A decade of sustained geographic spread of HIV infections among women in Durban, South Africa

Abstract Background Fine scale geospatial analysis of HIV infection patterns can be used to facilitate geographically targeted interventions. Our objective was to use the geospatial technology to map age and time standardized HIV incidence rates over a period of 10 years to identify communities at h...

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Main Authors: Gita Ramjee, Benn Sartorius, Natashia Morris, Handan Wand, Tarylee Reddy, Justin D. Yssel, Frank Tanser
Format: Article
Language:English
Published: BMC 2019-06-01
Series:BMC Infectious Diseases
Subjects:
HIV
Online Access:http://link.springer.com/article/10.1186/s12879-019-4080-6
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spelling doaj-93977b90c8b14803b42e5e024763ab9b2020-11-25T03:12:02ZengBMCBMC Infectious Diseases1471-23342019-06-011911910.1186/s12879-019-4080-6A decade of sustained geographic spread of HIV infections among women in Durban, South AfricaGita Ramjee0Benn Sartorius1Natashia Morris2Handan Wand3Tarylee Reddy4Justin D. Yssel5Frank Tanser6HIV Prevention Research Unit, South African Medical Research CouncilSchool of Nursing and Public Health, University of KwaZulu-NatalBiostatistics Unit: GIS, South African Medical Research CouncilKirby Institute, University of New South WalesBiostatistics Unit, South African Medical Research CouncilHIV Prevention Research Unit, South African Medical Research CouncilSchool of Nursing and Public Health, University of KwaZulu-NatalAbstract Background Fine scale geospatial analysis of HIV infection patterns can be used to facilitate geographically targeted interventions. Our objective was to use the geospatial technology to map age and time standardized HIV incidence rates over a period of 10 years to identify communities at high risk of HIV in the greater Durban area. Methods HIV incidence rates from 7557 South African women enrolled in five community-based HIV prevention trials (2002–2012) were mapped using participant household global positioning system (GPS) coordinates. Age and period standardized HIV incidence rates were calculated for 43 recruitment clusters across greater Durban. Bayesian conditional autoregressive areal spatial regression (CAR) was used to identify significant patterns and clustering of new HIV infections in recruitment communities. Results The total person-time in the cohort was 9093.93 years and 613 seroconversions were observed. The overall crude HIV incidence rate across all communities was 6·74 per 100PY (95% CI: 6·22–7·30). 95% of the clusters had HIV incidence rates greater than 3 per 100PY. The CAR analysis identified six communities with significantly high HIV incidence. Estimated relative risks for these clusters ranged from 1.34 to 1.70. Consistent with these results, age standardized HIV incidence rates were also highest in these clusters and estimated to be 10 or more per 100 PY. Compared to women 35+ years old younger women were more likely to reside in the highest incidence areas (aOR: 1·51, 95% CI: 1·06–2·15; aOR: 1.59, 95% CI: 1·19–2·14 and aOR: 1·62, 95% CI: 1·2–2·18 for < 20, 20–24, 25–29 years old respectively). Partnership factors (2+ sex partners and being unmarried/not cohabiting) were also more common in the highest incidence clusters (aOR 1.48, 95% CI: 1.25–1.75 and aOR 1.54, 95% CI: 1.28–1.84 respectively). Conclusion Fine geospatial analysis showed a continuous, unrelenting, hyper HIV epidemic in most of the greater Durban region with six communities characterised by particularly high levels of HIV incidence. The results motivate for comprehensive community-based HIV prevention approaches including expanded access to PrEP. In addition, a higher concentration of HIV related services is required in the highest risk communities to effectively reach the most vulnerable populations.http://link.springer.com/article/10.1186/s12879-019-4080-6HIVSpatial epidemiologyMappingIncidenceRisk factorsHeterogeneity
collection DOAJ
language English
format Article
sources DOAJ
author Gita Ramjee
Benn Sartorius
Natashia Morris
Handan Wand
Tarylee Reddy
Justin D. Yssel
Frank Tanser
spellingShingle Gita Ramjee
Benn Sartorius
Natashia Morris
Handan Wand
Tarylee Reddy
Justin D. Yssel
Frank Tanser
A decade of sustained geographic spread of HIV infections among women in Durban, South Africa
BMC Infectious Diseases
HIV
Spatial epidemiology
Mapping
Incidence
Risk factors
Heterogeneity
author_facet Gita Ramjee
Benn Sartorius
Natashia Morris
Handan Wand
Tarylee Reddy
Justin D. Yssel
Frank Tanser
author_sort Gita Ramjee
title A decade of sustained geographic spread of HIV infections among women in Durban, South Africa
title_short A decade of sustained geographic spread of HIV infections among women in Durban, South Africa
title_full A decade of sustained geographic spread of HIV infections among women in Durban, South Africa
title_fullStr A decade of sustained geographic spread of HIV infections among women in Durban, South Africa
title_full_unstemmed A decade of sustained geographic spread of HIV infections among women in Durban, South Africa
title_sort decade of sustained geographic spread of hiv infections among women in durban, south africa
publisher BMC
series BMC Infectious Diseases
issn 1471-2334
publishDate 2019-06-01
description Abstract Background Fine scale geospatial analysis of HIV infection patterns can be used to facilitate geographically targeted interventions. Our objective was to use the geospatial technology to map age and time standardized HIV incidence rates over a period of 10 years to identify communities at high risk of HIV in the greater Durban area. Methods HIV incidence rates from 7557 South African women enrolled in five community-based HIV prevention trials (2002–2012) were mapped using participant household global positioning system (GPS) coordinates. Age and period standardized HIV incidence rates were calculated for 43 recruitment clusters across greater Durban. Bayesian conditional autoregressive areal spatial regression (CAR) was used to identify significant patterns and clustering of new HIV infections in recruitment communities. Results The total person-time in the cohort was 9093.93 years and 613 seroconversions were observed. The overall crude HIV incidence rate across all communities was 6·74 per 100PY (95% CI: 6·22–7·30). 95% of the clusters had HIV incidence rates greater than 3 per 100PY. The CAR analysis identified six communities with significantly high HIV incidence. Estimated relative risks for these clusters ranged from 1.34 to 1.70. Consistent with these results, age standardized HIV incidence rates were also highest in these clusters and estimated to be 10 or more per 100 PY. Compared to women 35+ years old younger women were more likely to reside in the highest incidence areas (aOR: 1·51, 95% CI: 1·06–2·15; aOR: 1.59, 95% CI: 1·19–2·14 and aOR: 1·62, 95% CI: 1·2–2·18 for < 20, 20–24, 25–29 years old respectively). Partnership factors (2+ sex partners and being unmarried/not cohabiting) were also more common in the highest incidence clusters (aOR 1.48, 95% CI: 1.25–1.75 and aOR 1.54, 95% CI: 1.28–1.84 respectively). Conclusion Fine geospatial analysis showed a continuous, unrelenting, hyper HIV epidemic in most of the greater Durban region with six communities characterised by particularly high levels of HIV incidence. The results motivate for comprehensive community-based HIV prevention approaches including expanded access to PrEP. In addition, a higher concentration of HIV related services is required in the highest risk communities to effectively reach the most vulnerable populations.
topic HIV
Spatial epidemiology
Mapping
Incidence
Risk factors
Heterogeneity
url http://link.springer.com/article/10.1186/s12879-019-4080-6
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