Abstract:
Background
Globally, the Human Immunodeficiency Virus continues to pose a serious threat to
public health. particularly in South Africa, where socioeconomic factors are linked to
the prevalence of infection. This study investigates the relationship between
socioeconomic status and HIV infection rates in the selected villages of Capricorn
District in Limpopo Province.
Methodology
This study employed a retrospective cohort approach using secondary data from HIV
testing results and socioeconomic assessments of adults in the in the selected villages
of Capricorn District in Limpopo Province. The SPSS version 28.0 was used to analyse
the data. 1. The findings and sociodemographic traits pertaining to HIV prevalence are
clearly displayed using tables, pie charts, and bar graphs. This study further utilised a
multivariate binary regression model to investigate the relationship between HIV
infection and various socio-economic factors, including age group, gender, marital
status, education level, employment status, financial status, household assets, and
SES. The analysis incorporated p-values and odds ratios to evaluate the significance
of the relationships between socio-economic variables and HIV status, enhancing the
understanding of factors influencing HIV infection within the study population.
Results
The study revealed an overall HIV prevalence of 3.8% in the selected villages of
Capricorn District in Limpopo Province falling under DIMAMO catchment area, with
higher rates among older individuals, particularly females. The results indicated that
higher educational attainment correlates with lower HIV positivity rates, while older
adults (ages 45-59) and individuals from economically vulnerable households are at
greater risk. Notably, a significant gender disparity was identified, with women
comprising 80% of the positive cases. While the data suggested a protective effect of
higher education levels against HIV infection, the associations between socio economic status factors and HIV status were not statistically significant. Economic
stability and employment did not demonstrate a clear relationship with HIV prevalence.
However, statistical analyses did not reveal significant associations between socio-
vi
economic status variables (education, financial status, or employment and HIV
infection).
Conclusion
This study highlights the complex interplay between socio-economic status and HIV
infection, suggesting that while certain socioeconomic factors may influence risk, they
do not uniformly predict infection rates. Targeted interventions are necessary to
address age-specific vulnerabilities and broader socioeconomic challenges to
enhance HIV prevention efforts in high-risk populations.