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Naomi: a new modelling tool for estimating HIV epidemic indicators at the district level in sub‐Saharan Africa
INTRODUCTION: HIV planning requires granular estimates for the number of people living with HIV (PLHIV), antiretroviral treatment (ART) coverage and unmet need, and new HIV infections by district, or equivalent subnational administrative level. We developed a Bayesian small‐area estimation model, ca...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
John Wiley and Sons Inc.
2021
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8454682/ https://www.ncbi.nlm.nih.gov/pubmed/34546657 http://dx.doi.org/10.1002/jia2.25788 |
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author | Eaton, Jeffrey W. Dwyer‐Lindgren, Laura Gutreuter, Steve O'Driscoll, Megan Stevens, Oliver Bajaj, Sumali Ashton, Rob Hill, Alexandra Russell, Emma Esra, Rachel Dolan, Nicolas Anifowoshe, Yusuf O. Woodbridge, Mark Fellows, Ian Glaubius, Robert Haeuser, Emily Okonek, Taylor Stover, John Thomas, Matthew L. Wakefield, Jon Wolock, Timothy M. Berry, Jonathan Sabala, Tomasz Heard, Nathan Delgado, Stephen Jahn, Andreas Kalua, Thokozani Chimpandule, Tiwonge Auld, Andrew Kim, Evelyn Payne, Danielle Johnson, Leigh F. FitzJohn, Richard G. Wanyeki, Ian Mahy, Mary I. Shiraishi, Ray W. |
author_facet | Eaton, Jeffrey W. Dwyer‐Lindgren, Laura Gutreuter, Steve O'Driscoll, Megan Stevens, Oliver Bajaj, Sumali Ashton, Rob Hill, Alexandra Russell, Emma Esra, Rachel Dolan, Nicolas Anifowoshe, Yusuf O. Woodbridge, Mark Fellows, Ian Glaubius, Robert Haeuser, Emily Okonek, Taylor Stover, John Thomas, Matthew L. Wakefield, Jon Wolock, Timothy M. Berry, Jonathan Sabala, Tomasz Heard, Nathan Delgado, Stephen Jahn, Andreas Kalua, Thokozani Chimpandule, Tiwonge Auld, Andrew Kim, Evelyn Payne, Danielle Johnson, Leigh F. FitzJohn, Richard G. Wanyeki, Ian Mahy, Mary I. Shiraishi, Ray W. |
author_sort | Eaton, Jeffrey W. |
collection | PubMed |
description | INTRODUCTION: HIV planning requires granular estimates for the number of people living with HIV (PLHIV), antiretroviral treatment (ART) coverage and unmet need, and new HIV infections by district, or equivalent subnational administrative level. We developed a Bayesian small‐area estimation model, called Naomi, to estimate these quantities stratified by subnational administrative units, sex, and five‐year age groups. METHODS: Small‐area regressions for HIV prevalence, ART coverage and HIV incidence were jointly calibrated using subnational household survey data on all three indicators, routine antenatal service delivery data on HIV prevalence and ART coverage among pregnant women, and service delivery data on the number of PLHIV receiving ART. Incidence was modelled by district‐level HIV prevalence and ART coverage. Model outputs of counts and rates for each indicator were aggregated to multiple geographic and demographic stratifications of interest. The model was estimated in an empirical Bayes framework, furnishing probabilistic uncertainty ranges for all output indicators. Example results were presented using data from Malawi during 2016–2018. RESULTS: Adult HIV prevalence in September 2018 ranged from 3.2% to 17.1% across Malawi's districts and was higher in southern districts and in metropolitan areas. ART coverage was more homogenous, ranging from 75% to 82%. The largest number of PLHIV was among ages 35 to 39 for both women and men, while the most untreated PLHIV were among ages 25 to 29 for women and 30 to 34 for men. Relative uncertainty was larger for the untreated PLHIV than the number on ART or total PLHIV. Among clients receiving ART at facilities in Lilongwe city, an estimated 71% (95% CI, 61% to 79%) resided in Lilongwe city, 20% (14% to 27%) in Lilongwe district outside the metropolis, and 9% (6% to 12%) in neighbouring Dowa district. Thirty‐eight percent (26% to 50%) of Lilongwe rural residents and 39% (27% to 50%) of Dowa residents received treatment at facilities in Lilongwe city. CONCLUSIONS: The Naomi model synthesizes multiple subnational data sources to furnish estimates of key indicators for HIV programme planning, resource allocation, and target setting. Further model development to meet evolving HIV policy priorities and programme need should be accompanied by continued strengthening and understanding of routine health system data. |
format | Online Article Text |
id | pubmed-8454682 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | John Wiley and Sons Inc. |
record_format | MEDLINE/PubMed |
spelling | pubmed-84546822021-09-27 Naomi: a new modelling tool for estimating HIV epidemic indicators at the district level in sub‐Saharan Africa Eaton, Jeffrey W. Dwyer‐Lindgren, Laura Gutreuter, Steve O'Driscoll, Megan Stevens, Oliver Bajaj, Sumali Ashton, Rob Hill, Alexandra Russell, Emma Esra, Rachel Dolan, Nicolas Anifowoshe, Yusuf O. Woodbridge, Mark Fellows, Ian Glaubius, Robert Haeuser, Emily Okonek, Taylor Stover, John Thomas, Matthew L. Wakefield, Jon Wolock, Timothy M. Berry, Jonathan Sabala, Tomasz Heard, Nathan Delgado, Stephen Jahn, Andreas Kalua, Thokozani Chimpandule, Tiwonge Auld, Andrew Kim, Evelyn Payne, Danielle Johnson, Leigh F. FitzJohn, Richard G. Wanyeki, Ian Mahy, Mary I. Shiraishi, Ray W. J Int AIDS Soc Supplement: Research Articles INTRODUCTION: HIV planning requires granular estimates for the number of people living with HIV (PLHIV), antiretroviral treatment (ART) coverage and unmet need, and new HIV infections by district, or equivalent subnational administrative level. We developed a Bayesian small‐area estimation model, called Naomi, to estimate these quantities stratified by subnational administrative units, sex, and five‐year age groups. METHODS: Small‐area regressions for HIV prevalence, ART coverage and HIV incidence were jointly calibrated using subnational household survey data on all three indicators, routine antenatal service delivery data on HIV prevalence and ART coverage among pregnant women, and service delivery data on the number of PLHIV receiving ART. Incidence was modelled by district‐level HIV prevalence and ART coverage. Model outputs of counts and rates for each indicator were aggregated to multiple geographic and demographic stratifications of interest. The model was estimated in an empirical Bayes framework, furnishing probabilistic uncertainty ranges for all output indicators. Example results were presented using data from Malawi during 2016–2018. RESULTS: Adult HIV prevalence in September 2018 ranged from 3.2% to 17.1% across Malawi's districts and was higher in southern districts and in metropolitan areas. ART coverage was more homogenous, ranging from 75% to 82%. The largest number of PLHIV was among ages 35 to 39 for both women and men, while the most untreated PLHIV were among ages 25 to 29 for women and 30 to 34 for men. Relative uncertainty was larger for the untreated PLHIV than the number on ART or total PLHIV. Among clients receiving ART at facilities in Lilongwe city, an estimated 71% (95% CI, 61% to 79%) resided in Lilongwe city, 20% (14% to 27%) in Lilongwe district outside the metropolis, and 9% (6% to 12%) in neighbouring Dowa district. Thirty‐eight percent (26% to 50%) of Lilongwe rural residents and 39% (27% to 50%) of Dowa residents received treatment at facilities in Lilongwe city. CONCLUSIONS: The Naomi model synthesizes multiple subnational data sources to furnish estimates of key indicators for HIV programme planning, resource allocation, and target setting. Further model development to meet evolving HIV policy priorities and programme need should be accompanied by continued strengthening and understanding of routine health system data. John Wiley and Sons Inc. 2021-09-21 /pmc/articles/PMC8454682/ /pubmed/34546657 http://dx.doi.org/10.1002/jia2.25788 Text en © 2021 The Authors. Journal of the International AIDS Society published by John Wiley & Sons Ltd on behalf of the International AIDS Society. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited. |
spellingShingle | Supplement: Research Articles Eaton, Jeffrey W. Dwyer‐Lindgren, Laura Gutreuter, Steve O'Driscoll, Megan Stevens, Oliver Bajaj, Sumali Ashton, Rob Hill, Alexandra Russell, Emma Esra, Rachel Dolan, Nicolas Anifowoshe, Yusuf O. Woodbridge, Mark Fellows, Ian Glaubius, Robert Haeuser, Emily Okonek, Taylor Stover, John Thomas, Matthew L. Wakefield, Jon Wolock, Timothy M. Berry, Jonathan Sabala, Tomasz Heard, Nathan Delgado, Stephen Jahn, Andreas Kalua, Thokozani Chimpandule, Tiwonge Auld, Andrew Kim, Evelyn Payne, Danielle Johnson, Leigh F. FitzJohn, Richard G. Wanyeki, Ian Mahy, Mary I. Shiraishi, Ray W. Naomi: a new modelling tool for estimating HIV epidemic indicators at the district level in sub‐Saharan Africa |
title | Naomi: a new modelling tool for estimating HIV epidemic indicators at the district level in sub‐Saharan Africa |
title_full | Naomi: a new modelling tool for estimating HIV epidemic indicators at the district level in sub‐Saharan Africa |
title_fullStr | Naomi: a new modelling tool for estimating HIV epidemic indicators at the district level in sub‐Saharan Africa |
title_full_unstemmed | Naomi: a new modelling tool for estimating HIV epidemic indicators at the district level in sub‐Saharan Africa |
title_short | Naomi: a new modelling tool for estimating HIV epidemic indicators at the district level in sub‐Saharan Africa |
title_sort | naomi: a new modelling tool for estimating hiv epidemic indicators at the district level in sub‐saharan africa |
topic | Supplement: Research Articles |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8454682/ https://www.ncbi.nlm.nih.gov/pubmed/34546657 http://dx.doi.org/10.1002/jia2.25788 |
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