Sahiner Berkman, Chan Heang-Ping, Hadjiiski Lubomir M
Department of Radiology, University of Michigan, Ann Arbor, MI 48109, USA.
IEEE Trans Med Imaging. 2008 Feb;27(2):215-27. doi: 10.1109/TMI.2007.905822.
Classification of a given observation to one of three classes is an important task in many decision processes or pattern recognition applications. A general analysis of the performance of three-class classifiers results in a complex 6-D receiver operating characteristic (ROC) space, for which no simple analytical tool exists at present. We investigate the performance of an ideal observer under a specific set of assumptions that reduces the 6-D ROC space to 3-D by constraining the utilities of some of the decisions in the classification task. These assumptions lead to a 3-D ROC space in which the true-positive fraction (TPF) can be expressed in terms of the two types of false-positive fractions (FPFs). We demonstrate that the TPF is uniquely determined by, and therefore is a function of, the two FPFs. The domain of this function is shown to be related to the decision boundaries in the likelihood ratio plane. Based on these properties of the 3-D ROC space, we can define a summary measure, referred to as the normalized volume under the surface (NVUS), that is analogous to the area under the ROC curve (AUC) for a two-class classifier. We further investigate the properties of the 3-D ROC surface and the NVUS for the ideal observer under the condition that the three class distributions are multivariate normal with equal covariance matrices. The probability density functions (pdfs) of the decision variables are shown to follow a bivariate log-normal distribution. By considering these pdfs, we express the TPF in terms of the FPFs, and integrate the TPF over its domain numerically to obtain the NVUS. In addition, we performed a Monte Carlo simulation study, in which the 3-D ROC surface was generated by empirical "optimal" classification of case samples in the multidimensional feature space following the assumed distributions, to obtain an independent estimate of NVUS. The NVUS value obtained by using the analytical pdfs was found to be in good agreemen- t with that obtained from the Monte Carlo simulation study. We also found that, under all conditions studied, the NVUS increased when the difficulty of the classification task was reduced by changing the parameters of the class distributions, thereby exhibiting the properties of a performance metric in analogous to AUC. Our results indicate that, under the conditions that lead to our 3-D ROC analysis, the performance of a three-class classifier may be analyzed by considering the ROC surface, and its accuracy characterized by the NVUS.
在许多决策过程或模式识别应用中,将给定观测分类为三个类别之一是一项重要任务。对三类分类器性能的一般分析会产生一个复杂的6维接收者操作特征(ROC)空间,目前不存在针对该空间的简单分析工具。我们在一组特定假设下研究理想观察者的性能,这些假设通过限制分类任务中某些决策的效用,将6维ROC空间简化为3维。这些假设导致一个3维ROC空间,其中真阳性率(TPF)可以用两种假阳性率(FPF)来表示。我们证明TPF由这两种FPF唯一确定,因此是它们的函数。该函数的定义域显示与似然比平面中的决策边界相关。基于3维ROC空间的这些特性,我们可以定义一个汇总度量,称为曲面下归一化体积(NVUS),它类似于二类分类器的ROC曲线下面积(AUC)。我们进一步研究了在三类分布为具有相等协方差矩阵的多元正态分布的条件下,理想观察者的3维ROC曲面和NVUS的特性。决策变量的概率密度函数(pdf)显示遵循二元对数正态分布。通过考虑这些pdf,我们用FPF来表示TPF,并在其定义域上对TPF进行数值积分以获得NVUS。此外,我们进行了蒙特卡罗模拟研究,其中通过对多维特征空间中遵循假设分布的病例样本进行经验性“最优”分类来生成3维ROC曲面,以获得NVUS的独立估计值。通过使用分析pdf获得的NVUS值与从蒙特卡罗模拟研究中获得的值高度一致。我们还发现,在所研究的所有条件下,当通过改变类分布的参数来降低分类任务难度时,NVUS会增加,从而展现出类似于AUC的性能度量特性。我们的结果表明,在导致我们进行3维ROC分析的条件下,可以通过考虑ROC曲面来分析三类分类器的性能,并用NVUS来表征其准确性。