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Bayesian estimation of logistic regression with misclassified covariates and response

机译:带有错误分类协变量和响应的逻辑回归的贝叶斯估计

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Measurement error is a commonly addressed problem in psychometrics and the behavioral sciences, particularly where gold standard data either does not exist or are too expensive. The Bayesian approach can be utilized to adjust for the bias that results from measurement error in tests. Bayesian methods offer other practical advantages for the analysis of epidemiological data including the possibility of incorporating relevant prior scientific information and the ability to make inferences that do not rely on large sample assumptions. In this paper we consider a logistic regression model where both the response and a binary covariate are subject to misclassification. We assume both a continuous measure and a binary diagnostic test are available for the response variable but no gold standard test is assumed available. We consider a fully Bayesian analysis that affords such adjustments, accounting for the sources of error and correcting estimates of the regression parameters. Based on the results from our example and simulations, the models that account for misclassification produce more statistically significant results, than the models that ignore misclassification. A real data example on math disorders is considered.
机译:测量误差是心理计量学和行为科学中的一个普遍解决的问题,尤其是在不存在黄金标准数据或价格过于昂贵的情况下。贝叶斯方法可用于调整由测试中的测量误差引起的偏差。贝叶斯方法为流行病学数据分析提供了其他实用的优势,包括合并相关的先前科学信息的可能性以及进行不依赖大样本假设的推断的能力。在本文中,我们考虑一个逻辑回归模型,其中响应和二元协变量都容易分类错误。我们假设响应变量可以使用连续测量和二进制诊断测试,但是没有金标准测试可以使用。我们考虑了完全的贝叶斯分析,该分析提供了这样的调整,包括误差来源和校正回归参数的估计。根据我们的示例和模拟的结果,与忽略错误分类的模型相比,解释错误分类的模型产生的统计显着性更高。考虑了有关数学障碍的真实数据示例。

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