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Modelling multivariate longitudinal outcomes and time-to-event data

It is common in clinical or observational studies to record information repeatedly over time while observing a time-to-event outcome among subjects. Joint models for longitudinal and survival data simultaneously analyse repetitively measured outcomes and associated event times. They offer valuable a...

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Main Author: Theletsane, Modiehi
Other Authors: Gumedze, Freedom
Format: Thesis
Language:English
English
Published: Department of Statistical Sciences 2026
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access_status_str Open Access
author Theletsane, Modiehi
author2 Gumedze, Freedom
author_browse Gumedze, Freedom
Theletsane, Modiehi
author_facet Gumedze, Freedom
Theletsane, Modiehi
author_sort Theletsane, Modiehi
collection Thesis
description It is common in clinical or observational studies to record information repeatedly over time while observing a time-to-event outcome among subjects. Joint models for longitudinal and survival data simultaneously analyse repetitively measured outcomes and associated event times. They offer valuable applications in two contexts: accounting for time-varying covariates measured with error when concentrating on survival outcomes, and controlling for informative censoring when focusing on longitudinal outcomes. It has been nearly four decades since joint modelling was first developed. The main aim of this study was to investigate whether there is an association between multivariate longitudinal electrocardiogram (ECG) characteristics; i.e., ECG rate (ECGrate), ECG PR interval (ECGpri), ECG corrected QT interval (ECGqtc), and ECG QRS duration (ECGqrsd) on survival outcomes, death, constriction, and composite outcome (death, constriction, or cardiac tamponade, whichever occurs first) in the investigation of the management of pericarditis (IMPI) in a multi-centre clinical trial. The ECG characteristics from the IMPI trial were weighed on a continuous scale and were converted into categories to be clinically meaningful. Several approaches were taken towards joint modelling, with the first one being a two-stage joint model approach. The shared parameter joint model is another approach to joint modelling. This study considered univariate and multivariate shared parameter joint models of the longitudinal data and time-to-composite, time-to-death, and time- to-constriction event outcomes. Specifically, the study considered these models when the data were non-normal. The univariate analysis results suggested a weak association between the ECGrate and the risk of composite, death, and constriction event outcomes. However, there was a strong association between ECGpri and the risk of death and constriction, but there was no association in the composite event. Furthermore, there was no association between ECGqrs duration and the risk of either composite or death events; however, there was an association with constriction. Finally, there was no association between ECGqtc and the risk of either composite or death events; however, there was an association between the ECGqtc and constriction. The study utilised multivariate shared parameter joint model analysis to understand if there was an association between composite, death, and constriction survival outcomes. The model had four binary ECG longitudinal outcomes, which were modelled based on the binomial assumption using the generalised linear mixed-effects model. Parameter estimation was based on a Bayesian framework utilising the Markov Chain Monte Carlo technique, and convergency estimates were established. It was discovered that the association parameter for the ECGqtc, which determines how the longitudinal ECGqtc is related to the risk of death, showed that there was an association. In contrast, the association parameter for ECGrate, ECGpri, and ECGqrsd was weak for the risk of composite, death, and constriction outcomes. The ECGqtc also revealed no association between the risk of composite and constriction event outcomes, respectively.
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language English
eng
last_indexed 2026-06-10T12:32:09.918Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2026
publishDateRange 2026
publishDateSort 2026
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spelling oai:open.uct.ac.za:11427/42744 Modelling multivariate longitudinal outcomes and time-to-event data Theletsane, Modiehi Gumedze, Freedom Joint models longitudinal multivariate survival It is common in clinical or observational studies to record information repeatedly over time while observing a time-to-event outcome among subjects. Joint models for longitudinal and survival data simultaneously analyse repetitively measured outcomes and associated event times. They offer valuable applications in two contexts: accounting for time-varying covariates measured with error when concentrating on survival outcomes, and controlling for informative censoring when focusing on longitudinal outcomes. It has been nearly four decades since joint modelling was first developed. The main aim of this study was to investigate whether there is an association between multivariate longitudinal electrocardiogram (ECG) characteristics; i.e., ECG rate (ECGrate), ECG PR interval (ECGpri), ECG corrected QT interval (ECGqtc), and ECG QRS duration (ECGqrsd) on survival outcomes, death, constriction, and composite outcome (death, constriction, or cardiac tamponade, whichever occurs first) in the investigation of the management of pericarditis (IMPI) in a multi-centre clinical trial. The ECG characteristics from the IMPI trial were weighed on a continuous scale and were converted into categories to be clinically meaningful. Several approaches were taken towards joint modelling, with the first one being a two-stage joint model approach. The shared parameter joint model is another approach to joint modelling. This study considered univariate and multivariate shared parameter joint models of the longitudinal data and time-to-composite, time-to-death, and time- to-constriction event outcomes. Specifically, the study considered these models when the data were non-normal. The univariate analysis results suggested a weak association between the ECGrate and the risk of composite, death, and constriction event outcomes. However, there was a strong association between ECGpri and the risk of death and constriction, but there was no association in the composite event. Furthermore, there was no association between ECGqrs duration and the risk of either composite or death events; however, there was an association with constriction. Finally, there was no association between ECGqtc and the risk of either composite or death events; however, there was an association between the ECGqtc and constriction. The study utilised multivariate shared parameter joint model analysis to understand if there was an association between composite, death, and constriction survival outcomes. The model had four binary ECG longitudinal outcomes, which were modelled based on the binomial assumption using the generalised linear mixed-effects model. Parameter estimation was based on a Bayesian framework utilising the Markov Chain Monte Carlo technique, and convergency estimates were established. It was discovered that the association parameter for the ECGqtc, which determines how the longitudinal ECGqtc is related to the risk of death, showed that there was an association. In contrast, the association parameter for ECGrate, ECGpri, and ECGqrsd was weak for the risk of composite, death, and constriction outcomes. The ECGqtc also revealed no association between the risk of composite and constriction event outcomes, respectively. 2026-01-29T06:57:18Z 2026-01-29T06:57:18Z 2025 2026-01-29T06:53:47Z Thesis / Dissertation Masters MSc http://hdl.handle.net/11427/42744 en eng application/pdf Department of Statistical Sciences Faculty of Science University of Cape Town
spellingShingle Joint models
longitudinal
multivariate
survival
Theletsane, Modiehi
Modelling multivariate longitudinal outcomes and time-to-event data
thesis_degree_str Master's
title Modelling multivariate longitudinal outcomes and time-to-event data
title_full Modelling multivariate longitudinal outcomes and time-to-event data
title_fullStr Modelling multivariate longitudinal outcomes and time-to-event data
title_full_unstemmed Modelling multivariate longitudinal outcomes and time-to-event data
title_short Modelling multivariate longitudinal outcomes and time-to-event data
title_sort modelling multivariate longitudinal outcomes and time to event data
topic Joint models
longitudinal
multivariate
survival
url http://hdl.handle.net/11427/42744
work_keys_str_mv AT theletsanemodiehi modellingmultivariatelongitudinaloutcomesandtimetoeventdata