Bayesian Mixed-effects Polychotomous Response Model with Applicationto Diverse Population Collaboration (DPC) Data
[摘要] Polychotomous response models are commonly used in the clinical trials to analyze categorical or ordinal response data. Motivated by investigating of relationship between BMI categories and several risk factors, we carry out the application studies to examine the impact of risk factors on BMI categories, especially for categories of “Overweight” and “Obesities”. In this study, we apply the Bayesian methodology through a mixed-effects polychotomous response model to the Diverse Population Collaboration (DPC) dataset. Using the mixed-effects Bayesian polychotomous response model with uniform improper priors, we would get similar interpretations of the association between risk factors and BMI, which are in great agreement with the results documented in literature. Our application showed that the Bayesian mixed-effects polychotomous response model with improper priors is a very useful statistical technique for solving real word problems.
[发布日期] [发布机构]
[效力级别] [学科分类]
[关键词] Bayesian hierarchical model;Mixed-effects;Polychotomous response;Ordinal data;Uniform Improper priors;Diverse population collaboration (DPC) data [时效性]