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Bayesian evidence synthesis for a transmission dynamic model for HIV among men who have sex with men

机译:贝叶斯证据综合法在男男性接触者中传播艾滋病毒的动力学模型

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摘要

Understanding infectious disease dynamics and the effect on prevalence and incidence is crucial for public health policies. Disease incidence and prevalence are typically not observed directly and increasingly are estimated through the synthesis of indirect information from multiple data sources. We demonstrate how an evidence synthesis approach to the estimation of human immunodeficiency virus (HIV) prevalence in England and Wales can be extended to infer the underlying HIV incidence. Diverse time series of data can be used to obtain yearly “snapshots” (with associated uncertainty) of the proportion of the population in 4 compartments: not at risk, susceptible, HIV positive but undiagnosed, and diagnosed HIV positive. A multistate model for the infection and diagnosis processes is then formulated by expressing the changes in these proportions by a system of differential equations. By parameterizing incidence in terms of prevalence and contact rates, HIV transmission is further modeled. Use of additional data or prior information on demographics, risk behavior change and contact parameters allows simultaneous estimation of the transition rates, compartment prevalences, contact rates, and transmission probabilities.
机译:了解传染病动态及其对患病率和发病率的影响对于公共卫生政策至关重要。通常不会直接观察到疾病的发病率和流行率,并且通过综合来自多个数据源的间接信息来估计疾病的发病率和流行率。我们展示了如何扩展证据合成方法来估计英格兰和威尔士的人类免疫缺陷病毒(HIV)患病率,以推断潜在的HIV发病率。可以使用不同时间序列的数据来获取4个区室中人口比例的年度“快照”(具有相关的不确定性):没有危险,易感,HIV阳性但未经诊断和诊断为HIV阳性。然后,通过微分方程系统表达这些比例的变化,从而制定出用于感染和诊断过程的多状态模型。通过根据患病率和接触率对发病率进行参数化,可以进一步模拟HIV传播。使用有关人口统计资料,风险行为变化和联系参数的其他数据或先验信息可以同时估算过渡率,车厢患病率,联系率和传播概率。

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  • 来源
    《Biostatistics》 |2011年第4期|p.666-681|共16页
  • 作者

    A. M. Presanis;

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  • 正文语种 eng
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