Bayesian binary regression model: an application to in-hospital death after AMI prediction

Bayesian binary regression model: an application to in-hospital death after AMI prediction

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Article ID: iaor20084556
Country: Brazil
Volume: 24
Issue: 2
Start Page Number: 253
End Page Number: 267
Publication Date: May 2004
Journal: Pesquisa Operacional
Authors: ,
Keywords: statistics: regression, markov processes
Abstract:

A Bayesian binary regression model is developed to predict death of patients after acute myocardial infarction (AMI). Markov Chain Monte Carlo (MCMC) methods are used to make inference and to evaluate Bayesian binary regression models. A model building strategy based on Bayes factor is proposed and aspects of model validation are extensively discussed in the paper, including the posterior distribution for the c-index and the analysis of residuals. Risk assessment, based on variables easily available within minutes of the patients' arrival at the hospital, is very important to decide the course of the treatment. The identified model reveals itself strongly reliable and accurate, with a rate of correct classification of 88% and a concordance index of 83%.

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