Joint modeling with time-dependent treatment and heteroskedasticity: Bayesian analysis with application to the Framingham Heart Study
Medical studies for chronic disease are often interested in the relation between longitudinal risk factor profiles and individuals' later life disease outcomes. These profiles may typically be subject to intermediate structural changes due to treatment or environmental influences. Analysis of s...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
13.12.2019
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Subjects | |
Online Access | Get full text |
DOI | 10.48550/arxiv.1912.06398 |
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Summary: | Medical studies for chronic disease are often interested in the relation
between longitudinal risk factor profiles and individuals' later life disease
outcomes. These profiles may typically be subject to intermediate structural
changes due to treatment or environmental influences. Analysis of such studies
may be handled by the joint model framework. However, current joint modeling
does not consider structural changes in the residual variability of the risk
profile nor consider the influence of subject-specific residual variability on
the time-to-event outcome. In the present paper, we extend the joint model
framework to address these two heterogeneous intra-individual variabilities. A
Bayesian approach is used to estimate the unknown parameters and simulation
studies are conducted to investigate the performance of the method. The
proposed joint model is applied to the Framingham Heart Study to investigate
the influence of anti-hypertensive medication on the systolic blood pressure
variability together with its effect on the risk of developing cardiovascular
disease. We show that anti-hypertensive medication is associated with elevated
systolic blood pressure variability and increased variability elevates risk of
developing cardiovascular disease. |
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DOI: | 10.48550/arxiv.1912.06398 |