Estimation of constant and time-varying dynamic parameters of HIV infection in a nonlinear differential equation model
Hua Liang, Hongyu Miao, Hulin Wu

TL;DR
This paper introduces a comprehensive method combining multi-stage smoothing and spline-enhanced nonlinear least squares to accurately estimate all key parameters, including time-varying ones, in a nonlinear HIV infection model from clinical data.
Contribution
It is the first to rigorously estimate all HIV dynamic parameters, including time-varying infection rates, using combined advanced statistical approaches from clinical data.
Findings
Validated the identifiability of the model
Demonstrated the methods' accuracy through simulations
Successfully estimated all key parameters from clinical data
Abstract
Modeling viral dynamics in HIV/AIDS studies has resulted in a deep understanding of pathogenesis of HIV infection from which novel antiviral treatment guidance and strategies have been derived. Viral dynamics models based on nonlinear differential equations have been proposed and well developed over the past few decades. However, it is quite challenging to use experimental or clinical data to estimate the unknown parameters (both constant and time-varying parameters) in complex nonlinear differential equation models. Therefore, investigators usually fix some parameter values, from the literature or by experience, to obtain only parameter estimates of interest from clinical or experimental data. However, when such prior information is not available, it is desirable to determine all the parameter estimates from data. In this paper we intend to combine the newly developed approaches, a…
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