Analyzing dependence in incidence of diabetes and heart problem using generalized bivariate geometric models with covariates

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Abstract

For analyzing incidence data on diabetes and health problems, the bivariate geometric probability distribution is a natural choice but remained unexplored largely due to lack of models linking covariates with the probabilities of bivariate incidence of correlated outcomes. In this paper, bivariate geometric models are proposed for two correlated incidence outcomes. The extended generalized linear models are developed to take into account covariate dependence of the bivariate probabilities of correlated incidence outcomes for diabetes and heart diseases for the elderly population. The estimation and test procedures are illustrated using the Health and Retirement Study data. Two models are shown in this paper, one based on conditional-marginal approach and the other one based on the joint probability distribution with an association parameter. The joint model with association parameter appears to be a very good choice for analyzing the covariate dependence of the joint incidence of diabetes and heart diseases. Bootstrapping is performed to measure the accuracy of estimates and the results indicate very small bias.

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Islam, M. A., Chowdhury, R. I., & Sultan, K. S. (2017). Analyzing dependence in incidence of diabetes and heart problem using generalized bivariate geometric models with covariates. Journal of Applied Statistics, 44(16), 2890–2907. https://doi.org/10.1080/02664763.2016.1266467

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