Lesego Gabaitiri, Henry G Mwambi, Stephen W Lagakos, Marcello Pagano
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引用次数: 0
摘要
摘要:流行病的流行程度和发病率是监测其影响、确定公共卫生优先事项、评估干预措施效果和规划的基本特征。估计发病率的一种直接方法是进行纵向队列研究,对无病个体的代表性样本进行一段特定时间的跟踪,并观察和记录新的感染病例。这种方法成本高、耗时长,而且容易因失去随访而产生偏差。另一种方法是使用生物标记物从横断面调查中估计发病率,以确定最近感染的人,如(Brookmeyer和Quinn, 1995;Janssen et al., 1998)。本文建立在Janssen等人(1998)的工作基础上,并通过纳入有关过去患病率的信息并推导发病率的最大似然估计,扩展了Balasubramanian和Lagakos(2010)提出的理论框架。通过模拟研究评估了所提出方法的性能,并使用2008年博茨瓦纳艾滋病影响(BAIS) III调查的数据说明了其使用情况。
A likelihood estimation of HIV incidence incorporating information on past prevalence.
Summary: The prevalence and incidence of an epidemic are basic characteristics that are essential for monitoring its impact, determining public health priorities, assessing the effect of interventions, and for planning purposes. A direct approach for estimating incidence is to undertake a longitudinal cohort study where a representative sample of disease free individuals are followed for a specified period of time and new cases of infection are observed and recorded. This approach is expensive, time consuming and prone to bias due to loss-to-follow-up. An alternative approach is to estimate incidence from cross sectional surveys using biomarkers to identify persons recently infected as in (Brookmeyer and Quinn, 1995; Janssen et al., 1998). This paper builds on the work of Janssen et al. (1998) and extends the theoretical framework proposed by Balasubramanian and Lagakos (2010) by incorporating information on past prevalence and deriving maximum likelihood estimators of incidence. The performance of the proposed method is evaluated through a simulation study, and its use is illustrated using data from the Botswana AIDS Impact (BAIS) III survey of 2008.
期刊介绍:
The journal will publish innovative contributions to the theory and application of statistics. Authoritative review articles on topics of general interest which are not readily accessible in a coherent form, will be also be considered for publication. Articles on applications or of a general nature will be published in separate sections and an author should indicate which of these sections an article is intended for. An applications article should normally consist of the analysis of actual data and need not necessarily contain new theory. The data should be made available with the article but need not necessarily be part of it.