Cai Tianxi, Zheng Yingye
Department of Biostatistics, Harvard University, Boston, Massachusetts 02115, USA.
Biometrics. 2007 Mar;63(1):152-63. doi: 10.1111/j.1541-0420.2006.00620.x.
The receiver operating characteristic (ROC) curve is a prominent tool for characterizing the accuracy of a continuous diagnostic test. To account for factors that might influence the test accuracy, various ROC regression methods have been proposed. However, as in any regression analysis, when the assumed models do not fit the data well, these methods may render invalid and misleading results. To date, practical model-checking techniques suitable for validating existing ROC regression models are not yet available. In this article, we develop cumulative residual-based procedures to graphically and numerically assess the goodness of fit for some commonly used ROC regression models, and show how specific components of these models can be examined within this framework. We derive asymptotic null distributions for the residual processes and discuss resampling procedures to approximate these distributions in practice. We illustrate our methods with a dataset from the cystic fibrosis registry.
接收者操作特征(ROC)曲线是用于表征连续诊断测试准确性的重要工具。为了考虑可能影响测试准确性的因素,人们提出了各种ROC回归方法。然而,与任何回归分析一样,当假设模型与数据拟合不佳时,这些方法可能会产生无效且具有误导性的结果。迄今为止,尚无适用于验证现有ROC回归模型的实用模型检验技术。在本文中,我们开发了基于累积残差的程序,以图形化和数值方式评估一些常用ROC回归模型的拟合优度,并展示如何在该框架内检验这些模型的特定组成部分。我们推导了残差过程的渐近零分布,并讨论了在实践中近似这些分布的重采样程序。我们用来自囊性纤维化登记处的数据集说明了我们的方法。