HIV treatment as prevention: systematic comparison of mathematical models of the potential impact of antiretroviral therapy on HIV incidence in South Africa.

Many mathematical models have investigated the impact of expanding access to antiretroviral therapy (ART) on new HIV infections. Comparing results and conclusions across models is challenging because models have addressed slightly different questions and have reported different outcome metrics. This...

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Main Authors: Jeffrey W Eaton, Leigh F Johnson, Joshua A Salomon, Till Bärnighausen, Eran Bendavid, Anna Bershteyn, David E Bloom, Valentina Cambiano, Christophe Fraser, Jan A C Hontelez, Salal Humair, Daniel J Klein, Elisa F Long, Andrew N Phillips, Carel Pretorius, John Stover, Edward A Wenger, Brian G Williams, Timothy B Hallett
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2012-01-01
Series:PLoS Medicine
Online Access:http://europepmc.org/articles/PMC3393664?pdf=render
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spelling doaj-86a1ba18af874e75983aad083c0c29ea2020-11-24T21:51:14ZengPublic Library of Science (PLoS)PLoS Medicine1549-12771549-16762012-01-0197e100124510.1371/journal.pmed.1001245HIV treatment as prevention: systematic comparison of mathematical models of the potential impact of antiretroviral therapy on HIV incidence in South Africa.Jeffrey W EatonLeigh F JohnsonJoshua A SalomonTill BärnighausenEran BendavidAnna BershteynDavid E BloomValentina CambianoChristophe FraserJan A C HontelezSalal HumairDaniel J KleinElisa F LongAndrew N PhillipsCarel PretoriusJohn StoverEdward A WengerBrian G WilliamsTimothy B HallettMany mathematical models have investigated the impact of expanding access to antiretroviral therapy (ART) on new HIV infections. Comparing results and conclusions across models is challenging because models have addressed slightly different questions and have reported different outcome metrics. This study compares the predictions of several mathematical models simulating the same ART intervention programmes to determine the extent to which models agree about the epidemiological impact of expanded ART.Twelve independent mathematical models evaluated a set of standardised ART intervention scenarios in South Africa and reported a common set of outputs. Intervention scenarios systematically varied the CD4 count threshold for treatment eligibility, access to treatment, and programme retention. For a scenario in which 80% of HIV-infected individuals start treatment on average 1 y after their CD4 count drops below 350 cells/µl and 85% remain on treatment after 3 y, the models projected that HIV incidence would be 35% to 54% lower 8 y after the introduction of ART, compared to a counterfactual scenario in which there is no ART. More variation existed in the estimated long-term (38 y) reductions in incidence. The impact of optimistic interventions including immediate ART initiation varied widely across models, maintaining substantial uncertainty about the theoretical prospect for elimination of HIV from the population using ART alone over the next four decades. The number of person-years of ART per infection averted over 8 y ranged between 5.8 and 18.7. Considering the actual scale-up of ART in South Africa, seven models estimated that current HIV incidence is 17% to 32% lower than it would have been in the absence of ART. Differences between model assumptions about CD4 decline and HIV transmissibility over the course of infection explained only a modest amount of the variation in model results.Mathematical models evaluating the impact of ART vary substantially in structure, complexity, and parameter choices, but all suggest that ART, at high levels of access and with high adherence, has the potential to substantially reduce new HIV infections. There was broad agreement regarding the short-term epidemiologic impact of ambitious treatment scale-up, but more variation in longer term projections and in the efficiency with which treatment can reduce new infections. Differences between model predictions could not be explained by differences in model structure or parameterization that were hypothesized to affect intervention impact.http://europepmc.org/articles/PMC3393664?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Jeffrey W Eaton
Leigh F Johnson
Joshua A Salomon
Till Bärnighausen
Eran Bendavid
Anna Bershteyn
David E Bloom
Valentina Cambiano
Christophe Fraser
Jan A C Hontelez
Salal Humair
Daniel J Klein
Elisa F Long
Andrew N Phillips
Carel Pretorius
John Stover
Edward A Wenger
Brian G Williams
Timothy B Hallett
spellingShingle Jeffrey W Eaton
Leigh F Johnson
Joshua A Salomon
Till Bärnighausen
Eran Bendavid
Anna Bershteyn
David E Bloom
Valentina Cambiano
Christophe Fraser
Jan A C Hontelez
Salal Humair
Daniel J Klein
Elisa F Long
Andrew N Phillips
Carel Pretorius
John Stover
Edward A Wenger
Brian G Williams
Timothy B Hallett
HIV treatment as prevention: systematic comparison of mathematical models of the potential impact of antiretroviral therapy on HIV incidence in South Africa.
PLoS Medicine
author_facet Jeffrey W Eaton
Leigh F Johnson
Joshua A Salomon
Till Bärnighausen
Eran Bendavid
Anna Bershteyn
David E Bloom
Valentina Cambiano
Christophe Fraser
Jan A C Hontelez
Salal Humair
Daniel J Klein
Elisa F Long
Andrew N Phillips
Carel Pretorius
John Stover
Edward A Wenger
Brian G Williams
Timothy B Hallett
author_sort Jeffrey W Eaton
title HIV treatment as prevention: systematic comparison of mathematical models of the potential impact of antiretroviral therapy on HIV incidence in South Africa.
title_short HIV treatment as prevention: systematic comparison of mathematical models of the potential impact of antiretroviral therapy on HIV incidence in South Africa.
title_full HIV treatment as prevention: systematic comparison of mathematical models of the potential impact of antiretroviral therapy on HIV incidence in South Africa.
title_fullStr HIV treatment as prevention: systematic comparison of mathematical models of the potential impact of antiretroviral therapy on HIV incidence in South Africa.
title_full_unstemmed HIV treatment as prevention: systematic comparison of mathematical models of the potential impact of antiretroviral therapy on HIV incidence in South Africa.
title_sort hiv treatment as prevention: systematic comparison of mathematical models of the potential impact of antiretroviral therapy on hiv incidence in south africa.
publisher Public Library of Science (PLoS)
series PLoS Medicine
issn 1549-1277
1549-1676
publishDate 2012-01-01
description Many mathematical models have investigated the impact of expanding access to antiretroviral therapy (ART) on new HIV infections. Comparing results and conclusions across models is challenging because models have addressed slightly different questions and have reported different outcome metrics. This study compares the predictions of several mathematical models simulating the same ART intervention programmes to determine the extent to which models agree about the epidemiological impact of expanded ART.Twelve independent mathematical models evaluated a set of standardised ART intervention scenarios in South Africa and reported a common set of outputs. Intervention scenarios systematically varied the CD4 count threshold for treatment eligibility, access to treatment, and programme retention. For a scenario in which 80% of HIV-infected individuals start treatment on average 1 y after their CD4 count drops below 350 cells/µl and 85% remain on treatment after 3 y, the models projected that HIV incidence would be 35% to 54% lower 8 y after the introduction of ART, compared to a counterfactual scenario in which there is no ART. More variation existed in the estimated long-term (38 y) reductions in incidence. The impact of optimistic interventions including immediate ART initiation varied widely across models, maintaining substantial uncertainty about the theoretical prospect for elimination of HIV from the population using ART alone over the next four decades. The number of person-years of ART per infection averted over 8 y ranged between 5.8 and 18.7. Considering the actual scale-up of ART in South Africa, seven models estimated that current HIV incidence is 17% to 32% lower than it would have been in the absence of ART. Differences between model assumptions about CD4 decline and HIV transmissibility over the course of infection explained only a modest amount of the variation in model results.Mathematical models evaluating the impact of ART vary substantially in structure, complexity, and parameter choices, but all suggest that ART, at high levels of access and with high adherence, has the potential to substantially reduce new HIV infections. There was broad agreement regarding the short-term epidemiologic impact of ambitious treatment scale-up, but more variation in longer term projections and in the efficiency with which treatment can reduce new infections. Differences between model predictions could not be explained by differences in model structure or parameterization that were hypothesized to affect intervention impact.
url http://europepmc.org/articles/PMC3393664?pdf=render
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