An Age-Structured Model of HIV Infection that Allows for Variations in the Production Rate of Viral Particles and the Death Rate of Productively Infected Cells
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Department of Mathematics, University of Michigan, 5860 E. Hall, Ann Arbor, MI 48109
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Department of Biology, University of New Mexico, Albuquerque, NM 87131
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Department of Mathematics, University of British Columbia, 1984 Mathematics Road, Vancouver, BC V6T 1Z2
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4.
Mathematical Modeling and Analysis, T-7, Los Alamos National Laboratory, Mail Stop B284, Los Alamos, NM 87545
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5.
Theoretical Division T-10, Los Alamos National Laboratory, Los Alamos, NM 87545
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Received:
01 April 2004
Accepted:
29 June 2018
Published:
01 July 2004
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MSC :
92B05, 35L99, 45D05.
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Mathematical models of HIV-1 infection can help interpret
drug treatment experiments and improve our understanding of the interplay between HIV-1
and the immune system. We develop and analyze an age-structured model of HIV-1 infection that
allows for variations in the death rate of productively infected T cells
and the production rate of viral particles as a function of the
length of time a T cell has been infected. We show that this model is a generalization of
the standard differential equation and of delay models previously used to describe
HIV-1 infection, and provides a means for exploring fundamental issues
of viral production and death. We show that the model has uninfected and
infected steady states, linked by a transcritical bifurcation. We perform
a local stability analysis of the nontrivial
equilibrium solution and provide a general stability condition for models with
age structure. We then use numerical methods to study solutions of our model focusing on the
analysis of primary HIV infection. We show that the time to reach peak viral levels in the
blood depends not only on initial conditions but also on the way in which viral production
ramps up. If viral production ramps up slowly, we find that the time to peak viral load
is delayed compared to results obtained using the standard (constant viral production)
model of HIV infection. We find that data on viral load changing over time is insufficient
to identify the functions specifying the dependence of the
viral production rate or infected cell death rate on infected cell age. These functions must
be determined through new quantitative experiments.
Citation: Patrick W. Nelson, Michael A. Gilchrist, Daniel Coombs, James M. Hyman, Alan S. Perelson. An Age-Structured Model of HIV Infection that Allows for Variations in the Production Rate of Viral Particles and the Death Rate of Productively Infected Cells[J]. Mathematical Biosciences and Engineering, 2004, 1(2): 267-288. doi: 10.3934/mbe.2004.1.267
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Abstract
Mathematical models of HIV-1 infection can help interpret
drug treatment experiments and improve our understanding of the interplay between HIV-1
and the immune system. We develop and analyze an age-structured model of HIV-1 infection that
allows for variations in the death rate of productively infected T cells
and the production rate of viral particles as a function of the
length of time a T cell has been infected. We show that this model is a generalization of
the standard differential equation and of delay models previously used to describe
HIV-1 infection, and provides a means for exploring fundamental issues
of viral production and death. We show that the model has uninfected and
infected steady states, linked by a transcritical bifurcation. We perform
a local stability analysis of the nontrivial
equilibrium solution and provide a general stability condition for models with
age structure. We then use numerical methods to study solutions of our model focusing on the
analysis of primary HIV infection. We show that the time to reach peak viral levels in the
blood depends not only on initial conditions but also on the way in which viral production
ramps up. If viral production ramps up slowly, we find that the time to peak viral load
is delayed compared to results obtained using the standard (constant viral production)
model of HIV infection. We find that data on viral load changing over time is insufficient
to identify the functions specifying the dependence of the
viral production rate or infected cell death rate on infected cell age. These functions must
be determined through new quantitative experiments.
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