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The effect of 90-90-90 on HIV-1 incidence and mortality in eSwatini: a mathematical modelling study

BACKGROUND: The rapid scale-up of antiretroviral therapy (ART) towards the UNAIDS 90-90-90 goals over the last decade has sparked considerable debate as to whether universal test and treat can end the HIV-1 epidemic in sub-Saharan Africa. We aimed to develop a network transmission model, calibrated...

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Autores principales: Akullian, Adam, Morrison, Michelle, Garnett, Geoffrey P, Mnisi, Zandile, Lukhele, Nomthandazo, Bridenbecker, Daniel, Bershteyn, Anna
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier B.V 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7221345/
https://www.ncbi.nlm.nih.gov/pubmed/32061317
http://dx.doi.org/10.1016/S2352-3018(19)30436-9
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author Akullian, Adam
Morrison, Michelle
Garnett, Geoffrey P
Mnisi, Zandile
Lukhele, Nomthandazo
Bridenbecker, Daniel
Bershteyn, Anna
author_facet Akullian, Adam
Morrison, Michelle
Garnett, Geoffrey P
Mnisi, Zandile
Lukhele, Nomthandazo
Bridenbecker, Daniel
Bershteyn, Anna
author_sort Akullian, Adam
collection PubMed
description BACKGROUND: The rapid scale-up of antiretroviral therapy (ART) towards the UNAIDS 90-90-90 goals over the last decade has sparked considerable debate as to whether universal test and treat can end the HIV-1 epidemic in sub-Saharan Africa. We aimed to develop a network transmission model, calibrated to capture age-specific and sex-specific gaps in the scale-up of ART, to estimate the historical and future effect of attaining and surpassing the UNAIDS 90-90-90 treatment targets on HIV-1 incidence and mortality, and to assess whether these interventions will be enough to achieve epidemic control (incidence of 1 infection per 1000 person-years) by 2030. METHODS: We used eSwatini (formerly Swaziland) as a case study to develop our model. We used data on HIV prevalence by 5-year age bins, sex, and year from the 2007 Swaziland Demographic Health Survey (SDHS), the 2011 Swaziland HIV Incidence Measurement Survey, and the 2016 Swaziland Population Health Impact Assessment (PHIA) survey. We estimated the point prevalence of ART coverage among all HIV-infected individuals by age, sex, and year. Age-specific data on the prevalence of male circumcision from the SDHS and PHIA surveys were used as model inputs for traditional male circumcision and scale-up of voluntary medical male circumcision (VMMC). We calibrated our model using publicly available data on demographics; HIV prevalence by 5-year age bins, sex, and year; and ART coverage by age, sex, and year. We modelled the effects of five scenarios (historical scale-up of ART and VMMC [status quo], no ART or VMMC, no ART, age-targeted 90-90-90, and 100% ART initiation) to quantify the contribution of ART scale-up to declines in HIV incidence and mortality in individuals aged 15–49 by 2016, 2030, and 2050. FINDINGS: Between 2010 and 2016, status-quo ART scale-up among adults (aged 15–49 years) in eSwatini (from 34·0% in 2010 to 74·1% in 2016) reduced HIV incidence by 43·57% (95% credible interval 39·71 to 46·36) and HIV mortality by 56·17% (54·06 to 58·92) among individuals aged 15–49 years, with larger reductions in incidence among men and mortality among women. Holding 2016 ART coverage levels by age and sex into the future, by 2030 adult HIV incidence would fall to 1·09 (0·87 to 1·29) per 100 person-years, 1·42 (1·13 to 1·71) per 100 person-years among women and 0·79 (0·63 to 0·94) per 100 person-years among men. Achieving the 90-90-90 targets evenly by age and sex would further reduce incidence beyond status-quo ART, primarily among individuals aged 15–24 years (an additional 17·37% [7·33 to 26·12] reduction between 2016 and 2030), with only modest additional incidence reductions in adults aged 35–49 years (1·99% [–5·09 to 7·74]). Achieving 100% ART initiation among all people living with HIV within an average of 6 months from infection—an upper bound of plausible treatment effect—would reduce adult HIV incidence to 0·73 infections (0·55 to 0·92) per 100 person-years by 2030 and 0·46 (0·33 to 0·59) per 100 person-years by 2050. INTERPRETATION: Scale-up of ART over the last decade has already contributed to substantial reductions in HIV-1 incidence and mortality in eSwatini. Focused ART targeting would further reduce incidence, especially in younger individuals, but even the most aggressive treatment campaigns would be insufficient to end the epidemic in high-burden settings without a renewed focus on expanding preventive measures. FUNDING: Global Good Fund and the Bill & Melinda Gates Foundation.
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spelling pubmed-72213452020-05-18 The effect of 90-90-90 on HIV-1 incidence and mortality in eSwatini: a mathematical modelling study Akullian, Adam Morrison, Michelle Garnett, Geoffrey P Mnisi, Zandile Lukhele, Nomthandazo Bridenbecker, Daniel Bershteyn, Anna Lancet HIV Article BACKGROUND: The rapid scale-up of antiretroviral therapy (ART) towards the UNAIDS 90-90-90 goals over the last decade has sparked considerable debate as to whether universal test and treat can end the HIV-1 epidemic in sub-Saharan Africa. We aimed to develop a network transmission model, calibrated to capture age-specific and sex-specific gaps in the scale-up of ART, to estimate the historical and future effect of attaining and surpassing the UNAIDS 90-90-90 treatment targets on HIV-1 incidence and mortality, and to assess whether these interventions will be enough to achieve epidemic control (incidence of 1 infection per 1000 person-years) by 2030. METHODS: We used eSwatini (formerly Swaziland) as a case study to develop our model. We used data on HIV prevalence by 5-year age bins, sex, and year from the 2007 Swaziland Demographic Health Survey (SDHS), the 2011 Swaziland HIV Incidence Measurement Survey, and the 2016 Swaziland Population Health Impact Assessment (PHIA) survey. We estimated the point prevalence of ART coverage among all HIV-infected individuals by age, sex, and year. Age-specific data on the prevalence of male circumcision from the SDHS and PHIA surveys were used as model inputs for traditional male circumcision and scale-up of voluntary medical male circumcision (VMMC). We calibrated our model using publicly available data on demographics; HIV prevalence by 5-year age bins, sex, and year; and ART coverage by age, sex, and year. We modelled the effects of five scenarios (historical scale-up of ART and VMMC [status quo], no ART or VMMC, no ART, age-targeted 90-90-90, and 100% ART initiation) to quantify the contribution of ART scale-up to declines in HIV incidence and mortality in individuals aged 15–49 by 2016, 2030, and 2050. FINDINGS: Between 2010 and 2016, status-quo ART scale-up among adults (aged 15–49 years) in eSwatini (from 34·0% in 2010 to 74·1% in 2016) reduced HIV incidence by 43·57% (95% credible interval 39·71 to 46·36) and HIV mortality by 56·17% (54·06 to 58·92) among individuals aged 15–49 years, with larger reductions in incidence among men and mortality among women. Holding 2016 ART coverage levels by age and sex into the future, by 2030 adult HIV incidence would fall to 1·09 (0·87 to 1·29) per 100 person-years, 1·42 (1·13 to 1·71) per 100 person-years among women and 0·79 (0·63 to 0·94) per 100 person-years among men. Achieving the 90-90-90 targets evenly by age and sex would further reduce incidence beyond status-quo ART, primarily among individuals aged 15–24 years (an additional 17·37% [7·33 to 26·12] reduction between 2016 and 2030), with only modest additional incidence reductions in adults aged 35–49 years (1·99% [–5·09 to 7·74]). Achieving 100% ART initiation among all people living with HIV within an average of 6 months from infection—an upper bound of plausible treatment effect—would reduce adult HIV incidence to 0·73 infections (0·55 to 0·92) per 100 person-years by 2030 and 0·46 (0·33 to 0·59) per 100 person-years by 2050. INTERPRETATION: Scale-up of ART over the last decade has already contributed to substantial reductions in HIV-1 incidence and mortality in eSwatini. Focused ART targeting would further reduce incidence, especially in younger individuals, but even the most aggressive treatment campaigns would be insufficient to end the epidemic in high-burden settings without a renewed focus on expanding preventive measures. FUNDING: Global Good Fund and the Bill & Melinda Gates Foundation. Elsevier B.V 2020-02-13 /pmc/articles/PMC7221345/ /pubmed/32061317 http://dx.doi.org/10.1016/S2352-3018(19)30436-9 Text en © 2020 The Author(s). Published by Elsevier Ltd. This is an Open Access article under the CC BY 4.0 license http://creativecommons.org/licenses/by/4.0/ This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Akullian, Adam
Morrison, Michelle
Garnett, Geoffrey P
Mnisi, Zandile
Lukhele, Nomthandazo
Bridenbecker, Daniel
Bershteyn, Anna
The effect of 90-90-90 on HIV-1 incidence and mortality in eSwatini: a mathematical modelling study
title The effect of 90-90-90 on HIV-1 incidence and mortality in eSwatini: a mathematical modelling study
title_full The effect of 90-90-90 on HIV-1 incidence and mortality in eSwatini: a mathematical modelling study
title_fullStr The effect of 90-90-90 on HIV-1 incidence and mortality in eSwatini: a mathematical modelling study
title_full_unstemmed The effect of 90-90-90 on HIV-1 incidence and mortality in eSwatini: a mathematical modelling study
title_short The effect of 90-90-90 on HIV-1 incidence and mortality in eSwatini: a mathematical modelling study
title_sort effect of 90-90-90 on hiv-1 incidence and mortality in eswatini: a mathematical modelling study
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7221345/
https://www.ncbi.nlm.nih.gov/pubmed/32061317
http://dx.doi.org/10.1016/S2352-3018(19)30436-9
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