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Effects of contact network structure on epidemic transmission trees: implications for data required to estimate network structure

机译:接触网络结构对流行病传播树的影响:对估计网络结构所需数据的影响

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摘要

Understanding the dynamics of disease spread is key to developing effective interventions to control or prevent an epidemic. The structure of the network of contacts over which the disease spreads has been shown to have a strong influence on the outcome of the epidemic, but an open question remains as to whether it is possible to estimate contact network features from data collected in an epidemic. The approach taken in this paper is to examine the distributions of epidemic outcomes arising from epidemics on networks with particular structural features to assess whether that structure could be measured from epidemic data, and what other constraints might be needed to make the problem identifiable. To this end, we vary the network size, mean degree, and transmissibility of the pathogen, as well as the network feature of interest: clustering, degree assortativity or attribute-based preferential mixing. We record several standard measures of the size and spread of the epidemic, as well as measures that describe the shape of the transmission tree in order to ascertain whether there are detectable signals in the final data from the outbreak. The results suggest that there is potential to estimate contact network features from transmission trees or pure epidemic data, particularly for diseases with high transmissibility or for which the relevant contact network is of low mean degree. Copyright
机译:了解疾病传播的动态是制定有效干预措施以控制或预防流行病的关键。疾病传播的联系网络结构已显示出对流行病结局有很大影响,但是关于是否有可能从流行病收集的数据中估算联系网络特征仍然是一个悬而未决的问题。本文采用的方法是检查具有特定结构特征的网络上由流行病引起的流行病结果的分布,以评估是否可以从流行病数据中测量该结构,以及可能需要哪些其他约束条件才能使问题得以识别。为此,我们改变了病原体的网络大小,平均程度和可传播性,以及感兴趣的网络特征:聚类,程度分类或基于属性的优先混合。我们记录了流行病的大小和传播的几种标准度量,以及描述传播树形状的度量,以便确定爆发的最终数据中是否存在可检测的信号。结果表明,有可能从传播树或纯流行数据中估计接触网络的特征,特别是对于具有高传播性或相关接触网络的平均程度较低的疾病。版权

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