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Meta-analysis of Diagnostic Accuracy and ROC Curves with Covariate Adjusted Semiparametric Mixtures

机译:使用协变量调整半参数混合物的诊断准确性和ROC曲线的荟萃分析

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摘要

Many screening tests dichotomize a measurement to classify subjects. Typically a cut-off value is chosen in a way that allows identification of an acceptable number of cases relative to a reference procedure, but does not produce too many false positives at the same time. Thus for the same sample many pairs of sensitivities and false positive rates result as the cut-off is varied. The curve of these points is called the receiver operating characteristic (ROC) curve. One goal of diagnostic meta-analysis is to integrate ROC curves and arrive at a summary ROC (SROC) curve. Holling, Bohning, and Bohning (Psychometrika 77:106-126, 2012a) demonstrated that finite semiparametric mixtures can describe the heterogeneity in a sample of Lehmann ROC curves well; this approach leads to clusters of SROC curves of a particular shape. We extend this work with the help of the transformation, a flexible family of transformations for proportions. A collection of SROC curves is constructed that approximately contains the Lehmann family but in addition allows the modeling of shapes beyond the Lehmann ROC curves. We introduce two rationales for determining the shape from the data. Using the fact that each curve corresponds to a natural univariate measure of diagnostic accuracy, we show how covariate adjusted mixtures lead to a meta-regression on SROC curves. Three worked examples illustrate the method.
机译:许多筛选测试将测量结果分为两类,以对受试者进行分类。通常,以允许识别相对于参考程序的可接受数量的病例的方式选择截止值,但是不会同时产生太多的假阳性。因此,对于相同的样品,随着临界值的变化,会导致许多对灵敏度和假阳性率。这些点的曲线称为接收器工作特性(ROC)曲线。诊断性荟萃分析的一个目标是整合ROC曲线并得出汇总的ROC(SROC)曲线。 Holling,Bohning和Bohning(Psychometrika 77:106-126,2012a)证明,有限的半参数混合物可以很好地描述Lehmann ROC曲线样本中的异质性。这种方法导致了特定形状的SROC曲线簇。我们在转换的帮助下扩展了这项工作,转换是按比例缩放的灵活转换系列。构建了大约包含Lehmann系列的SROC曲线集合,此外还允许对超出Lehmann ROC曲线的形状进行建模。我们介绍了两种根据数据确定形状的原理。利用每个曲线对应于诊断准确性的自然单变量度量这一事实,我们显示了协变量调整后的混合物如何导致SROC曲线的元回归。三个工作示例说明了该方法。

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