Institute of Medical Statistics, Computer Sciences and Documentation, Jena University Hospital, Friedrich Schiller University Jena, Bachstraße 18, 07743 Jena, Germany.
Institute of Medical Statistics, Computer Sciences and Documentation, Jena University Hospital, Friedrich Schiller University Jena, Bachstraße 18, 07743 Jena, Germany.
J Clin Epidemiol. 2015 Jan;68(1):61-72. doi: 10.1016/j.jclinepi.2014.08.013. Epub 2014 Nov 1.
Bivariate linear and generalized linear random effects are frequently used to perform a diagnostic meta-analysis. The objective of this article was to apply a finite mixture model of bivariate normal distributions that can be used for the construction of componentwise summary receiver operating characteristic (sROC) curves.
Bivariate linear random effects and a bivariate finite mixture model are used. The latter model is developed as an extension of a univariate finite mixture model. Two examples, computed tomography (CT) angiography for ruling out coronary artery disease and procalcitonin as a diagnostic marker for sepsis, are used to estimate mean sensitivity and mean specificity and to construct sROC curves.
The suggested approach of a bivariate finite mixture model identifies two latent classes of diagnostic accuracy for the CT angiography example. Both classes show high sensitivity but mainly two different levels of specificity. For the procalcitonin example, this approach identifies three latent classes of diagnostic accuracy. Here, sensitivities and specificities are quite different as such that sensitivity increases with decreasing specificity. Additionally, the model is used to construct componentwise sROC curves and to classify individual studies.
The proposed method offers an alternative approach to model between-study heterogeneity in a diagnostic meta-analysis. Furthermore, it is possible to construct sROC curves even if a positive correlation between sensitivity and specificity is present.
双变量线性和广义线性随机效应常用于进行诊断性荟萃分析。本文的目的是应用双变量正态分布的有限混合模型,该模型可用于构建分量汇总受试者工作特征(sROC)曲线。
使用双变量线性随机效应和双变量有限混合模型。后者模型是对单变量有限混合模型的扩展。使用两个示例,即计算机断层扫描(CT)血管造影术排除冠状动脉疾病和降钙素作为脓毒症的诊断标志物,来估计平均灵敏度和平均特异性并构建 sROC 曲线。
建议的双变量有限混合模型方法确定了 CT 血管造影术示例的两个潜在诊断准确性类别。这两个类别均显示出较高的灵敏度,但主要是两种不同水平的特异性。对于降钙素示例,该方法确定了三种潜在的诊断准确性类别。在这里,灵敏度和特异性差异很大,随着特异性的降低,灵敏度增加。此外,该模型用于构建分量 sROC 曲线并对个别研究进行分类。
该方法为诊断性荟萃分析中研究间异质性的建模提供了另一种方法。此外,即使存在灵敏度和特异性之间的正相关,也可以构建 sROC 曲线。