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引用次数: 0
摘要
由于传统的二正态 ROC 曲线参数是以基本的正常患病和非患病评级分布为基础的,因此用户需要对这些值进行转换,才能了解相应 ROC 曲线的形状和大小。在本文中,我提出了另一种参数化方法,即用参数来明确描述 ROC 曲线的形状和大小。所提出的两个参数分别是均值-σ比和我们熟悉的 ROC 曲线下面积(AUC),这两个参数很容易分别用 ROC 曲线的形状和大小来解释。此外,均值-σ比描述了 ROC 曲线的不恰当程度,而 AUC 则描述了相应诊断测试区分患病和非患病病例的能力。建议的参数化简化了使用猜想方差分量时诊断研究的规模,并简化了模拟研究中所需的双正态 a 和 b 参数值的选择。
An alternative parameterization for the binormal ROC curve, with applications to sizing and simulation studies.
Because the conventional binormal ROC curve parameters are in terms of the underlying normal diseased and nondiseased rating distributions, transformations of these values are required for the user to understand what the corresponding ROC curve looks like in terms of its shape and size. In this paper I propose an alternative parameterization in terms of parameters that explicitly describe the shape and size of the ROC curve. The proposed two parameters are the mean-to-sigma ratio and the familiar area under the ROC curve (AUC), which are easily interpreted in terms of the shape and size of the ROC curve, respectively. In addition, the mean-to-sigma ratio describes the degree of improperness of the ROC curve and the AUC describes the ability of the corresponding diagnostic test to discriminate between diseased and nondiseased cases. The proposed parameterization simplifies the sizing of diagnostic studies when conjectured variance components are used and simplifies choosing the binormal a and b parameter values needed for simulation studies.