Modeling long-term longitudinal HIV dynamics with application to an AIDS clinical study
Yangxin Huang, Tao Lu

TL;DR
This paper develops a mechanistic nonlinear differential equation model to analyze long-term HIV viral dynamics under antiretroviral therapy, integrating drug exposure, resistance, and adherence factors for better understanding of virological failure.
Contribution
It introduces a novel Bayesian nonlinear mixed-effects modeling framework that incorporates multiple treatment factors into long-term HIV dynamic analysis.
Findings
Model captures long-term viral response to therapy.
Baseline factors correlate with dynamic parameters.
Patients with virologic success show distinct parameter profiles.
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 ARV potency of therapies, but is easily affected by drug exposures, drug resistance and other factors during the long-term treatment evaluation process. HIV dynamic studies have significantly contributed to the understanding of HIV pathogenesis and ARV treatment strategies. However, the models of these studies are used to quantify short-term HIV dynamics ( 1 month), and are not applicable to describe long-term virological response to ARV treatment due to the difficulty of establishing a relationship of antiviral response with multiple treatment factors such as drug exposure and drug susceptibility during long-term treatment. Long-term therapy with ARV agents in HIV-infected patients often results in…
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