He Xin, Metz Charles E, Tsui Benjamin M W, Links Jonathan M, Frey Eric C
Department of Radiology, Johns Hopkins School of Medicine, Baltimore, MD 21287, USA.
IEEE Trans Med Imaging. 2006 May;25(5):571-81. doi: 10.1109/tmi.2006.871416.
Receiver operating characteristic (ROC) analysis is well established in the evaluation of systems involving binary classification tasks. However, medical tests often require distinguishing among more than two diagnostic alternatives. The goal of this work was to develop an ROC analysis method for three-class classification tasks. Based on decision theory, we developed a method for three-class ROC analysis. In this method, the objects were classified by making the decision that provided the maximal utility relative to the other two. By making assumptions about the magnitudes of the relative utilities of incorrect decisions, we found a decision model that maximized the expected utility of the decisions when using log-likelihood ratios as decision variables. This decision model consists of a two-dimensional decision plane with log likelihood ratios as the axes and a decision structure that separates the plane into three regions. Moving the decision structure over the decision plane, which corresponds to moving the decision threshold in two-class ROC analysis, and computing the true class 1, 2, and 3 fractions defined a three-class ROC surface. We have shown that the resulting three-class ROC surface shares many features with the two-class ROC curve; i.e., using the log likelihood ratios as the decision variables results in maximal expected utility of the decisions, and the optimal operating point for a given diagnostic setting (set of relative utilities and disease prevalences) lies on the surface. The volume under the three-class surface (VUS) serves as a figure-of-merit to evaluate different data acquisition systems or image processing and reconstruction methods when the assumed utility constraints are relevant.
在涉及二分类任务的系统评估中,接收器操作特征(ROC)分析已得到广泛应用。然而,医学检验常常需要区分两种以上的诊断结果。本研究的目的是开发一种用于三分类任务的ROC分析方法。基于决策理论,我们开发了一种三分类ROC分析方法。在该方法中,通过做出相对于其他两种决策具有最大效用的决策来对对象进行分类。通过对错误决策的相对效用大小做出假设,我们找到了一种决策模型,当使用对数似然比作为决策变量时,该模型能使决策的期望效用最大化。这个决策模型由一个以对数似然比为轴的二维决策平面和一个将平面划分为三个区域的决策结构组成。在决策平面上移动决策结构(这对应于在二分类ROC分析中移动决策阈值),并计算真实的1类、2类和3类比例,从而定义了一个三分类ROC曲面。我们已经表明,所得的三分类ROC曲面与二分类ROC曲线具有许多共同特征;即,使用对数似然比作为决策变量会导致决策的期望效用最大化,并且对于给定的诊断设置(相对效用和疾病患病率的集合),最优操作点位于曲面上。当假设的效用约束相关时,三分类曲面下的体积(VUS)可作为一个品质因数,用于评估不同的数据采集系统或图像处理与重建方法。