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A stochastic infection rate model for estimating and projecting national HIV prevalence rates

机译:估计和预测全国艾滋病毒流行率的随机感染率模型

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摘要

Background Every 2 years, the Joint United Nations Programme on HIV/AIDS (UNAIDS) produces probabilistic estimates and projections of HIV prevalence rates for countries with generalised HIV/AIDS epidemics. To do this they use a simple epidemiological model and data from antenatal clinics and household surveys. The estimates are made using the Bayesian melding method, implemented by the incremental mixture importance sampling technique. This methodology is referred to as the 'estimation and projection package (EPP) model'. This has worked well for estimating and projecting prevalence in most countries. However, there has recently been an 'uptick' in prevalence in Uganda after a long sustained decline, which the EPP model does not predict.Methods To address this problem, a modification of the EPP model, called the 'r stochastic model' is proposed, in which the infection rate is allowed to vary randomly in time and is applied to the entire non-infected population.Results The resulting method yielded similar estimates of past prevalence to the EPP model for four countries and also similar median ('best') projections, but produced prediction intervals whose widths increased over time and that allowed for the possibility of an uptick after a decline. This seems more realistic given the recent Ugandan experience.
机译:背景技术联合国艾滋病毒/艾滋病联合规划署(艾滋病规划署)每两年就对艾滋病毒/艾滋病普遍流行的国家进行概率估计和艾滋病毒流行率的预测。为此,他们使用了简单的流行病学模型以及产前诊所和家庭调查的数据。估计是使用贝叶斯(Bayesian)融合方法进行的,该方法通过增量混合重要性抽样技术实现。这种方法被称为“估计和预测包(EPP)模型”。在大多数国家中,这种方法对于估计和预测患病率非常有效。然而,最近乌干达长期持续下降之后流行率出现了``上升'',这是EPP模型无法预测的。方法为了解决这个问题,提出了对EPP模型的一种改进,称为``r随机模型''。结果,所得到的方法对四个国家的EPP模型过去的流行率进行了相似的估计,并且中位数(“最佳”)也相似预测,但产生了预测间隔,其宽度随着时间的推移而增加,并允许下降后出现上升趋势。鉴于最近的乌干达经验,这似乎更加现实。

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