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Binary Regression with Misclassified Response and Covariate Subject to Measurement Error: a Bayesian Approach

Overview
Journal Biom J
Specialty Public Health
Date 2008 Feb 20
PMID 18283683
Citations 2
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Abstract

We consider a Bayesian analysis for modeling a binary response that is subject to misclassification. Additionally, an explanatory variable is assumed to be unobservable, but measurements are available on its surrogate. A binary regression model is developed to incorporate the measurement error in the covariate as well as the misclassification in the response. Unlike existing methods, no model parameters need be assumed known. Markov chain Monte Carlo methods are utilized to perform the necessary computations. The methods developed are illustrated using atomic bomb survival data. A simulation experiment explores advantages of the approach.

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