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Bibliographic Details
Main Authors: Palma, Marco, Keogh, Ruth H, Carr, Siobhán B, Szczesniak, Rhonda, Taylor-Robinson, David, Wood, Angela M, Muniz-Terrera, Graciela, Barrett, Jessica K
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.12270
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author Palma, Marco
Keogh, Ruth H
Carr, Siobhán B
Szczesniak, Rhonda
Taylor-Robinson, David
Wood, Angela M
Muniz-Terrera, Graciela
Barrett, Jessica K
author_facet Palma, Marco
Keogh, Ruth H
Carr, Siobhán B
Szczesniak, Rhonda
Taylor-Robinson, David
Wood, Angela M
Muniz-Terrera, Graciela
Barrett, Jessica K
contents Within-individual variability of health indicators measured over time is becoming commonly used to inform about disease progression. Simple summary statistics (e.g. the standard deviation for each individual) are often used but they are not suited to account for time changes. In addition, when these summary statistics are used as covariates in a regression model for time-to-event outcomes, the estimates of the hazard ratios are subject to regression dilution. To overcome these issues, a joint model is built where the association between the time-to-event outcome and multivariate longitudinal markers is specified in terms of the within-individual variability of the latter. A mixed-effect location-scale model is used to analyse the longitudinal biomarkers, their within-individual variability and their correlation. The time to event is modelled using a proportional hazard regression model, with a flexible specification of the baseline hazard, and the information from the longitudinal biomarkers is shared as a function of the random effects. The model can be used to quantify within-individual variability for the longitudinal markers and their association with the time-to-event outcome. We show through a simulation study the performance of the model in comparison with the standard joint model with constant variance. The model is applied on a dataset of adult women from the UK cystic fibrosis registry, to evaluate the association between lung function, malnutrition and mortality.
format Preprint
id arxiv_https___arxiv_org_abs_2503_12270
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Bayesian location-scale joint model for time-to-event and multivariate longitudinal data with association based on within-individual variability
Palma, Marco
Keogh, Ruth H
Carr, Siobhán B
Szczesniak, Rhonda
Taylor-Robinson, David
Wood, Angela M
Muniz-Terrera, Graciela
Barrett, Jessica K
Methodology
Within-individual variability of health indicators measured over time is becoming commonly used to inform about disease progression. Simple summary statistics (e.g. the standard deviation for each individual) are often used but they are not suited to account for time changes. In addition, when these summary statistics are used as covariates in a regression model for time-to-event outcomes, the estimates of the hazard ratios are subject to regression dilution. To overcome these issues, a joint model is built where the association between the time-to-event outcome and multivariate longitudinal markers is specified in terms of the within-individual variability of the latter. A mixed-effect location-scale model is used to analyse the longitudinal biomarkers, their within-individual variability and their correlation. The time to event is modelled using a proportional hazard regression model, with a flexible specification of the baseline hazard, and the information from the longitudinal biomarkers is shared as a function of the random effects. The model can be used to quantify within-individual variability for the longitudinal markers and their association with the time-to-event outcome. We show through a simulation study the performance of the model in comparison with the standard joint model with constant variance. The model is applied on a dataset of adult women from the UK cystic fibrosis registry, to evaluate the association between lung function, malnutrition and mortality.
title A Bayesian location-scale joint model for time-to-event and multivariate longitudinal data with association based on within-individual variability
topic Methodology
url https://arxiv.org/abs/2503.12270