Diana M. Tordoff, Arjee Restar, Brian Minalga, Atlas Fernandez, Dobromir Dimitrov, Ann Duerr, the Seattle Trans and Nonbinary Sexual Health (STARS) Advisory Board
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This commentary discusses current structural challenges to developing robust and accurate trans-inclusive models and identifies opportunities for future research and policy, with a focus on examples from the United States.</p>\n </section>\n \n <section>\n \n <h3> Discussion</h3>\n \n <p>As of April 2024, only seven published mathematical models of HIV transmission include transgender people. Existing models have several notable limitations and biases that limit their utility for informing public health intervention. Notably, no models include transgender men or nonbinary individuals, despite these populations being disproportionately impacted by HIV relative to cisgender populations. In addition, existing mathematical models of HIV transmission do not accurately represent the sexual network of transgender people. Data availability and quality remain a significant barrier to the development of accurate trans-inclusive mathematical models of HIV. Using a community-engaged approach, we developed a modelling framework that addresses the limitations of existing model and to highlight how data availability and quality limit the utility of mathematical models for transgender populations.</p>\n </section>\n \n <section>\n \n <h3> Conclusions</h3>\n \n <p>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.</p>\n </section>\n </div>","PeriodicalId":201,"journal":{"name":"Journal of the International AIDS Society","volume":"27 6","pages":""},"PeriodicalIF":4.6000,"publicationDate":"2024-06-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://onlinelibrary.wiley.com/doi/epdf/10.1002/jia2.26304","citationCount":"0","resultStr":"{\"title\":\"Including transgender populations in mathematical models for HIV treatment and prevention: current barriers and policy implications\",\"authors\":\"Diana M. 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引用次数: 0
摘要
导言:艾滋病毒的数学模型在指导和评估艾滋病毒政策方面具有独特的重要性。变性人和非二元人群受到艾滋病毒的影响尤为严重;然而,目前已发表的艾滋病毒传播数学模型中,很少包含变性人和非二元人群。这篇评论以美国的实例为重点,讨论了当前在开发强大而准确的跨性别包容性模型方面所面临的结构性挑战,并指出了未来研究和政策的机遇:截至 2024 年 4 月,仅有七个已发表的艾滋病毒传播数学模型包含变性人。现有模型存在一些明显的局限性和偏差,限制了其为公共卫生干预提供信息的效用。值得注意的是,没有任何模型包括变性男性或非二元个人,尽管这些人群受到艾滋病毒的影响比顺性人群更大。此外,现有的 HIV 传播数学模型并不能准确地代表变性人的性网络。数据的可用性和质量仍然是开发准确的跨性别艾滋病毒数学模型的重大障碍。利用社区参与的方法,我们开发了一个建模框架,以解决现有模型的局限性,并强调数据可用性和质量如何限制了数学模型对跨性别人群的实用性:建模是艾滋病毒预防规划的重要工具,也是为变性人群体的公共卫生干预措施、规划和政策提供信息的关键步骤。我们的建模框架强调了准确的跨性别数据收集方法的重要性,因为这些分析对公共卫生决策的相关性在很大程度上取决于模型参数化和校准目标的有效性。从研究的开发和数据收集阶段开始,就采用性别包容和性别特定的方法,可以深入了解干预措施、计划和政策如何区分所有性别群体的独特健康需求。此外,鉴于数据结构的局限性,设计纵向监测数据系统和概率样本对于填补关键研究空白、突出进展和为现有证据提供更多严谨性至关重要。像美国 "消除艾滋病毒流行 "这样的投资和倡议可以进一步扩大,而且亟需在各种供资结构、目标和成果措施中优先考虑和重视跨性别人群。
Including transgender populations in mathematical models for HIV treatment and prevention: current barriers and policy implications
Introduction
Mathematical models of HIV have been uniquely important in directing and evaluating HIV policy. Transgender and nonbinary people are disproportionately impacted by HIV; however, few mathematical models of HIV transmission have been published that are inclusive of transgender and nonbinary populations. This commentary discusses current structural challenges to developing robust and accurate trans-inclusive models and identifies opportunities for future research and policy, with a focus on examples from the United States.
Discussion
As of April 2024, only seven published mathematical models of HIV transmission include transgender people. Existing models have several notable limitations and biases that limit their utility for informing public health intervention. Notably, no models include transgender men or nonbinary individuals, despite these populations being disproportionately impacted by HIV relative to cisgender populations. In addition, existing mathematical models of HIV transmission do not accurately represent the sexual network of transgender people. Data availability and quality remain a significant barrier to the development of accurate trans-inclusive mathematical models of HIV. Using a community-engaged approach, we developed a modelling framework that addresses the limitations of existing model and to highlight how data availability and quality limit the utility of mathematical models for transgender populations.
Conclusions
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.
期刊介绍:
The Journal of the International AIDS Society (JIAS) is a peer-reviewed and Open Access journal for the generation and dissemination of evidence from a wide range of disciplines: basic and biomedical sciences; behavioural sciences; epidemiology; clinical sciences; health economics and health policy; operations research and implementation sciences; and social sciences and humanities. Submission of HIV research carried out in low- and middle-income countries is strongly encouraged.