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随机效应荟萃分析中的临床异质性:研究间边界估计问题。

Clinical heterogeneity in random-effect meta-analysis: Between-study boundary estimate problem.

作者信息

Yoneoka Daisuke, Henmi Masayuki

机构信息

Graduate School of Medicine, University of Tokyo, Tokyo, Japan.

The Institute of Statistical Mathematics, Tokyo, Japan.

出版信息

Stat Med. 2019 Sep 20;38(21):4131-4145. doi: 10.1002/sim.8289. Epub 2019 Jul 8.

Abstract

Random-effect meta-analysis is commonly applied to estimate overall effects with unexplained heterogeneity across studies. However, standard methods, including (restricted) maximum likelihood (ML or REML), frequently produce (near) zero estimates for between-study variance parameters. Consequently, these methods are reduced to simple and unrealistic fixed-effect models, resulting in an ignorance of the substantial clinical heterogeneity and sometimes leading to incorrect conclusions. To solve the boundary estimate problem, we propose (1) an adjusted maximum likelihood method for the between-study variance that maximizes a likelihood defined as a product of a standard likelihood and a Gaussian class of adjustment factor and (2) a framework using sensitivity analysis by developing a new criterion to check for the occurrence of the boundary estimate. Although the adjustment introduces bias to the overall effects to ensure strictly positive estimates of the between-study variance when the number of studies K is small, the bias asymptotically approaches zero, resulting in the same estimates derived from the REML method. Moreover, the adjusted maximum likelihood estimator of the between-study variance is consistent for large K, and interestingly, the REML method and our method are equivalent in terms of mean squared error criterion, up to O(K ). We illustrate our approach with a motivating example to examine the controversial result of a meta-analysis for 24 randomized controlled trials of human albumin. Numerical evaluations show that our approach produces no boundary estimates but similar synthesized results with the standard maximum likelihood methods as those produced by conventional methods, especially with a small number of studies.

摘要

随机效应荟萃分析通常用于估计研究间存在无法解释的异质性时的总体效应。然而,包括(受限)最大似然法(ML或REML)在内的标准方法,经常会对研究间方差参数产生(接近)零估计。因此,这些方法退化为简单且不切实际的固定效应模型,从而忽略了实质性的临床异质性,有时会导致错误的结论。为了解决边界估计问题,我们提出:(1)一种针对研究间方差的调整最大似然法,该方法最大化一个定义为标准似然与高斯类调整因子之积的似然;(2)一个通过开发新的标准来检查边界估计是否发生的敏感性分析框架。尽管当研究数量K较小时,这种调整会给总体效应带来偏差,以确保对研究间方差有严格为正的估计,但该偏差会渐近地趋近于零,从而得到与REML方法相同的估计值。此外,对于较大的K,研究间方差的调整最大似然估计量是一致的,有趣的是,就均方误差准则而言,REML方法和我们的方法在O(K)范围内是等效的。我们用一个激励性的例子来说明我们的方法,以检验一项针对24项人白蛋白随机对照试验的荟萃分析的有争议结果。数值评估表明,我们的方法不会产生边界估计,但与标准最大似然方法相比,能产生与传统方法类似的综合结果,尤其是在研究数量较少时。

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