Simple Mathematical Models Do Not Accurately Predict Early SIV Dynamics

Upon infection of a new host, human immunodeficiency virus (HIV) replicates in the mucosal tissues and is generally undetectable in circulation for 1–2 weeks post-infection. Several interventions against HIV including vaccines and antiretroviral prophylaxis target virus replication at this earliest...

Full description

Bibliographic Details
Main Authors: Cecilia Noecker, Krista Schaefer, Kelly Zaccheo, Yiding Yang, Judy Day, Vitaly V. Ganusov
Format: Article
Language:English
Published: MDPI AG 2015-03-01
Series:Viruses
Subjects:
Online Access:http://www.mdpi.com/1999-4915/7/3/1189
id doaj-0ed733fa43a14c30bf4af4e9af7fc381
record_format Article
spelling doaj-0ed733fa43a14c30bf4af4e9af7fc3812020-11-24T23:14:12ZengMDPI AGViruses1999-49152015-03-01731189121710.3390/v7031189v7031189Simple Mathematical Models Do Not Accurately Predict Early SIV DynamicsCecilia Noecker0Krista Schaefer1Kelly Zaccheo2Yiding Yang3Judy Day4Vitaly V. Ganusov5National institute for Mathematical and Biological synthesis (NIMBioS), Knoxville, TN 37996, USANational institute for Mathematical and Biological synthesis (NIMBioS), Knoxville, TN 37996, USANational institute for Mathematical and Biological synthesis (NIMBioS), Knoxville, TN 37996, USADepartment of Microbiology, University of Tennessee, Knoxville, TN 37996, USANational institute for Mathematical and Biological synthesis (NIMBioS), Knoxville, TN 37996, USANational institute for Mathematical and Biological synthesis (NIMBioS), Knoxville, TN 37996, USAUpon infection of a new host, human immunodeficiency virus (HIV) replicates in the mucosal tissues and is generally undetectable in circulation for 1–2 weeks post-infection. Several interventions against HIV including vaccines and antiretroviral prophylaxis target virus replication at this earliest stage of infection. Mathematical models have been used to understand how HIV spreads from mucosal tissues systemically and what impact vaccination and/or antiretroviral prophylaxis has on viral eradication. Because predictions of such models have been rarely compared to experimental data, it remains unclear which processes included in these models are critical for predicting early HIV dynamics. Here we modified the “standard” mathematical model of HIV infection to include two populations of infected cells: cells that are actively producing the virus and cells that are transitioning into virus production mode. We evaluated the effects of several poorly known parameters on infection outcomes in this model and compared model predictions to experimental data on infection of non-human primates with variable doses of simian immunodifficiency virus (SIV). First, we found that the mode of virus production by infected cells (budding vs. bursting) has a minimal impact on the early virus dynamics for a wide range of model parameters, as long as the parameters are constrained to provide the observed rate of SIV load increase in the blood of infected animals. Interestingly and in contrast with previous results, we found that the bursting mode of virus production generally results in a higher probability of viral extinction than the budding mode of virus production. Second, this mathematical model was not able to accurately describe the change in experimentally determined probability of host infection with increasing viral doses. Third and finally, the model was also unable to accurately explain the decline in the time to virus detection with increasing viral dose. These results suggest that, in order to appropriately model early HIV/SIV dynamics, additional factors must be considered in the model development. These may include variability in monkey susceptibility to infection, within-host competition between different viruses for target cells at the initial site of virus replication in the mucosa, innate immune response, and possibly the inclusion of several different tissue compartments. The sobering news is that while an increase in model complexity is needed to explain the available experimental data, testing and rejection of more complex models may require more quantitative data than is currently available.http://www.mdpi.com/1999-4915/7/3/1189early SIV/HIV infectionmathematical modeleclipse phasestochasticGillespie algorithm
collection DOAJ
language English
format Article
sources DOAJ
author Cecilia Noecker
Krista Schaefer
Kelly Zaccheo
Yiding Yang
Judy Day
Vitaly V. Ganusov
spellingShingle Cecilia Noecker
Krista Schaefer
Kelly Zaccheo
Yiding Yang
Judy Day
Vitaly V. Ganusov
Simple Mathematical Models Do Not Accurately Predict Early SIV Dynamics
Viruses
early SIV/HIV infection
mathematical model
eclipse phase
stochastic
Gillespie algorithm
author_facet Cecilia Noecker
Krista Schaefer
Kelly Zaccheo
Yiding Yang
Judy Day
Vitaly V. Ganusov
author_sort Cecilia Noecker
title Simple Mathematical Models Do Not Accurately Predict Early SIV Dynamics
title_short Simple Mathematical Models Do Not Accurately Predict Early SIV Dynamics
title_full Simple Mathematical Models Do Not Accurately Predict Early SIV Dynamics
title_fullStr Simple Mathematical Models Do Not Accurately Predict Early SIV Dynamics
title_full_unstemmed Simple Mathematical Models Do Not Accurately Predict Early SIV Dynamics
title_sort simple mathematical models do not accurately predict early siv dynamics
publisher MDPI AG
series Viruses
issn 1999-4915
publishDate 2015-03-01
description Upon infection of a new host, human immunodeficiency virus (HIV) replicates in the mucosal tissues and is generally undetectable in circulation for 1–2 weeks post-infection. Several interventions against HIV including vaccines and antiretroviral prophylaxis target virus replication at this earliest stage of infection. Mathematical models have been used to understand how HIV spreads from mucosal tissues systemically and what impact vaccination and/or antiretroviral prophylaxis has on viral eradication. Because predictions of such models have been rarely compared to experimental data, it remains unclear which processes included in these models are critical for predicting early HIV dynamics. Here we modified the “standard” mathematical model of HIV infection to include two populations of infected cells: cells that are actively producing the virus and cells that are transitioning into virus production mode. We evaluated the effects of several poorly known parameters on infection outcomes in this model and compared model predictions to experimental data on infection of non-human primates with variable doses of simian immunodifficiency virus (SIV). First, we found that the mode of virus production by infected cells (budding vs. bursting) has a minimal impact on the early virus dynamics for a wide range of model parameters, as long as the parameters are constrained to provide the observed rate of SIV load increase in the blood of infected animals. Interestingly and in contrast with previous results, we found that the bursting mode of virus production generally results in a higher probability of viral extinction than the budding mode of virus production. Second, this mathematical model was not able to accurately describe the change in experimentally determined probability of host infection with increasing viral doses. Third and finally, the model was also unable to accurately explain the decline in the time to virus detection with increasing viral dose. These results suggest that, in order to appropriately model early HIV/SIV dynamics, additional factors must be considered in the model development. These may include variability in monkey susceptibility to infection, within-host competition between different viruses for target cells at the initial site of virus replication in the mucosa, innate immune response, and possibly the inclusion of several different tissue compartments. The sobering news is that while an increase in model complexity is needed to explain the available experimental data, testing and rejection of more complex models may require more quantitative data than is currently available.
topic early SIV/HIV infection
mathematical model
eclipse phase
stochastic
Gillespie algorithm
url http://www.mdpi.com/1999-4915/7/3/1189
work_keys_str_mv AT cecilianoecker simplemathematicalmodelsdonotaccuratelypredictearlysivdynamics
AT kristaschaefer simplemathematicalmodelsdonotaccuratelypredictearlysivdynamics
AT kellyzaccheo simplemathematicalmodelsdonotaccuratelypredictearlysivdynamics
AT yidingyang simplemathematicalmodelsdonotaccuratelypredictearlysivdynamics
AT judyday simplemathematicalmodelsdonotaccuratelypredictearlysivdynamics
AT vitalyvganusov simplemathematicalmodelsdonotaccuratelypredictearlysivdynamics
_version_ 1725595545962020864