Zhang Zheng, Huang Ying
Department of Biostatistics and Center for Statistical Sciences, Brown University, Providence, RI 02912, USA.
J Biom Biostat. 2012 Mar 23;3(2). doi: 10.4172/2155-6180.1000137.
The receiver operating characteristic (ROC) curve has been a popular statistical tool for characterizing the discriminating power of a classifier, such as a biomarker or an imaging modality for disease screening or diagnosis. It has been recognized that the accuracy of a given procedure may depend on some underlying factors, such as subject's demographic characteristics or disease risk factors, among others. Non-parametric- or parametric-based methods tend to be either inefficient or cumbersome when evaluating effect of multiple covariates is the main focus. Here we propose a semi-parametric linear regression framework to model covariate effect. It allows the estimation of sensitivity at given specificity to vary according to the covariates and provides a way to model the area under the ROC curve indirectly. Estimation procedure and asymptotic theory are presented. Extensive simulation studies have been conducted to investigate the validity of the proposed method. We illustrate the new method on a diagnostic test dataset.
接收器操作特征(ROC)曲线一直是一种流行的统计工具,用于表征分类器的判别能力,例如用于疾病筛查或诊断的生物标志物或成像方式。人们已经认识到,给定程序的准确性可能取决于一些潜在因素,例如受试者的人口统计学特征或疾病风险因素等。当主要关注评估多个协变量的影响时,基于非参数或参数的方法往往效率低下或繁琐。在此,我们提出一种半参数线性回归框架来对协变量效应进行建模。它允许在给定特异性下对灵敏度的估计根据协变量而变化,并提供一种间接对ROC曲线下面积进行建模的方法。给出了估计过程和渐近理论。进行了广泛的模拟研究以调查所提出方法的有效性。我们在一个诊断测试数据集上说明了这种新方法。