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Abstract(s)
"The objective is to model longitudinal and survival data jointly taking into account
the dependence between the two responses in a real HIV/AIDS dataset using
a shared parameter approach inside a Bayesian framework. We propose a linear
mixed effects dispersion model to adjust the CD4 longitudinal biomarker data with
a between-individual heterogeneity in the mean and variance. In doing so we are relaxing
the usual assumption of a common variance for the longitudinal residuals. A
hazard regression model is considered in addition to model the time since HIV/AIDS
diagnostic until failure, being the coefficients, accounting for the linking between the
longitudinal and survival processes, time-varying. This flexibility is specified using
Penalized Splines and allows the relationship to vary in time. Because heteroscedasticity
may be related with the survival, the standard deviation is considered as a
covariate in the hazard model, thus enabling to study the effect of the CD4 counts’
stability on the survival. The proposed framework outperforms the most used joint
models, highlighting the importance in correctly taking account the individual heterogeneity
for the measurement errors variance and the evolution of the disease over
time in bringing new insights to better understand this biomarker-survival relation."
Description
Keywords
Joint model Bayesian analysis Repeated measurements Variance model Time-to-event Penalized Splines Time-dependent coefficients
Citation
Martins, R. (2016). Joint dispersion model with a flexible link. arXiv,1604.08853