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Accommodating Covariates in ROC Analysis

机译:在ROC分析中容纳协变量

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摘要

Classification accuracy is the ability of a marker or diagnostic test to discriminate between two groups of individuals, cases and controls, and is commonly summarized using the receiver operating characteristic (ROC) curve. In studies of classification accuracy, there are often covariates that should be incorporated into the ROC analysis. We describe three different ways of using covariate information. For factors that affect marker observations among controls, we present a method for covariate adjustment. For factors that affect discrimination (i.e. the ROC curve), we describe methods for modelling the ROC curve as a function of covariates. Finally, for factors that contribute to discrimination, we propose combining the marker and covariate information, and ask how much discriminatory accuracy improves with the addition of the marker to the covariates (incremental value). These methods follow naturally when representing the ROC curve as a summary of the distribution of case marker observations, standardized with respect to the control distribution.
机译:分类准确度是标记或诊断测试区分两组个人,病例和对照的能力,通常使用接收者操作特征(ROC)曲线进行归纳。在分类准确度的研究中,经常有一些协变量应纳入ROC分析中。我们描述了使用协变量信息的三种不同方式。对于影响对照之间标记观察的因素,我们提出了一种协变量调整的方法。对于影响歧视的因素(即ROC曲线),我们描述了将ROC曲线建模为协变量的函数的方法。最后,对于造成歧视的因素,我们建议结合使用标记和协变量信息,并询问将标记添加到协变量中后,鉴别精度会提高多少(增量值)。当将ROC曲线表示为病例标记观察值分布的摘要时,这些方法自然遵循,相对于控制分布是标准化的。

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