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An alternative pseudolikelihood method for multivariate random-effects meta-analysis

机译:多元随机效应荟萃分析的另一种拟似然法

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摘要

Recently, multivariate random-effects meta-analysis models have received a great deal of attention, despite its greater complexity compared to univariate meta-analyses. One of its advantages is its ability to account for the within-study and between-study correlations. However, the standard inference procedures, such as the maximum likelihood or maximum restricted likelihood inference, require the within-study correlations, which are usually unavailable. In addition, the standard inference procedures suffer from the problem of singular estimated covariance matrix. In this paper, we propose a pseudolikelihood method to overcome the aforementioned problems. The pseudolikelihood method does not require within-study correlations and is not prone to singular covariance matrix problem. In addition, it can properly estimate the covariance between pooled estimates for different outcomes, which enables valid inference on functions of pooled estimates, and can be applied to meta-analysis where some studies have outcomes missing completely at random. Simulation studies show that the pseudolikelihood method provides unbiased estimates for functions of pooled estimates, well-estimated standard errors, and confidence intervals with good coverage probability. Furthermore, the pseudolikelihood method is found to maintain high relative efficiency compared to that of the standard inferences with known within-study correlations. We illustrate the proposed method through three meta-analyses for comparison of prostate cancer treatment, for the association between paraoxonase 1 activities and coronary heart disease, and for the association between homocysteine level and coronary heart disease. (c) 2014 The Authors. Statistics in Medicine Published by John Wiley & Sons Ltd.
机译:近来,尽管与单变量荟萃分析相比,多元随机效应荟萃分析模型的复杂性更高,但它已引起了广泛关注。它的优点之一是能够考虑研究内部和研究之间的相关性。但是,诸如最大似然性或最大受限似然性推断之类的标准推断程序需要研究内相关性,这通常是不可用的。此外,标准推理过程还存在奇异估计协方差矩阵的问题。在本文中,我们提出了一种伪似然方法来克服上述问题。伪似然法不需要研究内相关,也不容易出现奇异协方差矩阵问题。此外,它可以正确估计不同结果的合并估计之间的协方差,从而可以有效推断合并估计的功能,并且可以应用于一些研究完全失去随机结果的荟萃分析。仿真研究表明,伪似然法为合并估计的函数,估计好的标准误以及具有良好覆盖概率的置信区间提供了无偏估计。此外,发现伪似然方法与具有已知研究内相关性的标准推理相比,具有较高的相对效率。我们通过三个荟萃分析说明了所提出的方法,用于比较前列腺癌的治疗,对氧磷酶1活性与冠心病之间的关联以及同型半胱氨酸水平与冠心病之间的关联。 (c)2014作者。 John Wiley&Sons Ltd.发布的医学统计资料。

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