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Beta Regression for Modeling a Covariate Adjusted ROC

机译:Beta回归用于建模协变量调整后的ROC

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Background: Several regression methodologies have been developed to model the ROC as a function of covariate effects within the generalized linear model (GLM) framework. In this article, we present an alternative to two existing parametric and semi-parametric methods for estimating a covariate adjusted ROC. The existing methods utilize GLMs for binary data when the expected value equals the probability that the test result for a diseased subject exceeds that of a non-diseased subject with the same covariate values. This probability is referred to as the placement value. Objective: The new method directly models the placement values through beta regression. Methods: We compare the proposed method to the existing models with simulation and a clinical study. Conclusion: The proposed method performs favorably with the commonly used parametric method and has better performance than the semi-parametric method when modeling the covariate adjusted ROC regression.
机译:背景:已经开发了几种回归方法来将ROC建模为广义线性模型(GLM)框架内协变量效应的函数。在本文中,我们提出了两个现有的参数和半参数方法的替代方法,用于估计协变量调整后的ROC。当期望值等于患病对象的测试结果超过具有相同协变量值的未患病对象的测试结果的概率时,现有方法将GLM用于二进制数据。该概率称为放置值。目标:新方法通过Beta回归直接对展示位置值进行建模。方法:我们通过仿真和临床研究将所提出的方法与现有模型进行比较。结论:在对协变量调整的ROC回归进行建模时,所提出的方法与常用的参数方法具有良好的性能,并且比半参数方法具有更好的性能。

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