| Literature DB >> 29422096 |
Laurence Palk1, Sally Blower2.
Abstract
BACKGROUND: In sub-Saharan Africa, where ~ 25 million individuals are infected with HIV and transmission is predominantly heterosexual, there is substantial geographic variation in the severity of epidemics. This variation has yet to be explained. Here, we propose that it is due to geographic variation in the size of the high-risk group (HRG): the group with a high number of sex partners. We test our hypothesis by conducting a geospatial analysis of data from Malawi, where ~ 13% of women and ~ 8% of men are infected with HIV.Entities:
Keywords: Epidemiology; Geostatistics; HIV; Malawi; Sexual behavior; Sub-Saharan Africa
Mesh:
Year: 2018 PMID: 29422096 PMCID: PMC5806472 DOI: 10.1186/s12916-018-1006-x
Source DB: PubMed Journal: BMC Med ISSN: 1741-7015 Impact factor: 8.775
Fig. 1a Map of Malawi. Background colors reflect topography; the altitude scale is in meters. Blue lines show roads. Cities and towns in Malawi and surrounding countries are shown in red and yellow, respectively. Villages in Malawi are shown in pink, and blue-striped areas represent lakes. b Map showing the sample cluster locations for the Demographic and Health Survey conducted in 2010 in Malawi. Rural locations are shown by black diamonds, urban locations by red diamonds. The three administrative regions in Malawi are color-coded: North (gray), Central (yellow), and South (blue). Black lines mark the boundaries of the 27 districts that were included in the survey. c The population density map for Malawi. The color code shows the number of individuals per square kilometer
Fig. 2a Histogram showing the distribution of the number of lifetime sex partners for women (aged 15–49 years old). Data are from the 7396 women in the 2010 Malawi Demographic and Health Survey (MDHS) who were tested for HIV. b Histogram showing the distribution of the number of lifetime sex partners for men (aged 15–49 years old). Data are from the 6509 men in the 2010 MDHS who were tested for HIV. c HIV prevalence (%) stratified by number of lifetime sex partners. Data are from the 7396 women and 6509 men in the 2010 MDHS who were tested for HIV
Fig. 3a HIV epidemic surface prevalence (ESP) map for women (15–49 years old). Prevalence is shown as the percentage of women who are infected with HIV. Data used to construct the map are from the 7396 women in the 2010 Malawi Demographic and Health Survey (MDHS) who were tested for HIV. b HIV ESP map for men (15–49 years old). Prevalence is shown as the percentage of men who are infected with HIV. Data used to construct the map are from the 6509 men in the 2010 MDHS who were tested for HIV. c Map showing, for women, geographic variation in the size of the HRG. The size of the HRG is defined as the percentage of women (15–49 years old) who have had three or more lifetime sex partners. Data used to construct the map are from the 7396 women who participated in the 2010 MDHS and were tested for HIV. d Map showing, for men, geographic variation in the size of the HRG. The size of the HRG is defined as the percentage of men (15–49 years old) who have had four or more lifetime sex partners. Data used to construct the map are from the 6509 men who participated in the 2010 MDHS and were tested for HIV
Results from the spatial and non-spatial district-level regression models: ordinary least squares regression (OLSR) and spatial error regression (SER). The SER model includes a spatially auto-correlated error term which accounts for the fact that variables that are geographically close are more likely to be similar. The size of the HRG in each district, for women, is defined as the proportion of women (15–49 years old) in the district who have had three or more lifetime sex partners (LSPs). The size of the HRG in each district, for men, is defined as the proportion of men (15–49 years old) in the district who have had four or more LSPs
| HIV prevalence, women | HIV prevalence, men | |||
|---|---|---|---|---|
| OLSR | SER | OLSR | SER | |
| Size of the high-risk group (HRG) | 0.53*** | 0.33*** | 0.30** | 0.19*** |
| Constant | 0.04 | 0.06 | –0.02 | 0.02 |
| Lambda | NA | 0.63*** | NA | 0.73*** |
| AIC | –105 | –112 | –104 | –120 |
| | 0.60 | 0.73 | 0.28 | 0.67 |
Lambda represents the level of auto-correlation in the error term
Asterisks denote the significance level according to the following P-values: ***P < 0.001, **P < 0.01
AIC Akaike information criterion
Fig. 4a Residuals from the spatial error regression model for women. The 20 districts where the residual is less than one standard deviation are shown in gray. The remaining colors show the degree to which the model under/overestimates prevalence in terms of the number of standard deviations. b Residuals from the spatial error regression model for men. The 19 districts where the residual is less than one standard deviation are shown in gray. The remaining colors show the degree to which the model under/overestimates prevalence in terms of the number of standard deviations