Citation
Salah, Khalid Ali
(2008)
Joint Modelling Of Longitudinal and Survival Data in Presence of Cure Fraction with Application to Cancer Patients’ Data.
PhD thesis, Universiti Putra Malaysia.
Abstract
Analyses involving longitudinal and time-to-event data are quite common in
medical research. The primary goal of such studies to simultaneously study the
effect of treatment on both the longitudinal covariate and survival. Often in medical
research, there are settings in which it is meaningful to consider the existence of a
fraction of individuals who have little to no risk of experiencing the event of
interest. In this thesis, we focus on such settings with two different data structures.
In early part of the thesis, we focus on the use of a cured fraction survival models
performed in a population-based cancer registries. The limitations of statistical
models which embodied the concept of a cured fraction of patients lack flexibility
for modelling the survival distribution of the uncured group; lead to a not good fit
when the survival drops rapidly soon after diagnosis and also when the survival is
too high. In this study, a cure mixture model is enhanced by developing a dynamic
semi-parametric exponential function with a smoothing parameter. The latter (major) part of the thesis focuses on modelling the longitudinal and the
survival data in presence of cure fraction jointly. When there are cured patients in
the population, the existing methods of joint models would be inappropriate, since
they do not account for the plateau in the survival function. We introduce a new
class of joint models in presence of cure fraction. In this joint model, the
longitudinal submodel is a combination of a random mixed effect model and a
stochastic process. A semi-parametric submodel is also proposed to incorporate the
true longitudinal trajectories and other baseline time (dependent or independent)
covariates. This model accounts for the possibility that a subject is cured, for the
unique nature of the longitudinal data, and is capable to accommodating both zero
and nonzero cure fractions. We generalize the two submodels to be
multidimensional to investigate the relationship between the multivariate
longitudinal and survival data.
Bayesian approach was applied to the data using a conjugate and non-conjugate
prior families to obtain parameter estimates for the proposed models. Gibbs
sampling scheme is modified for fitting the joint model. Metropolis Hasting and
Adaptive Rejection Sampling steps are used to update the Markov chain to estimate
parameter whose full conditional densities can not be sampled efficiently from the
existing methods, leading us to propose efficient proposal densities.
The simulation studies demonstrate that the joint modelling method results in
efficient estimates and good coverage for the population parameters. The analysis of
cancer patient’s data indicates that when ignoring the association between the
longitudinal and the survival data would lead to biased estimates for the most
important parameters.
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Additional Metadata
Item Type: |
Thesis
(PhD)
|
Subject: |
Longitudinal method |
Subject: |
Survival analysis (Biometry) |
Subject: |
Cancer - Patients |
Call Number: |
FS 2008 19 |
Chairman Supervisor: |
Associate Professor Mohd Rizam Abu Bakar, PhD |
Divisions: |
Faculty of Science |
Depositing User: |
Rosmieza Mat Jusoh
|
Date Deposited: |
06 Apr 2010 02:56 |
Last Modified: |
27 May 2013 07:20 |
URI: |
http://psasir.upm.edu.my/id/eprint/5122 |
Statistic Details: |
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