Laboratoire TCI UMR CNRS/Institut Telecom No. 5141, Paris Cedex 13, France.
J Biol Dyn. 2008 Oct;2(4):392-414. doi: 10.1080/17513750801993266.
This paper is devoted to the presentation and study of a specific stochastic epidemic model accounting for the effect of contact-tracing on the spread of an infectious disease. Precisely, one considers here the situation in which individuals identified as infected by the public health detection system may contribute to detecting other infectious individuals by providing information related to persons with whom they have had possibly infectious contacts. The control strategy, which consists of examining each individual who has been able to be identified on the basis of the information collected within a certain time period, is expected to efficiently reinforce the standard random-screening-based detection and considerably ease the epidemic. In the novel modelling of the spread of a communicable infectious disease considered here, the population of interest evolves through demographic, infection and detection processes, in a way that its temporal evolution is described by a stochastic Markov process, of which the component accounting for the contact-tracing feature is assumed to be valued in a space of point measures. For adequate scalings of the demographic, infection and detection rates, it is shown to converge to the weak deterministic solution of a PDE system, as a parameter n, interpreted as the population size, roughly speaking, becomes larger. From the perspective of the analysis of infectious disease data, this approximation result may serve as a key tool for exploring the asymptotic properties of standard inference methods such as maximum likelihood estimation. We state preliminary statistical results in this context. Eventually, relations of the model with the available data of the HIV epidemic in Cuba, in which country a contact-tracing detection system has been set up since 1986, is investigated and numerical applications are carried out.
本文致力于介绍和研究一种特定的随机传染病模型,该模型考虑了接触者追踪对传染病传播的影响。具体来说,这里考虑了这样一种情况,即被公共卫生检测系统识别为感染的个体可以通过提供与他们可能有传染性接触的人的信息,有助于检测其他传染性个体。控制策略包括检查在一定时间内根据收集的信息能够被识别的每个人,预计将有效地加强基于随机筛查的检测,并大大减轻疫情。在考虑的传染病传播的新模型中,感兴趣的人群通过人口统计学、感染和检测过程演变,其时间演变由随机马尔可夫过程描述,其中考虑接触者追踪特征的部分被假设为在点测度空间中取值。对于人口统计学、感染和检测率的适当缩放,当参数 n,大致表示为人口规模,变得更大时,它被证明收敛到 PDE 系统的弱确定性解。从传染病数据分析的角度来看,该逼近结果可以作为探索标准推断方法(如最大似然估计)的渐近性质的关键工具。我们在这方面陈述了初步的统计结果。最终,研究了模型与古巴艾滋病毒流行的现有数据之间的关系,该国自 1986 年以来建立了接触者追踪检测系统,并进行了数值应用。