Models of SIV rebound after treatment interruption that involve multiple reactivation events.

In order to assess the efficacy of novel HIV-1 treatments leading to a functional cure, the time to viral rebound is frequently used as a surrogate endpoint. The longer the time to viral rebound, the more efficacious the therapy. In support of such an approach, mathematical models serve as a connect...

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Main Authors: Christiaan H van Dorp, Jessica M Conway, Dan H Barouch, James B Whitney, Alan S Perelson
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-10-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1008241
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spelling doaj-599a3c3133a24b769287d8c75ec563be2021-04-21T15:45:08ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582020-10-011610e100824110.1371/journal.pcbi.1008241Models of SIV rebound after treatment interruption that involve multiple reactivation events.Christiaan H van DorpJessica M ConwayDan H BarouchJames B WhitneyAlan S PerelsonIn order to assess the efficacy of novel HIV-1 treatments leading to a functional cure, the time to viral rebound is frequently used as a surrogate endpoint. The longer the time to viral rebound, the more efficacious the therapy. In support of such an approach, mathematical models serve as a connection between the size of the latent reservoir and the time to HIV-1 rebound after treatment interruption. The simplest of such models assumes that a single successful latent cell reactivation event leads to observable viremia after a period of exponential viral growth. Here we consider a generalization developed by Pinkevych et al. and Hill et al. of this simple model in which multiple reactivation events can occur, each contributing to the exponential growth of the viral load. We formalize and improve the previous derivation of the dynamics predicted by this model, and use the model to estimate relevant biological parameters from SIV rebound data. We confirm a previously described effect of very early antiretroviral therapy (ART) initiation on the rate of recrudescence and the viral load growth rate after treatment interruption. We find that every day ART initiation is delayed results in a 39% increase in the recrudescence rate (95% credible interval: [18%, 62%]), and a 11% decrease of the viral growth rate (95% credible interval: [4%, 20%]). We show that when viral rebound occurs early relative to the viral load doubling time, a model with multiple successful reactivation events fits the data better than a model with only a single successful reactivation event.https://doi.org/10.1371/journal.pcbi.1008241
collection DOAJ
language English
format Article
sources DOAJ
author Christiaan H van Dorp
Jessica M Conway
Dan H Barouch
James B Whitney
Alan S Perelson
spellingShingle Christiaan H van Dorp
Jessica M Conway
Dan H Barouch
James B Whitney
Alan S Perelson
Models of SIV rebound after treatment interruption that involve multiple reactivation events.
PLoS Computational Biology
author_facet Christiaan H van Dorp
Jessica M Conway
Dan H Barouch
James B Whitney
Alan S Perelson
author_sort Christiaan H van Dorp
title Models of SIV rebound after treatment interruption that involve multiple reactivation events.
title_short Models of SIV rebound after treatment interruption that involve multiple reactivation events.
title_full Models of SIV rebound after treatment interruption that involve multiple reactivation events.
title_fullStr Models of SIV rebound after treatment interruption that involve multiple reactivation events.
title_full_unstemmed Models of SIV rebound after treatment interruption that involve multiple reactivation events.
title_sort models of siv rebound after treatment interruption that involve multiple reactivation events.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2020-10-01
description In order to assess the efficacy of novel HIV-1 treatments leading to a functional cure, the time to viral rebound is frequently used as a surrogate endpoint. The longer the time to viral rebound, the more efficacious the therapy. In support of such an approach, mathematical models serve as a connection between the size of the latent reservoir and the time to HIV-1 rebound after treatment interruption. The simplest of such models assumes that a single successful latent cell reactivation event leads to observable viremia after a period of exponential viral growth. Here we consider a generalization developed by Pinkevych et al. and Hill et al. of this simple model in which multiple reactivation events can occur, each contributing to the exponential growth of the viral load. We formalize and improve the previous derivation of the dynamics predicted by this model, and use the model to estimate relevant biological parameters from SIV rebound data. We confirm a previously described effect of very early antiretroviral therapy (ART) initiation on the rate of recrudescence and the viral load growth rate after treatment interruption. We find that every day ART initiation is delayed results in a 39% increase in the recrudescence rate (95% credible interval: [18%, 62%]), and a 11% decrease of the viral growth rate (95% credible interval: [4%, 20%]). We show that when viral rebound occurs early relative to the viral load doubling time, a model with multiple successful reactivation events fits the data better than a model with only a single successful reactivation event.
url https://doi.org/10.1371/journal.pcbi.1008241
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