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A novel Bayesian approach to predicting reductions in HIV incidence following increased testing interventions among gay bisexual and other men who have sex with men in Vancouver Canada

机译:在加拿大温哥华的男同性恋双性恋和其他与男性发生性关系的男性增加测试干预措施之后一种新颖的贝叶斯方法来预测艾滋病毒感染率的下降

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摘要

Increasing HIV testing rates among high-risk groups should lead to increased numbers of cases being detected. Coupled with effective treatment and behavioural change among individuals with detected infection, increased testing should also reduce onward incidence of HIV in the population. However, it can be difficult to predict the strengths of these effects and thus the overall impact of testing. We construct a mathematical model of an ongoing HIV epidemic in a population of gay, bisexual and other men who have sex with men. The model incorporates different levels of infection risk, testing habits and awareness of HIV status among members of the population. We introduce a novel Bayesian analysis that is able to incorporate potentially unreliable sexual health survey data along with firm clinical diagnosis data. We parameterize the model using survey and diagnostic data drawn from a population of men in Vancouver, Canada. We predict that increasing testing frequency will yield a small-scale but long-term impact on the epidemic in terms of new infections averted, as well as a large short-term impact on numbers of detected cases. These effects are predicted to occur even when a testing intervention is short-lived. We show that a short-lived but intensive testing campaign can potentially produce many of the same benefits as a campaign that is less intensive but of longer duration.
机译:高危人群中艾滋病毒检测率的上升应导致发现病例的增加。结合有效的治疗和发现感染的个体之间的行为改变,增加检测水平也应减少人群中艾滋病毒的继续发病率。但是,可能很难预测这些影响的强度,从而无法预测测试的总体影响。我们建立了一个在男同性恋,双性恋和其他与男性发生性关系的男性中持续进行的HIV流行的数学模型。该模型在人群中纳入了不同级别的感染风险,测试习惯和对艾滋病毒状况的了解。我们介绍了一种新颖的贝叶斯分析,该分析能够将可能不可靠的性健康调查数据与牢固的临床诊断数据结合在一起。我们使用从加拿大温哥华的一组男性中获得的调查和诊断数据对模型进行参数化。我们预测,随着避免新感染,不断增加的检测频率将对该流行病产生小规模但长期的影响,同时对检测到的病例数将产生较大的短期影响。即使测试干预是短暂的,也预计会发生这些影响。我们表明,短暂但密集的测试活动可能会产生与强度较低但持续时间较长的活动相同的许多好处。

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