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On the Binormal Predictive Receiver Operating Characteristic Curve for the Joint Assessment of Positive and Negative Predictive Values

机译:关于正面和负面预测值的共同评估的双流预测接​​收机操作特性曲线

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摘要

The predictive receiver operating characteristic (PROC) curve is a diagrammatic format with application in the statistical evaluation of probabilistic disease forecasts. The PROC curve differs from the more well-known receiver operating characteristic (ROC) curve in that it provides a basis for evaluation using metrics defined conditionally on the outcome of the forecast rather than metrics defined conditionally on the actual disease status. Starting from the binormal ROC curve formulation, an overview of some previously published binormal PROC curves is presented in order to place the PROC curve in the context of other methods used in statistical evaluation of probabilistic disease forecasts based on the analysis of predictive values; in particular, the index of separation (PSEP) and the leaf plot. An information theoretic perspective on evaluation is also outlined. Five straightforward recommendations are made with a view to aiding understanding and interpretation of the sometimes-complex patterns generated by PROC curve analysis. The PROC curve and related analyses augment the perspective provided by traditional ROC curve analysis. Here, the binormal ROC model provides the exemplar for investigation of the PROC curve, but potential application extends to analysis based on other distributional models as well as to empirical analysis.
机译:预测接收器操作特征(PROC)曲线是一种图形格式,其应用于概率疾病预测的统计评估。 PROC曲线与更众所周知的接收器操作特性(ROC)曲线不同,因为它为使用条件定义的度量来提供评估的基础,而不是根据实际疾病状态定义的指标。从二叉式ROC曲线配方开始,提出了一些先前发表的双际PROC曲线的概述,以便在用于基于预测值的分析的概率疾病预测的其他方法的上下文中放置PROP曲线;特别地,分离索引(PSEP)和叶图。还概述了关于评估的信息理论观点。为了帮助理解和解释PROC曲线分析产生的有时复杂模式的理解和解释,提出了五项简单建议。 PROC曲线和相关分析增强了传统的ROC曲线分析提供的视角。这里,Binormal ROC模型提供了用于研究PROC曲线的示例,但潜在的应用基于其他分布模型以及实证分析延伸到分析。

著录项

  • 期刊名称 Entropy
  • 作者

    Gareth Hughes;

  • 作者单位
  • 年(卷),期 2020(22),6
  • 年度 2020
  • 页码 593
  • 总页数 11
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:诊断测试;评估;ROC曲线;PROC曲线;二英寸;普遍存在;阳性预测值;否定预测值;贝叶斯的规则;叶图;预期的相互信息;

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