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首页> 外文期刊>Journal of Clinical Epidemiology >An empirical comparison of methods for meta-analysis of diagnostic accuracy showed hierarchical models are necessary.
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An empirical comparison of methods for meta-analysis of diagnostic accuracy showed hierarchical models are necessary.

机译:对诊断准确性进行荟萃分析的方法的经验比较表明,层次模型是必要的。

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OBJECTIVE: Meta-analysis of studies of the accuracy of diagnostic tests currently uses a variety of methods. Statistically rigorous hierarchical models require expertise and sophisticated software. We assessed whether any of the simpler methods can in practice give adequately accurate and reliable results. STUDY DESIGN AND SETTING: We reviewed six methods for meta-analysis of diagnostic accuracy: four simple commonly used methods (simple pooling, separate random-effects meta-analyses of sensitivity and specificity, separate meta-analyses of positive and negative likelihood ratios, and the Littenberg-Moses summary receiver operating characteristic [ROC] curve) and two more statistically rigorous approaches using hierarchical models (bivariate random-effects meta-analysis and hierarchical summary ROC curve analysis). We applied the methods to data from a sample of eight systematic reviews chosen to illustrate a variety of patterns of results. RESULTS: In each meta-analysis, there was substantial heterogeneity between the results of different studies. Simple pooling of results gave misleading summary estimates of sensitivity and specificity in some meta-analyses, and the Littenberg-Moses method produced summary ROC curves that diverged from those produced by more rigorous methods in some situations. CONCLUSION: The closely related hierarchical summary ROC curve or bivariate models should be used as the standard method for meta-analysis of diagnostic accuracy.
机译:目的:对诊断测试准确性研究的荟萃分析目前使用多种方法。统计严格的层次模型需要专业知识和完善的软件。我们评估了任何简单的方法在实践中是否都能给出足够准确和可靠的结果。研究设计与设置:我们审查了六种用于诊断准确性的荟萃分析的方法:四种简单常用的方法(简单合并,敏感性和特异性的单独随机效应荟萃分析,正负似然比的单独荟萃分析以及Littenberg-Moses摘要接收器操作特性[ROC]曲线)和两种其他使用层次模型(双变量随机效应荟萃分析和层次摘要ROC曲线分析)的统计严格方法。我们将这些方法应用于来自八个系统评价样本的数据,这些样本被选择来说明各种结果模式。结果:在每个荟萃分析中,不同研究的结果之间存在很大的异质性。简单的结果汇总在某些荟萃分析中给出了敏感性和特异性的误导性汇总估计,Littenberg-Moses方法生成的ROC汇总曲线在某些情况下与通过更严格的方法生成的摘要有所不同。结论:密切相关的分层汇总ROC曲线或双变量模型应作为诊断准确性的荟萃分析的标准方法。

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