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评估用于估计受试者工作特征(ROC)曲线下面积的方法。

An evaluation of methods for estimating the area under the receiver operating characteristic (ROC) curve.

作者信息

Centor R M, Schwartz J S

出版信息

Med Decis Making. 1985 Summer;5(2):149-56. doi: 10.1177/0272989X8500500204.

Abstract

The area under the receiver operating characteristic (ROC) curve serves as one means for evaluating the performance of diagnostic and predictive test systems. The most commonly used method for estimating the area under an ROC curve utilizes the maximum-likelihood-estimation technique, and a nonparametric method to calculate the area under an ROC curve was recently described. We compared the performance of these two methods. The results for the area under the ROC curve and the standard error of the estimate as calculated by each of the two methods exhibited high correlation. Generally, the nonparametric method yields lower area estimates than the maximum-likelihood-estimation technique. However, these differences generally were small, particularly with ROC curves derived from five or more cutoff points. Consistent results of hypothesis testing of the significance of differences between two ROC curves will be similar, regardless of which method is used, as long as one uses the same estimation technique on the two curves and as long as the two ROC curves being compared are of similar shape.

摘要

受试者工作特征(ROC)曲线下面积是评估诊断和预测测试系统性能的一种方法。估计ROC曲线下面积最常用的方法是利用最大似然估计技术,最近还描述了一种计算ROC曲线下面积的非参数方法。我们比较了这两种方法的性能。两种方法计算出的ROC曲线下面积结果和估计的标准误差显示出高度相关性。一般来说,非参数方法得出的面积估计值低于最大似然估计技术。然而,这些差异通常较小,特别是对于来自五个或更多切点的ROC曲线。只要在两条曲线上使用相同的估计技术,并且只要所比较的两条ROC曲线形状相似,无论使用哪种方法,对两条ROC曲线之间差异的显著性进行假设检验的一致结果都会相似。

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