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Using Dual Beta Distributions to Create 'Proper' ROC Curves Based on Rating Category Data

机译:使用双Beta分布基于评级类别数据创建“正确的” ROC曲线

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Background: Receiver operating characteristic (ROC) analysis helps investigators quantify and describe how well a diagnostic system discriminates between 2 mutually exclusive conditions. The conventional binormal (CvB) curve-fitting model usually produces ROCs that are improper in that they do not have the ever-decreasing slope required by signal detection theory. When data sets evaluated under the CvB model have hooks, the resulting ROCs can contain misleading information about the diagnostic performance of the method at low and high false positive rates. Objective: To present and evaluate a dual beta (DB) ROC model that assumes diagnostic data arise from 2 distributions. The DB model's parameter constraints assure that the resulting ROC curve has a positive, monotonically decreasing slope. Design/Method: Computer simulation study comparing results from CvB, DB, and weighted power function (WPF) models. Results: The DB model produces results that are as good as or better than those from the WPF model, and less biased and closer to the true values than curves obtained using the CvB model. Conclusions: The DB ROC model expresses the relationship between the false positive rate and true positive rate in closed form and allows for quick ROC area calculations using spreadsheet functions. Because it posits simple relationships among the decision axis, operating points, and model parameters, the DB model offers investigators a flexible, easy-to-grasp ROC form that is simpler to implement than other proper ROC models.
机译:背景:接收器工作特性(ROC)分析可帮助研究人员量化和描述诊断系统在两种互斥条件之间的区别程度。常规双正态(CvB)曲线拟合模型通常会产生不正确的ROC,因为它们没有信号检测理论要求的不断降低的斜率。当在CvB模型下评估的数据集带有钩子时,生成的ROC可能包含有关该方法在低误报率和高误报率下的诊断性能的误导性信息。目的:提出并评估一个双重beta(DB)ROC模型,该模型假定诊断数据来自2个分布。 DB模型的参数约束确保了生成的ROC曲线具有正的,单调递减的斜率。设计/方法:计算机仿真研究,比较了CvB,DB和加权幂函数(WPF)模型的结果。结果:与使用CvB模型获得的曲线相比,DB模型产生的结果好于或优于WPF模型,并且偏差更小且更接近真实值。结论:DB ROC模型以封闭形式表示假阳性率和真实阳性率之间的关系,并允许使用电子表格功能快速计算ROC面积。因为它在决策轴,操作点和模型参数之间建立了简单的关系,所以DB模型为研究人员提供了一种灵活,易于掌握的ROC形式,该形式比其他适当的ROC模型更易于实现。

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