Title of article :
Poisson Mixture Regression Models for Heart Disease Prediction
Author/Authors :
Mufudza, Chipo Statistics Department - Cukurova University - Adana, Turkey , Erol, Hamza Statistics Department - Cukurova University - Adana, Turkey
Abstract :
Early heart disease control can be achieved by high disease prediction and diagnosis efficiency. This paper focuses on the use
of model based clustering techniques to predict and diagnose heart disease via Poisson mixture regression models. Analysis and
application of Poisson mixture regression models is here addressed under two different classes: standard and concomitant variable
mixture regression models. Results show that a two-component concomitant variable Poisson mixture regression model predicts
heart disease better than both the standard Poisson mixture regression model and the ordinary general linear Poisson regression
model due to its low Bayesian Information Criteria value. Furthermore, a Zero Inflated Poisson Mixture Regression model turned
out to be the best model for heart prediction over all models as it both clusters individuals into high or low risk category and predicts
rate to heart disease componentwise given clusters available. It is deduced that heart disease prediction can be effectively done by
identifying the major risks componentwise using Poisson mixture regression model.
Keywords :
CART , Zero , REPTREE , GLM
Journal title :
Computational and Mathematical Methods in Medicine