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Contrasting two frameworks for ROC analysis of ordinal ratings.

机译:对比两个用于等级评级的ROC分析的框架。

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BACKGROUND: Statistical evaluation of medical imaging tests used for diagnostic and prognostic purposes often employs receiver operating characteristic (ROC) curves. Two methods for ROC analysis are popular. The ordinal regression method is the standard approach used when evaluating tests with ordinal values. The direct ROC modeling method is a more recently developed approach, motivated by applications to tests with continuous values. OBJECTIVE: The authors compare the methods in terms of model formulations, interpretations of estimated parameters, the ranges of scientific questions that can be addressed with them, their computational algorithms, and the efficiencies with which they use data. RESULTS: The authors show that a strong relationship exists between the methods by demonstrating that they fit the same models when only a single test is evaluated. The ordinal regression models are typically alternative parameterizations of the direct ROC models and vice versa. The direct method has two major advantages over the ordinal regression method: 1) estimated parameters relate directly to ROC curves, facilitating interpretations of covariate effects on ROC performance, and 2) comparisons between tests can be done directly in this framework. Comparisons can be made while accommodating covariate effects and even between tests that have values on different scales, such as between a continuous biomarker test and an ordinal valued imaging test. The ordinal regression method provides slightly more precise parameter estimates from data in our simulated data models. CONCLUSION: Although the ordinal regression method is slightly more efficient, the direct ROC modeling method has important advantages in regard to interpretation, and it offers a framework to address a broader range of scientific questions, including the facility to compare tests.
机译:背景:用于诊断和预后目的的医学成像测试的统计评估通常采用接收器工作特征(ROC)曲线。 ROC分析的两种方法很流行。序数回归方法是在评估具有序数值的测试时使用的标准方法。直接ROC建模方法是一种较新开发的方法,受应用程序对具有连续值的测试的启发。目的:作者根据模型公式,估计参数的解释,可以用它们解决的科学问题的范围,它们的计算算法以及使用数据的效率来比较这些方法。结果:作者表明,当仅评估一个测试时,它们证明适合相同的模型,这两种方法之间存在很强的关系。有序回归模型通常是直接ROC模型的替代参数化,反之亦然。与有序回归方法相比,直接方法有两个主要优点:1)估计参数直接与ROC曲线相关,便于解释协变量对ROC性能的影响,以及2)可以在此框架中直接进行测试之间的比较。可以在容纳协变量效应的同时进行比较,甚至可以在具有不同标度值的测试之间进行比较,例如在连续生物标志物测试和有序值成像测试之间。序数回归方法从我们的模拟数据模型中的数据中提供了更精确的参数估计。结论:尽管序数回归方法的效率稍高,但直接ROC建模方法在解释方面具有重要优势,并且它提供了一个框架来解决更广泛的科学问题,包括比较测试的工具。

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