Higgins Julian P T, Thompson Simon G, Spiegelhalter David J
Medical Research Council Biostatistics Unit Cambridge, UK.
J R Stat Soc Ser A Stat Soc. 2009 Jan;172(1):137-159. doi: 10.1111/j.1467-985X.2008.00552.x.
Meta-analysis in the presence of unexplained heterogeneity is frequently undertaken by using a random-effects model, in which the effects underlying different studies are assumed to be drawn from a normal distribution. Here we discuss the justification and interpretation of such models, by addressing in turn the aims of estimation, prediction and hypothesis testing. A particular issue that we consider is the distinction between inference on the mean of the random-effects distribution and inference on the whole distribution. We suggest that random-effects meta-analyses as currently conducted often fail to provide the key results, and we investigate the extent to which distribution-free, classical and Bayesian approaches can provide satisfactory methods. We conclude that the Bayesian approach has the advantage of naturally allowing for full uncertainty, especially for prediction. However, it is not without problems, including computational intensity and sensitivity to a priori judgements. We propose a simple prediction interval for classical meta-analysis and offer extensions to standard practice of Bayesian meta-analysis, making use of an example of studies of 'set shifting' ability in people with eating disorders.
在存在无法解释的异质性情况下,经常采用随机效应模型进行荟萃分析,其中假设不同研究背后的效应来自正态分布。在此,我们通过依次探讨估计、预测和假设检验的目标,来讨论此类模型的合理性和解释。我们考虑的一个特殊问题是对随机效应分布均值的推断与对整个分布的推断之间的区别。我们认为,当前进行的随机效应荟萃分析往往未能提供关键结果,并且我们研究了无分布、经典和贝叶斯方法在多大程度上能够提供令人满意的方法。我们得出结论,贝叶斯方法具有自然地考虑完全不确定性的优势,尤其是在预测方面。然而,它也并非没有问题,包括计算强度和对先验判断的敏感性。我们为经典荟萃分析提出了一个简单的预测区间,并对贝叶斯荟萃分析的标准做法进行了扩展,以饮食失调患者的“定势转换”能力研究为例进行说明。