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A random effects variance shift model for detecting and accommodating outliers in meta-analysis

机译:在荟萃分析中检测和适应异常值的随机效应方差转移模型

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Background Meta-analysis typically involves combining the estimates from independent studies in order to estimate a parameter of interest across a population of studies. However, outliers often occur even under the random effects model. The presence of such outliers could substantially alter the conclusions in a meta-analysis. This paper proposes a methodology for identifying and, if desired, downweighting studies that do not appear representative of the population they are thought to represent under the random effects model. Methods An outlier is taken as an observation (study result) with an inflated random effect variance. We used the likelihood ratio test statistic as an objective measure for determining whether observations have inflated variance and are therefore considered outliers. A parametric bootstrap procedure was used to obtain the sampling distribution of the likelihood ratio test statistics and to account for multiple testing. Our methods were applied to three illustrative and contrasting meta-analytic data sets. Results For the three meta-analytic data sets our methods gave robust inferences when the identified outliers were downweighted. Conclusions The proposed methodology provides a means to identify and, if desired, downweight outliers in meta-analysis. It does not eliminate them from the analysis however and we consider the proposed approach preferable to simply removing any or all apparently outlying results. We do not however propose that our methods in any way replace or diminish the standard random effects methodology that has proved so useful, rather they are helpful when used in conjunction with the random effects model.
机译:背景荟萃分析通常涉及合并独立研究的估计值,以便估计整个研究群体中感兴趣的参数。但是,即使在随机效应模型下,异常值也经常发生。这些异常值的存在可能会大大改变荟萃分析中的结论。本文提出了一种方法,用于识别和(如果需要的话)减重研究,这些研究似乎无法代表他们在随机效应模型下所代表的人群。方法采用离群值作为观察值(研究结果),随机效应方差增大。我们使用似然比检验统计量作为确定观察值是否具有夸大的方差并因此被认为是离群值的客观度量。使用参数自举程序来获得似然比检验统计量的抽样分布并考虑多次检验。我们的方法被应用于三个说明性和对比性的元分析数据集。结果对于这三个荟萃分析数据集,当确定的异常值被加权后,我们的方法给出了可靠的推断。结论所提出的方法学提供了一种方法,可以识别并在必要时减轻Meta分析中的异常值。但是,它并没有从分析中消除它们,并且我们认为所建议的方法比简单地删除任何或所有明显不正常的结果更好。但是,我们不建议我们的方法以任何方式替代或减少已证明非常有用的标准随机效应方法,而是将其与随机效应模型结合使用时会有所帮助。

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