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Statistical properties of methods based on the Q‐statistic for constructing a confidence interval for the between‐study variance in meta‐analysis

机译:基于Q统计量的方法的统计性质用于建立荟萃分析中研究之间方差的置信区间

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摘要

The effect sizes of studies included in a meta‐analysis do often not share a common true effect size due to differences in for instance the design of the studies. Estimates of this so‐called between‐study variance are usually imprecise. Hence, reporting a confidence interval together with a point estimate of the amount of between‐study variance facilitates interpretation of the meta‐analytic results. Two methods that are recommended to be used for creating such a confidence interval are the Q‐profile and generalized Q‐statistic method that both make use of the Q‐statistic. These methods are exact if the assumptions underlying the random‐effects model hold, but these assumptions are usually violated in practice such that confidence intervals of the methods are approximate rather than exact confidence intervals. We illustrate by means of two Monte‐Carlo simulation studies with odds ratio as effect size measure that coverage probabilities of both methods can be substantially below the nominal coverage rate in situations that are representative for meta‐analyses in practice. We also show that these too low coverage probabilities are caused by violations of the assumptions of the random‐effects model (ie, normal sampling distributions of the effect size measure and known sampling variances) and are especially prevalent if the sample sizes in the primary studies are small.
机译:由于研究设计等方面的差异,荟萃分析中包括的研究的效应量通常不具有相同的真实效应量。通常,这种所谓的“研究间差异”的估计是不精确的。因此,报告置信区间以及研究之间方差量的点估计值有助于对荟萃分析结果进行解释。建议使用两种方法来创建这样的置信区间,即Q轮廓和广义Q统计方法,它们都使用Q统计。如果基于随机效应模型的假设成立,则这些方法是准确的,但在实践中通常会违反这些假设,因此方法的置信区间为近似值,而不是确切的置信区间。我们通过两个以比值比作为影响大小度量的蒙特卡罗模拟研究来说明,在代表了实际荟萃分析的情况下,两种方法的覆盖率都可能大大低于标称覆盖率。我们还表明,覆盖率太低是由于违反随机效应模型的假设(即,效应量度的正态抽样分布和已知抽样方差)引起的,如果在初级研究中样本量较大,则尤其普遍很小。

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