Department of Biostatistics, Boston University, Cross Town, Boston, MA, USA.
Stat Med. 2012 Jan 30;31(2):101-13. doi: 10.1002/sim.4348. Epub 2011 Dec 7.
Net reclassification and integrated discrimination improvements have been proposed as alternatives to the increase in the area under the curve for evaluating improvement in the performance of risk assessment algorithms introduced by the addition of new phenotypic or genetic markers. In this paper, we demonstrate that in the setting of linear discriminant analysis, under the assumptions of multivariate normality, all three measures can be presented as functions of the squared Mahalanobis distance. This relationship affords an interpretation of the magnitude of these measures in the familiar language of effect size for uncorrelated variables. Furthermore, it allows us to conclude that net reclassification improvement can be viewed as a universal measure of effect size. Our theoretical developments are illustrated with an example based on the Framingham Heart Study risk assessment model for high-risk men in primary prevention of cardiovascular disease.
净重新分类和综合判别改善已被提议作为替代曲线下面积增加的方法,用于评估通过添加新的表型或遗传标记引入的风险评估算法性能的改善。在本文中,我们证明了在多元正态性假设下,线性判别分析的设置中,这三个度量都可以表示为平方马氏距离的函数。这种关系为这些度量在不相关变量的常见效果大小语言中的大小提供了一个解释。此外,它使我们能够得出结论,净重新分类改善可以被视为效果大小的通用度量。我们的理论发展通过基于Framingham 心脏研究高危男性心血管疾病一级预防风险评估模型的一个示例进行说明。