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Meta-analysis of full ROC curves using bivariate time-to-event models for interval-censored data

机译:使用双变量时间事件模型对间隔检查的数据进行完整ROC曲线的荟萃分析

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摘要

Systematic reviews and meta-analyses are the cornerstones of evidence-based medicine and inform treatment, diagnosis, or prevention of individual patients as well as policy decisions in health care. Statistical methods for the meta-analysis of intervention studies are well established today. Meta-analysis for diagnostic accuracy trials has also been a vivid research area in recent years, which is especially due to the increased complexity of their bivariate outcome of sensitivity and specificity. The situation is even more challenging when single studies report a full ROC curve with several pairs of sensitivity and specificity, each pair for a different threshold. Researchers frequently ignore this information and use only 1 pair of sensitivity and specificity from each study to arrive at meta-analytic estimates. Although methods to deal with the full information have been proposed, they have some disadvantages, eg, the numbers or values of thresholds have to be identical across studies, or the precise values of thresholds are ignored. We propose an approach for the meta-analysis of full ROC curves including the information from all thresholds by using bivariate time-to-event models for interval-censored data with random effects. This approach avoids the problems of previous methods and comes with the additional advantage that it allows for various distributions of the underlying continuous test values. The results from a small simulation study are given, which show that the approach works well in practice. Furthermore, we illustrate our new model using an example based on the population-based screening for type 2 diabetes mellitus.
机译:系统的审查和荟萃分析是循证医学的基础,可为个别患者提供治疗,诊断或预防以及医疗保健政策决策的依据。如今,用于干预研究的荟萃分析的统计方法已经很成熟。近年来,用于诊断准确性试验的荟萃分析也是一个活跃的研究领域,这尤其是由于其敏感性和特异性的双变量结果的复杂性增加。当单个研究报告一条完整的ROC曲线,并具有几对敏感性和特异性时,每一对代表不同的阈值,情况就更具挑战性。研究人员经常忽略此信息,并且仅使用每项研究中的一对敏感性和特异性来进行荟萃分析估计。尽管已经提出了处理全部信息的方法,但是它们具有一些缺点,例如,跨研究的阈值的数量或值必须相同,或者忽略阈值的精确值。我们提出了一种用于全ROC曲线的荟萃分析的方法,其中包括使用双变量时间到事件模型对具有随机效应的区间删节数据进行全ROC曲线的分析,包括来自所有阈值的信息。这种方法避免了先前方法的问题,并具有额外的优点,即允许基础连续测试值的各种分布。给出了一个小型仿真研究的结果,表明该方法在实践中效果很好。此外,我们以基于人群的2型糖尿病筛查为例,说明了我们的新模型。

著录项

  • 来源
    《Research Synthesis Methods》 |2018年第1期|62-72|共11页
  • 作者单位

    German Diabetes Center, Leibniz Institute for Diabetes Research at Heinrich Heine University Diisseldorf Institute for Biometry and Epidemiology, Germany;

    ClinStat Koln, Germany;

    German Diabetes Center, Leibniz Institute for Diabetes Research at Heinrich Heine University Diisseldorf Institute for Biometry and Epidemiology, Germany;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    interval-censored data; meta-analysis; ROC curve; time-to-event model;

    机译:间隔检查的数据;荟萃分析ROC曲线时间到事件模型;

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