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Status已发表Published
TitleBayesian inference for joint modelling of longitudinal continuous, binary and ordinal events
Creator
Date Issued2016
Source PublicationStatistical Methods in Medical Research
ISSN0962-2802
Volume25Issue:6Pages:2521-2540
Abstract

In medical studies, repeated measurements of continuous, binary and ordinal outcomes are routinely collected from the same patient. Instead of modelling each outcome separately, in this study we propose to jointly model the trivariate longitudinal responses, so as to take account of the inherent association between the different outcomes and thus improve statistical inferences. This work is motivated by a large cohort study in the North West of England, involving trivariate responses from each patient: Body Mass Index, Depression (Yes/No) ascertained with cut-off score not less than 8 at the Hospital Anxiety and Depression Scale, and Pain Interference generated from the Medical Outcomes Study 36-item short-form health survey with values returned on an ordinal scale 1-5. There are some well-established methods for combined continuous and binary, or even continuous and ordinal responses, but little work was done on the joint analysis of continuous, binary and ordinal responses. We propose conditional joint random-effects models, which take into account the inherent association between the continuous, binary and ordinal outcomes. Bayesian analysis methods are used to make statistical inferences. Simulation studies show that, by jointly modelling the trivariate outcomes, standard deviations of the estimates of parameters in the models are smaller and much more stable, leading to more efficient parameter estimates and reliable statistical inferences. In the real data analysis, the proposed joint analysis yields a much smaller deviance information criterion value than the separate analysis, and shows other good statistical properties too. © SAGE Publications.

Keywordbinary data Gibbs sampling joint modelling longitudinal multivariate outcomes ordinal random effects
DOI10.1177/0962280214526199
URLView source
Indexed BySCIE
Language英语English
WOS Research AreaHealth Care Sciences & Services ; Mathematical & Computational Biology ; Medical Informatics ; Mathematics
WOS SubjectHealth Care Sciences & Services ; Mathematical & Computational Biology ; Medical Informatics ; Statistics & Probability
WOS IDWOS:000388625700009
Citation statistics
Cited Times:14[WOS]   [WOS Record]     [Related Records in WOS]
Document TypeJournal article
Identifierhttp://repository.uic.edu.cn/handle/39GCC9TT/5028
CollectionResearch outside affiliated institution
Affiliation
1.School of Mathematics, University of Manchester, Oxford Road, Manchester, M13 9PL, United Kingdom
2.Arthritis Research UK Primary Care Centre, Keele University, United Kingdom
Recommended Citation
GB/T 7714
Li, Qiuju,Pan, Jianxin,Belcher, John. Bayesian inference for joint modelling of longitudinal continuous, binary and ordinal events[J]. Statistical Methods in Medical Research, 2016, 25(6): 2521-2540.
APA Li, Qiuju, Pan, Jianxin, & Belcher, John. (2016). Bayesian inference for joint modelling of longitudinal continuous, binary and ordinal events. Statistical Methods in Medical Research, 25(6), 2521-2540.
MLA Li, Qiuju,et al."Bayesian inference for joint modelling of longitudinal continuous, binary and ordinal events". Statistical Methods in Medical Research 25.6(2016): 2521-2540.
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