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Taking Multiple Infections of Cells and Recombination into Account Leads to Small Within-Host Effective-Population-Size Estimates of HIV-1

Whether HIV-1 evolution in infected individuals is dominated by deterministic or stochastic effects remains unclear because current estimates of the effective population size of HIV-1 in vivo, N(e), are widely varying. Models assuming HIV-1 evolution to be neutral estimate N(e)∼10(2)–10(4), smaller...

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Autores principales: Balagam, Rajesh, Singh, Vasantika, Sagi, Aparna Raju, Dixit, Narendra M.
Formato: Texto
Lenguaje:English
Publicado: Public Library of Science 2011
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3020941/
https://www.ncbi.nlm.nih.gov/pubmed/21249189
http://dx.doi.org/10.1371/journal.pone.0014531
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author Balagam, Rajesh
Singh, Vasantika
Sagi, Aparna Raju
Dixit, Narendra M.
author_facet Balagam, Rajesh
Singh, Vasantika
Sagi, Aparna Raju
Dixit, Narendra M.
author_sort Balagam, Rajesh
collection PubMed
description Whether HIV-1 evolution in infected individuals is dominated by deterministic or stochastic effects remains unclear because current estimates of the effective population size of HIV-1 in vivo, N(e), are widely varying. Models assuming HIV-1 evolution to be neutral estimate N(e)∼10(2)–10(4), smaller than the inverse mutation rate of HIV-1 (∼10(5)), implying the predominance of stochastic forces. In contrast, a model that includes selection estimates N(e)>10(5), suggesting that deterministic forces would hold sway. The consequent uncertainty in the nature of HIV-1 evolution compromises our ability to describe disease progression and outcomes of therapy. We perform detailed bit-string simulations of viral evolution that consider large genome lengths and incorporate the key evolutionary processes underlying the genomic diversification of HIV-1 in infected individuals, namely, mutation, multiple infections of cells, recombination, selection, and epistatic interactions between multiple loci. Our simulations describe quantitatively the evolution of HIV-1 diversity and divergence in patients. From comparisons of our simulations with patient data, we estimate N(e)∼10(3)–10(4), implying predominantly stochastic evolution. Interestingly, we find that N(e) and the viral generation time are correlated with the disease progression time, presenting a route to a priori prediction of disease progression in patients. Further, we show that the previous estimate of N(e)>10(5) reduces as the frequencies of multiple infections of cells and recombination assumed increase. Our simulations with N(e)∼10(3)–10(4) may be employed to estimate markers of disease progression and outcomes of therapy that depend on the evolution of viral diversity and divergence.
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spelling pubmed-30209412011-01-19 Taking Multiple Infections of Cells and Recombination into Account Leads to Small Within-Host Effective-Population-Size Estimates of HIV-1 Balagam, Rajesh Singh, Vasantika Sagi, Aparna Raju Dixit, Narendra M. PLoS One Research Article Whether HIV-1 evolution in infected individuals is dominated by deterministic or stochastic effects remains unclear because current estimates of the effective population size of HIV-1 in vivo, N(e), are widely varying. Models assuming HIV-1 evolution to be neutral estimate N(e)∼10(2)–10(4), smaller than the inverse mutation rate of HIV-1 (∼10(5)), implying the predominance of stochastic forces. In contrast, a model that includes selection estimates N(e)>10(5), suggesting that deterministic forces would hold sway. The consequent uncertainty in the nature of HIV-1 evolution compromises our ability to describe disease progression and outcomes of therapy. We perform detailed bit-string simulations of viral evolution that consider large genome lengths and incorporate the key evolutionary processes underlying the genomic diversification of HIV-1 in infected individuals, namely, mutation, multiple infections of cells, recombination, selection, and epistatic interactions between multiple loci. Our simulations describe quantitatively the evolution of HIV-1 diversity and divergence in patients. From comparisons of our simulations with patient data, we estimate N(e)∼10(3)–10(4), implying predominantly stochastic evolution. Interestingly, we find that N(e) and the viral generation time are correlated with the disease progression time, presenting a route to a priori prediction of disease progression in patients. Further, we show that the previous estimate of N(e)>10(5) reduces as the frequencies of multiple infections of cells and recombination assumed increase. Our simulations with N(e)∼10(3)–10(4) may be employed to estimate markers of disease progression and outcomes of therapy that depend on the evolution of viral diversity and divergence. Public Library of Science 2011-01-13 /pmc/articles/PMC3020941/ /pubmed/21249189 http://dx.doi.org/10.1371/journal.pone.0014531 Text en Balagam et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Balagam, Rajesh
Singh, Vasantika
Sagi, Aparna Raju
Dixit, Narendra M.
Taking Multiple Infections of Cells and Recombination into Account Leads to Small Within-Host Effective-Population-Size Estimates of HIV-1
title Taking Multiple Infections of Cells and Recombination into Account Leads to Small Within-Host Effective-Population-Size Estimates of HIV-1
title_full Taking Multiple Infections of Cells and Recombination into Account Leads to Small Within-Host Effective-Population-Size Estimates of HIV-1
title_fullStr Taking Multiple Infections of Cells and Recombination into Account Leads to Small Within-Host Effective-Population-Size Estimates of HIV-1
title_full_unstemmed Taking Multiple Infections of Cells and Recombination into Account Leads to Small Within-Host Effective-Population-Size Estimates of HIV-1
title_short Taking Multiple Infections of Cells and Recombination into Account Leads to Small Within-Host Effective-Population-Size Estimates of HIV-1
title_sort taking multiple infections of cells and recombination into account leads to small within-host effective-population-size estimates of hiv-1
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3020941/
https://www.ncbi.nlm.nih.gov/pubmed/21249189
http://dx.doi.org/10.1371/journal.pone.0014531
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