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Easy and accurate variance estimation of the nonparametric estimator of the partial area under the ROC curve and its application

机译:ROC曲线下局部区域非参数估计量的简便准确方差估计及其应用

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摘要

The receiver operating characteristic (ROC) curve is a popular technique with applications, for example, investigating an accuracy of a biomarker to delineate between disease and non-disease groups. A common measure of accuracy of a given diagnostic marker is the area under the ROC curve (AUC). In contrast with the AUC, the partial area under the ROC curve (pAUC) looks into the area with certain specificities (i.e., true negative rate) only, and it can be often clinically more relevant than examining the entire ROC curve. The pAUC is commonly estimated based on a U-statistic with the plug-in sample quantile, making the estimator a non-traditional U-statistic. In this article, we propose an accurate and easy method to obtain the variance of the nonparametric pAUC estimator. The proposed method is easy to implement for both one biomarker test and the comparison of two correlated biomarkers because it simply adapts the existing variance estimator of U-statistics. In this article, we show accuracy and other advantages of the proposed variance estimation method by broadly comparing it with previously existing methods. Further, we develop an empirical likelihood inference method based on the proposed variance estimator through a simple implementation. In an application, we demonstrate that, depending on the inferences by either the AUC or pAUC, we can make a different decision on a prognostic ability of a same set of biomarkers. Copyright (c) 2016 John Wiley & Sons, Ltd.
机译:接收器工作特性(ROC)曲线是一种流行的技术,例如,它用于研究生物标志物在疾病和非疾病人群之间划定界限的准确性。给定诊断标记的准确性的常用度量是ROC曲线(AUC)下的面积。与AUC相比,ROC曲线(pAUC)下的部分区域仅以特定的特征(即真正的阴性率)进入该区域,并且在临床上通常比检查整个ROC曲线更相关。通常基于带有插入样本分位数的U统计量来估计pAUC,从而使估计量成为非传统的U统计量。在本文中,我们提出了一种准确而简便的方法来获得非参数pAUC估计量的方差。所提出的方法对于一种生物标志物测试和两种相关生物标志物的比较均易于实施,因为它仅适应了现有的U统计量方差估计量。在本文中,我们通过广泛地将其与以前存在的方法进行比较,来展示所提出的方差估计方法的准确性和其他优点。此外,我们通过简单的实现方法,基于提出的方差估计量,开发了一种经验似然推断方法。在一个应用中,我们证明,根据AUC或pAUC的推论,我们可以对同一套生物标志物的预后能力做出不同的决定。版权所有(c)2016 John Wiley&Sons,Ltd.

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