics, Institute of Population Health, University of Manchester, Manchester, UK.
Res Synth Methods. 2019 Mar;10(1):83-98. doi: 10.1002/jrsm.1316. Epub 2018 Sep 6.
Studies combined in a meta-analysis often have differences in their design and conduct that can lead to heterogeneous results. A random-effects model accounts for these differences in the underlying study effects, which includes a heterogeneity variance parameter. The DerSimonian-Laird method is often used to estimate the heterogeneity variance, but simulation studies have found the method can be biased and other methods are available. This paper compares the properties of nine different heterogeneity variance estimators using simulated meta-analysis data. Simulated scenarios include studies of equal size and of moderate and large differences in size. Results confirm that the DerSimonian-Laird estimator is negatively biased in scenarios with small studies and in scenarios with a rare binary outcome. Results also show the Paule-Mandel method has considerable positive bias in meta-analyses with large differences in study size. We recommend the method of restricted maximum likelihood (REML) to estimate the heterogeneity variance over other methods. However, considering that meta-analyses of health studies typically contain few studies, the heterogeneity variance estimate should not be used as a reliable gauge for the extent of heterogeneity in a meta-analysis. The estimated summary effect of the meta-analysis and its confidence interval derived from the Hartung-Knapp-Sidik-Jonkman method are more robust to changes in the heterogeneity variance estimate and show minimal deviation from the nominal coverage of 95% under most of our simulated scenarios.
在元分析中合并的研究通常在设计和实施方面存在差异,这些差异可能导致结果存在异质性。随机效应模型可以解释这些基础研究效果的差异,其中包括异质性方差参数。DerSimonian-Laird 方法常用于估计异质性方差,但模拟研究发现该方法可能存在偏差,并且还有其他方法可用。本文使用模拟元分析数据比较了九种不同异质性方差估计量的特性。模拟情景包括研究规模相等以及研究规模存在中等和较大差异的情景。结果证实,在小研究和罕见二分类结局的情况下,DerSimonian-Laird 估计量存在负偏倚。结果还表明,在研究规模差异较大的元分析中,Paule-Mandel 方法存在相当大的正偏倚。与其他方法相比,我们建议使用受限最大似然(REML)方法来估计异质性方差。然而,考虑到健康研究的元分析通常包含较少的研究,因此不应该将异质性方差估计值用作元分析中异质性程度的可靠指标。基于 Hartung-Knapp-Sidik-Jonkman 方法的元分析估计汇总效应及其置信区间对异质性方差估计值的变化更稳健,在大多数模拟情景下,其偏差最小,与名义覆盖率 95%相差不大。