DeLong E R, DeLong D M, Clarke-Pearson D L
Quintiles, Inc., Chapel Hill, North Carolina 27514.
Biometrics. 1988 Sep;44(3):837-45.
Methods of evaluating and comparing the performance of diagnostic tests are of increasing importance as new tests are developed and marketed. When a test is based on an observed variable that lies on a continuous or graded scale, an assessment of the overall value of the test can be made through the use of a receiver operating characteristic (ROC) curve. The curve is constructed by varying the cutpoint used to determine which values of the observed variable will be considered abnormal and then plotting the resulting sensitivities against the corresponding false positive rates. When two or more empirical curves are constructed based on tests performed on the same individuals, statistical analysis on differences between curves must take into account the correlated nature of the data. This paper presents a nonparametric approach to the analysis of areas under correlated ROC curves, by using the theory on generalized U-statistics to generate an estimated covariance matrix.
随着新的诊断测试不断开发和上市,评估和比较诊断测试性能的方法变得越来越重要。当一项测试基于一个处于连续或分级尺度上的观测变量时,可以通过使用接收者操作特征(ROC)曲线来评估该测试的整体价值。通过改变用于确定观测变量的哪些值将被视为异常的切点,然后将所得的灵敏度与相应的假阳性率进行绘图,从而构建该曲线。当基于对同一组个体进行的测试构建两条或更多条经验曲线时,对曲线之间差异的统计分析必须考虑数据的相关性。本文提出了一种非参数方法,用于分析相关ROC曲线下的面积,即利用广义U统计量理论生成估计的协方差矩阵。