Title of article
A Bayesian approach in differential equation dynamic models incorporating clinical factors and covariates
Author/Authors
Yangxin Huang، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2010
Pages
19
From page
181
To page
199
Abstract
A virologic marker, the number of HIV RNA copies or viral load, is currently used to evaluate antiretroviral
(ARV) therapies in AIDS clinical trials. This marker can be used to assess the antiviral potency of
therapies, but may be easily affected by clinical factors such as drug exposures and drug resistance as
well as baseline characteristics during the long-term treatment evaluation process. HIV dynamic studies
have significantly contributed to the understanding of HIV pathogenesis and ARV treatment strategies.
Viral dynamic models can be formulated through differential equations, but there has been only limited
development of statistical methodologies for estimating such models or assessing their agreement with
observed data. This paper develops mechanism-based nonlinear differential equation models for characterizing
long-term viral dynamics withARV therapy. In this model we not only incorporate clinical factors
(drug exposures, and susceptibility), but also baseline covariate (baseline viral load, CD4 count, weight,
or age) into a function of treatment efficacy. A Bayesian nonlinear mixed-effects modeling approach is
investigated with application to an AIDS clinical trial study. The effects of confounding interaction of
clinical factors with covariate-based models are compared using the deviance information criteria (DIC),
a Bayesian version of the classical deviance for model assessment, designed from complex hierarchical
model settings. Relationships between baseline covariate combined with confounding clinical factors and
drug efficacy are explored. In addition, we compared models incorporating each of four baseline covariates
through DIC and some interesting findings are presented. Our results suggest that modeling HIV dynamics
and virologic responses with consideration of time-varying clinical factors as well as baseline characteristics
may play an important role in understanding HIV pathogenesis, designing new treatment strategies
for long-term care of AIDS patients.
Keywords
Longitudinal data , long-term HIVdynamics , time-varying drug efficacy , AIDS , Baseline characteristics , Bayesian nonlinear mixed-effects models
Journal title
JOURNAL OF APPLIED STATISTICS
Serial Year
2010
Journal title
JOURNAL OF APPLIED STATISTICS
Record number
712386
Link To Document