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Estimating the sizes of populations at risk of HIV infection from multiple data sources using a Bayesian hierarchical model

机译:使用贝叶斯层次模型从多个数据源估算有感染艾滋病毒风险的人口规模

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In most countries in the world outside of sub-Saharan Africa, HIV is largely concentrated in sub-populations whose behavior puts them at higher risk of contracting and transmitting HIV, such as people who inject drugs, sex workers and men who have sex with men. Estimating the size of these sub-populations is important for assessing overall HIV prevalence and designing effective interventions. We present a Bayesian hierarchical model for estimating the sizes of local and national HIV key affected populations. The model incorporates multiple commonly used data sources including mapping data, surveys, interventions, capture-recapture data, estimates or guesstimates from organizations, and expert opinion. The proposed model is used to estimate the numbers of people who inject drugs in Bangladesh.
机译:在撒哈拉以南非洲以外的世界上大多数国家中,艾滋病毒主要集中在亚人群中,这些人群的行为使他们更容易感染和传播艾滋病毒,例如注射毒品的人,性工作者和与男人发生性关系的男人。 。估计这些亚人群的规模对于评估总体HIV感染率和设计有效的干预措施非常重要。我们提出了一种贝叶斯分级模型,用于估算受当地和国家艾滋病毒影响的主要人群的规模。该模型合并了多个常用数据源,包括地图数据,调查,干预,捕获-捕获数据,组织的估计或估计以及专家意见。提议的模型用于估计孟加拉国的注射毒品人数。

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