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Modelling the initial phase of an epidemic using incidence and infection network data: 2009 H1N1 pandemic in Israel as a case study

机译:使用发病率和感染网络数据为流行病的初始阶段建模:以2009年以色列H1N1大流行为例

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摘要

This paper presents new computational and modelling tools for studying the dynamics of an epidemic in its initial stages that use both available incidence time series and data describing the population's infection network structure. The work is motivated by data collected at the beginning of the H1N1 pandemic outbreak in Israel in the summer of 2009. We formulated a new discrete-time stochastic epidemic SIR (susceptible-infected-recovered) model that explicitly takes into account the disease's specific generation-time distribution and the intrinsic demographic stochasticity inherent to the infection process. Moreover, in contrast with many other modelling approaches, the model allows direct analytical derivation of estimates for the effective reproductive number (Re) and of their credible intervals, by maximum likelihood and Bayesian methods. The basic model can be extended to include age–class structure, and a maximum likelihood methodology allows us to estimate the model's next-generation matrix by combining two types of data: (i) the incidence series of each age group, and (ii) infection network data that provide partial information of ‘who-infected-who’. Unlike other approaches for estimating the next-generation matrix, the method developed here does not require making a priori assumptions about the structure of the next-generation matrix. We show, using a simulation study, that even a relatively small amount of information about the infection network greatly improves the accuracy of estimation of the next-generation matrix. The method is applied in practice to estimate the next-generation matrix from the Israeli H1N1 pandemic data. The tools developed here should be of practical importance for future investigations of epidemics during their initial stages. However, they require the availability of data which represent a random sample of the real epidemic process. We discuss the conditions under which reporting rates may or may not influence our estimated quantities and the effects of bias.
机译:本文提供了新的计算和建模工具,用于研究流行病在其初始阶段的动态,同时使用可用的发病时间序列和描述人群感染网络结构的数据。这项工作是基于2009年夏季以色列H1N1大流行爆发开始时收集的数据而推动的。我们制定了新的离散时间随机流行SIR(易感感染恢复)模型,明确考虑了疾病的特定世代时间分布和感染过程固有的固有人口统计随机性。此外,与许多其他建模方法相比,该模型允许通过最大似然法和贝叶斯方法直接分析得出有效生殖数(Re)及其可信区间的估计值。基本模型可以扩展为包括年龄级别的结构,最大似然方法允许我们通过组合两种数据来估计模型的下一代矩阵:(i)每个年龄组的发病率序列,以及(ii)提供“谁感染了谁”部分信息的感染网络数据。与估算下一代矩阵的其他方法不同,此处开发的方法不需要对下一代矩阵的结构进行先验假设。我们使用模拟研究表明,即使是有关感染网络的信息相对较少,也可以极大地提高下一代矩阵的估计准确性。该方法在实践中用于根据以色列H1N1大流行数据估算下一代矩阵。此处开发的工具对于流行病初期的进一步调查应具有实际意义。但是,它们要求提供代表实际流行过程随机样本的数据。我们讨论了报告率可能会或可能不会影响我们的估计数量的条件以及偏差的影响。

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