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Epidemiologic modelling of HIV and CD4 cellular/molecular population dynamics

T. Habtemariam (Center for Computational Epidemiology, Bioinformatics and Risk Analysis (CCEBRA), College of Veterinary Medicine, Nursing and Allied Health, Tuskegee University, Tuskegee, USA)
B. Tameru (Center for Computational Epidemiology, Bioinformatics and Risk Analysis (CCEBRA), College of Veterinary Medicine, Nursing and Allied Health, Tuskegee University, Tuskegee, USA)
D. Nganwa (Center for Computational Epidemiology, Bioinformatics and Risk Analysis (CCEBRA), College of Veterinary Medicine, Nursing and Allied Health, Tuskegee University, Tuskegee, USA)
L. Ayanwale (Center for Computational Epidemiology, Bioinformatics and Risk Analysis (CCEBRA), College of Veterinary Medicine, Nursing and Allied Health, Tuskegee University, Tuskegee, USA)
A. Ahmed (Center for Computational Epidemiology, Bioinformatics and Risk Analysis (CCEBRA), College of Veterinary Medicine, Nursing and Allied Health, Tuskegee University, Tuskegee, USA)
D. Oryang (USDA/APHIS/PPD/RAS, Riverdale, MD, USA)
H. AbdelRahman (USDA/APHIS/PPD/RAS, Riverdale, MD, USA)

Kybernetes

ISSN: 0368-492X

Article publication date: 1 December 2002

803

Abstract

Computational models can facilitate the understanding of complex biomedical systems such as in HIV/AIDS. Untangling the dynamics between HIV and CD4+ cellular populations and molecular interactions can be used to investigate the effective points of interventions in the HIV life cycle. With that in mind, we have developed a state transition systems dynamics and stochastic model that can be used to examine various alternatives for the control and treatment of HIV/AIDS. The specific objectives of our study were to use a cellular/molecular model to study optimal chemotherapies for reducing the HIV viral load and to use the model to study the pattern of mutant viral populations and resistance to drug therapies. The model considers major state variables (uninfected CD4+ lymphocytes, infected CD4+ cells, replicated virions) along with their respective state transition rates (viz. CD4+ replacement rate, infection rate, replication rate, depletion rate). The state transitions are represented by ordinary differential equations. The systems dynamics model was used for a variety of computational experimentations to evaluate HIV mutations, and to evaluate effective strategies in HIV drug therapy interventions.

Keywords

Citation

Habtemariam, T., Tameru, B., Nganwa, D., Ayanwale, L., Ahmed, A., Oryang, D. and AbdelRahman, H. (2002), "Epidemiologic modelling of HIV and CD4 cellular/molecular population dynamics", Kybernetes, Vol. 31 No. 9/10, pp. 1369-1379. https://doi.org/10.1108/03684920210443572

Publisher

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MCB UP Ltd

Copyright © 2002, MCB UP Limited

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