Abstract

Stigma toward people living with HIV/AIDS (PLWHA) has impeded the response to the disease across the world. Widespread stigma leads to poor adherence of preventative measures while also causing PLWHA to avoid testing and care, delaying important treatment. Stigma is clearly a hugely complex construct. However, it can be broken down into components which include internalized stigma (how people with the trait feel about themselves) and enacted stigma (how a community reacts to an individual with the trait). Levels of HIV/AIDS-related stigma are particularly high in sub-Saharan Africa, which contributed to a surge in cases in Kenya during the late twentieth century. Since the early twenty-first century, the United Nations and governments around the world have worked to eliminate stigma from society and resulting public health education campaigns have improved the perception of PLWHA over time, but HIV/AIDS remains a significant problem, particularly in Kenya. We take a data-driven approach to create a time-dependent stigma function that captures both the level of internalized and enacted stigma in the population. We embed this within a compartmental model for HIV dynamics. Since 2000, the population in Kenya has been growing almost exponentially and so we rescale our model system to create a coupled system for HIV prevalence and fraction of individuals that are infected that seek treatment. This allows us to estimate model parameters from published data. We use the model to explore a range of scenarios in which either internalized or enacted stigma levels vary from those predicted by the data. This analysis allows us to understand the potential impact of different public health interventions on key HIV metrics such as prevalence and disease-related death and to see how close Kenya will get to achieving UN goals for these HIV and stigma metrics by 2030.

Highlights

  • HIV/AIDS-related stigma and discrimination continue to impede the progress of responses to HIV/AIDS across the world (Chesney and Smith 1999)

  • One in every eight People living with HIV/AIDS (PLWHA) are denied health care due to stigma regarding their status, and women living with HIV/AIDS face greater discrimination in health care than their male counterparts (Global Network of People with HIV/AIDS and International Community of Women living with HIV/AIDS 2017)

  • We focus on understanding the effects of stigma on HIV/AIDS dynamics in Kenya which has some of the highest estimated prevalence of HIV/AIDS in the world (UNAIDS 2018)

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Summary

Introduction

HIV/AIDS-related stigma and discrimination continue to impede the progress of responses to HIV/AIDS across the world (Chesney and Smith 1999). Available data across 19 countries confirm that one in four PLWHA face discrimination in health care (Global Network of People with HIV/AIDS and International Community of Women living with HIV/AIDS 2017), and one in five avoid healthcare treatment due to fear of discrimination (King et al 2013; Nyblade et al 2017). We seek to investigate the effects of HIV/AIDS-related stigma on the dynamics of an HIV infection model which includes a class of infected individuals that are receiving treatment. By establishing a model for population stigma, parameterizing it using data from Kenya Demographic and Health surveys (CBS et al 2004; Kenya National Bureau of Statistics (KNBS) and ICF Macro 2010, 2014) This feeds into a compartmental model for HIV infection in Kenya and the associated parameter estimation in Sect. We discuss our results in the context of the impact of stigma on HIV dynamics in Kenya highlighting the urgent need to gather more data on stigma and its associated impact on HIV dynamics

Modeling Population Stigma
Obtaining Data Points for Stigma in Kenya
Creating a Mechanistic Model for Stigma in Kenya
Modeling Infection Dynamics
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Parameter Estimation
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Results
Alternative Stigma Scenarios
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Stigma Decays Faster
No Internalized Stigma
Meeting UN Goals
Understanding the Dynamics
Discussion and Conclusions
Data for Kenya
Parameter Estimation Methodology
Sensitivity Analysis
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Steady State and Stability Calculations
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Full Text
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