Including transgender populations in mathematical models for HIV treatment and prevention: current barriers and policy implications.
Diana M TordoffArjee Javellana RestarBrian MinalgaAtlas FernandezDobromir DimitrovAnn Duerrnull nullPublished in: Journal of the International AIDS Society (2024)
Modelling is an important tool for HIV prevention planning and a key step towards informing public health interventions, programming and policies for transgender populations. Our modelling framework underscores the importance of accurate trans-inclusive data collection methodologies, since the relevance of these analyses for informing public health decision-making is strongly dependent on the validity of the model parameterization and calibration targets. Adopting gender-inclusive and gender-specific approaches starting from the development and data collection stages of research can provide insights into how interventions, programming and policies can distinguish unique health needs across all gender groups. Moreover, in light of the data structure limitations, designing longitudinal surveillance data systems and probability samples will be critical to fill key research gaps, highlight progress and provide additional rigour to the current evidence. Investments and initiatives like Ending the HIV Epidemic in the United States can be further expanded and are highly needed to prioritize and value transgender populations across funding structures, goals and outcome measures.
Keyphrases
- public health
- hiv testing
- electronic health record
- global health
- mental health
- men who have sex with men
- big data
- antiretroviral therapy
- hiv infected
- hiv positive
- healthcare
- decision making
- human immunodeficiency virus
- physical activity
- high resolution
- hepatitis c virus
- hiv aids
- social media
- cross sectional
- replacement therapy
- smoking cessation