Author/Authors :
Amini, Payam Department of Biostatistics and Epidemiology - School of Public Health - Ahvaz Jundishapur University of Medical Sciences - Ahvaz, Iran , Moghimbeigi, Abbas Department of Biostatistics and Epidemiology - School of Health - Research Center for Health - Safety and Environment - Alborz University of Medical Sciences - Karaj, Iran , Zayeri, Farid Department of Biostatistics - Member of Proteomics Research Center - School of Paramedical Sciences - Shahid Beheshti University of Medical Sciences - Tehran, Iran , Tapak, Leili Department of Biostatistics - School of Public Health - Hamadan University of Medical Science - Hamadan, Iran , Maroufizadeh, Saman School of Nursing and Midwifery - Guilan University of Medical Sciences - Rasht, Iran , Verbeke, Geert Katholieke Universiteit Leuven - Leuven, Belgium
Abstract :
Associated longitudinal response variables are faced with variations caused by repeated measurements over time along with the
association between the responses. To model a longitudinal ordinal outcome using generalized linear mixed models, integrating
over a normally distributed random intercept in the proportional odds ordinal logistic regression does not yield a closed form.
In this paper, we combined a longitudinal count and an ordinal response variable with Bridge distribution for the random
intercept in the ordinal logistic regression submodel. We compared the results to that of a normal distribution. The two
associated response variables are combined using correlated random intercepts. The random intercept in the count outcome
submodel follows a normal distribution. The random intercept in the ordinal outcome submodel follows Bridge distribution.
The estimations were carried out using a likelihood-based approach in direct and conditional joint modelling approaches. To
illustrate the performance of the model, a simulation study was conducted. Based on the simulation results, assuming a Bridge
distribution for the random intercept of ordinal logistic regression results in accurate estimation even if the random intercept is
normally distributed. Moreover, considering the association between longitudinal count and ordinal responses resulted in
estimation with lower standard error in comparison to univariate analysis. In addition to the same interpretation for the
parameter in marginal and conditional estimates thanks to the assumption of a Bridge distribution for the random intercept of
ordinal logistic regression, more efficient estimates were found compared to that of normal distribution.
Keywords :
Overdispersed , Intercept , likelihood-based , Copula-based