Nonlinear mixed-effects models for multi-variate longitudinal data with application to HIV disease dynamics.
Date
2014
Authors
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Abstract
The motivation for the study of nonlinear mixed-effects models is due to the growing
interest in the estimation of parameters in HIV disease dynamical models using
real multivariate longitudinal data with varying degrees of informativeness. Special
analytical and approximation techniques are needed to deal with such data
because the repeated observations on any experimental unit are likely to be correlated
over time while multiple outcomes within the unit will also be correlated.
Furthermore, observations may be irregularly made within and between individuals
making direct use of standard methods practically impossible.
In this thesis, we consider a nonlinear mixed-effects model for a multivariate response
variable that takes into account left-censored observations. Then we study
a case where data are unbalanced among subjects and also within a subject because
for some reason only a subset of the multiple outcomes of the response variable
are observed at any one occasion. Dropout models that take into consideration
the partially observed outcomes are proposed. We further derive a joint likelihood
function which takes into account the multivariate responses and the unbalancedness
in such data as a result of censoring and dropout. We then show how the
methodology can be used in the estimation of the parameters that characterise
HIV dynamical system in the presence of several covariates. We have also used
multiple imputation to compare covariate coefficients in the complete data and
the partially observed data. Through a simulation study, we have also seen that
a small limit of quantification provides better parameter estimates in the sense
of standard errors and confidence limits of the parameters. Since there are usually
no analytic solutions for such complex models, the stochastic approximation
Expectation-Maximisation (SAEM) is used as an approximation method. The
methodology is illustrated using a routine observational dataset from two HIV
clinics in Malawi.
Description
Ph. D. University of KwaZulu-Natal, Pietermaritzburg 2014.
Keywords
Multivariate analysis., Mathematical statistics., HIV (Viruses)--Research--Statistical methods., Theses--Statistics.