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Joint models for mixed categorical outcomes: a study of HIV risk perception and disease status in Mozambique

Journal Contribution - Journal Article

Two types of bivariate models for categorical response variables are introduced to deal with special categories such as unsure or unknown in combination with other ordinal categories, while taking additional hierarchical data structures into account. The latter is achieved by the use of different covariance structures for a trivariate random effect. The models are applied to data from the INSIDA survey, where interest goes to the effect of covariates on the association between HIV risk perception (quadrinomial with an unknown risk category) and HIV infection status (binary). The final model combines continuation-ratio with cumulative link logits for the risk perception, together with partly correlated and partly shared trivariate random effects for the household level. The results indicate that only age has a significant effect on the association between HIV risk perception and infection status. The proposed models may be useful in various fields of application such as social and biomedical sciences, epidemiology and public health.
Journal: Journal of applied statistics
ISSN: 0266-4763
Volume: 45
Pages: 1781 - 1798
Publication year:2018
Keywords:A1 Journal article
BOF-keylabel:yes
BOF-publication weight:0.1
CSS-citation score:1
Authors:International
Authors from:Higher Education
Accessibility:Open