Title of article :
A Bayesian approach for estimating antiviral efficacy in HIV dynamic models
Author/Authors :
Yangxin Huang & Hulin Wu، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
The study of HIV dynamics is one of the most important developments in recent AIDS
research. It has led to a new understanding of the pathogenesis of HIV infection. Although important
findings in HIV dynamics have been published in prestigious scientific journals, the statistical
methods for parameter estimation and model-fitting used in those papers appear surprisingly
crude and have not been studied in more detail. For example, the unidentifiable parameters were
simply imputed by mean estimates from previous studies, and important pharmacological/clinical
factors were not considered in the modelling. In this paper, a viral dynamic model is developed
to evaluate the effect of pharmacokinetic variation, drug resistance and adherence on antiviral
responses. In the context of this model, we investigate a Bayesian modelling approach under a
non-linear mixed-effects (NLME) model framework. In particular, our modelling strategy allows
us to estimate time-varying antiviral efficacy of a regimen during the whole course of a treatment
period by incorporating the information of drug exposure and drug susceptibility. Both simulated
and real clinical data examples are given to illustrate the proposed approach. The Bayesian
approach has great potential to be used in many aspects of viral dynamics modelling since it
allow us to fit complex dynamic models and identify all the model parameters. Our results
suggest that Bayesian approach for estimating parameters in HIV dynamic models is flexible and
powerful.
Keywords :
Bayesian mixed-effects models , Drug resistance , drug efficacy , HIV , viraldynamics , MCMC
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS