Publication | Closed Access
Bayesian joint modeling of longitudinal and spatial survival AIDS data
28
Citations
38
References
2016
Year
Epidemiology Of AgingLongevitySurvival DataBiostatisticsBayesian MethodsEpidemiologic MethodPublic HealthFrailtyBrazilian Hiv/aids PatientsStatistical ModelingStatisticsLife ExpectancyLatent Variable MethodsBayesian Hierarchical ModelingBayesian Joint ModelingSpatial Statistical AnalysisEpidemiological OutcomeMultilevel ModelingFunctional Data AnalysisMarginal Structural ModelsEpidemiologyBayesian StatisticsGlobal HealthTime-varying ConfoundingBayesian Hierarchical ModelMedicineMultivariate AnalysisSpatio-temporal ModelSpatial Statistics
Joint analysis of longitudinal and survival data has received increasing attention in the recent years, especially for analyzing cancer and AIDS data. As both repeated measurements (longitudinal) and time-to-event (survival) outcomes are observed in an individual, a joint modeling is more appropriate because it takes into account the dependence between the two types of responses, which are often analyzed separately. We propose a Bayesian hierarchical model for jointly modeling longitudinal and survival data considering functional time and spatial frailty effects, respectively. That is, the proposed model deals with non-linear longitudinal effects and spatial survival effects accounting for the unobserved heterogeneity among individuals living in the same region. This joint approach is applied to a cohort study of patients with HIV/AIDS in Brazil during the years 2002-2006. Our Bayesian joint model presents considerable improvements in the estimation of survival times of the Brazilian HIV/AIDS patients when compared with those obtained through a separate survival model and shows that the spatial risk of death is the same across the different Brazilian states. Copyright © 2016 John Wiley & Sons, Ltd.
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