估计meta分析中的平均效应大小:不同加权方法的偏倚、精度和均方误差。

Wim Van Den Noortgate, Patrick Onghena
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引用次数: 39

摘要

虽然在元分析中使用标准化平均差异有几个原因,但也有一些缺点。在本文中,我们关注以下问题:观察到的效应大小的精度加权平均值导致对平均标准化平均差的有偏估计。这种偏差是由于给予观察到的效应量的权重取决于观察到的效应量。为了消除偏差,Hedges和Olkin(1985)提出使用平均效应大小估计来计算权重。在本文中,我们提出了计算权重的第三种选择:使用效应大小的经验贝叶斯估计。在仿真研究中,对这三种方法进行了比较。均方误差(MSE)被用作评估平均效应大小的结果估计的标准。对于具有少量研究的元分析数据集,当使用普通程序时,MSE通常是最小的,而对于中等或大量的研究,产生最佳结果的程序分别是经验贝叶斯程序和赫奇斯和奥尔金程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating the mean effect size in meta-analysis: bias, precision, and mean squared error of different weighting methods.

Although use of the standardized mean difference in meta-analysis is appealing for several reasons, there are some drawbacks. In this article, we focus on the following problem: that a precision-weighted mean of the observed effect sizes results in a biased estimate of the mean standardized mean difference. This bias is due to the fact that the weight given to an observed effect size depends on this observed effect size. In order to eliminate the bias, Hedges and Olkin (1985) proposed using the mean effect size estimate to calculate the weights. In the article, we propose a third alternative for calculating the weights: using empirical Bayes estimates of the effect sizes. In a simulation study, these three approaches are compared. The mean squared error (MSE) is used as the criterion by which to evaluate the resulting estimates of the mean effect size. For a meta-analytic dataset with a small number of studies, the MSE is usually smallest when the ordinary procedure is used, whereas for a moderate or large number of studies, the procedures yielding the best results are the empirical Bayes procedure and the procedure of Hedges and Olkin, respectively.

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