论文标题

一个强大的贝叶斯COPAS选择模型,用于量化和纠正出版物偏见

A Robust Bayesian Copas Selection Model for Quantifying and Correcting Publication Bias

论文作者

Bai, Ray, Lin, Lifeng, Boland, Mary R., Chen, Yong

论文摘要

荟萃分析结论的有效性可能受到出版偏见的威胁。纠正出版物偏见的大多数现有程序都假定研究特定的研究效果的正态性,这些效应解释了研究中的异质性之间。但是,此假设可能无效,并且这些偏见校正程序的性能可能对偏离正态性的偏离非常敏感。此外,几乎没有措施根据选择模型来量化出版偏差的幅度。在本文中,我们解决了这两个问题。首先,我们探讨了在贝叶斯分层框架内使用重尾分布来进行特定研究效应的使用。偏差信息标准(DIC)用于确定用于进行最终分析的适当分布。其次,我们开发了一种新的措施,以量化基于Hellinger距离的出版物偏见的幅度。我们的措施易于解释,并利用后部分布自然提供的估计不确定性。我们通过对肺癌和抗抑郁药的荟萃分析说明了我们提出的方法。为了评估出版偏见的普遍性,我们将方法应用于系统评论的Cochrane数据库中的1500个二分法结果的荟萃分析。我们的方法是在公开可用的R软件包鲁棒bayesiancopas中实现的。

The validity of conclusions from meta-analysis is potentially threatened by publication bias. Most existing procedures for correcting publication bias assume normality of the study-specific effects that account for between-study heterogeneity. However, this assumption may not be valid, and the performance of these bias correction procedures can be highly sensitive to departures from normality. Further, there exist few measures to quantify the magnitude of publication bias based on selection models. In this paper, we address both of these issues. First, we explore the use of heavy-tailed distributions for the study-specific effects within a Bayesian hierarchical framework. The deviance information criterion (DIC) is used to determine the appropriate distribution to use for conducting the final analysis. Second, we develop a new measure to quantify the magnitude of publication bias based on Hellinger distance. Our measure is easy to interpret and takes advantage of the estimation uncertainty afforded naturally by the posterior distribution. We illustrate our proposed approach through simulation studies and meta-analyses on lung cancer and antidepressants. To assess the prevalence of publication bias, we apply our method to 1500 meta-analyses of dichotomous outcomes in the Cochrane Database of Systematic Reviews. Our methods are implemented in the publicly available R package RobustBayesianCopas.

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