Tosteson A N, Weinstein M C, Wittenberg J, Begg C B
Department of Medicine and Community and Family Medicine, Dartmouth Medical School, Hanover, New Hampshire 03756.
Environ Health Perspect. 1994 Nov;102 Suppl 8(Suppl 8):73-8. doi: 10.1289/ehp.94102s873.
Diagnostic tests commonly are characterized by their true positive (sensitivity) and true negative (specificity) classification rates, which rely on a single decision threshold to classify a test result as positive. A more complete description of test accuracy is given by the receiver operating characteristic (ROC) curve, a graph of the false positive and true positive rates obtained as the decision threshold is varied. A generalized regression methodology, which uses a class of ordinal regression models to estimate smoothed ROC curves has been described. Data from a multi-institutional study comparing the accuracy of magnetic resonance (MR) imaging with computed tomography (CT) in detecting liver metastases, which are ideally suited for ROC regression analysis, are described. The general regression model is introduced and an estimate for the area under the ROC curve and its standard error using parameters of the ordinal regression model is given. An analysis of the liver data that highlights the utility of the methodology in parsimoniously adjusting comparisons for covariates is presented.
诊断测试通常以其真阳性(敏感性)和真阴性(特异性)分类率为特征,这依赖于单个决策阈值将测试结果分类为阳性。接收器操作特征(ROC)曲线给出了对测试准确性更完整的描述,它是当决策阈值变化时获得的假阳性率和真阳性率的曲线图。已经描述了一种广义回归方法,该方法使用一类有序回归模型来估计平滑的ROC曲线。描述了一项多机构研究的数据,该研究比较了磁共振(MR)成像与计算机断层扫描(CT)在检测肝转移方面的准确性,这些数据非常适合ROC回归分析。介绍了一般回归模型,并给出了使用有序回归模型参数对ROC曲线下面积及其标准误差的估计。还给出了对肝脏数据的分析,突出了该方法在简约地调整协变量比较方面的效用。