论文标题
数据驱动的接触结构:从均质混合到多层网络
Data-driven contact structures: from homogeneous mixing to multilayer networks
论文作者
论文摘要
在过去的二十年左右的时间里,传播传播的建模已取得了重大进步。由于数据的扩散以及收集,挖掘和分析的新方法的发展,这是可能的。在网络科学等新学科中的最新进步也扮演着关键角色。但是,当前模型仍然缺乏可以从数据中提取的所有可能异质性和特征的忠实表示。在这里,我们弥合了传染病的数学建模中的当前差距,并开发了一个框架,该框架可以同时考虑个人的连通性和人群的年龄结构。我们比较了不同的场景,即,i)均匀的混合设置,ii)仅考虑社交混合的一种,iii)一个单独考虑个人连通性的环境,最后,iv)多层表示,其中社交混合和触点的数量包括在模型中。我们分析表明,这四种情况获得的阈值不同。此外,我们进行了广泛的数值模拟,并得出结论,接触网络中的异质性对于正确确定流行性阈值很重要,而年龄结构在爆发爆发之外起着更大的作用。总体而言,在评估诸如疫苗接种之类的干预措施时,两个个体异质性的来源都很重要,应同时考虑。我们的结果还提供了在人们无法访问所有需要的信息的情况下,在人口的连通性和年龄方面遇到的错误。
The modeling of the spreading of communicable diseases has experienced significant advances in the last two decades or so. This has been possible due to the proliferation of data and the development of new methods to gather, mine and analyze it. A key role has also been played by the latest advances in new disciplines like network science. Nonetheless, current models still lack a faithful representation of all possible heterogeneities and features that can be extracted from data. Here, we bridge a current gap in the mathematical modeling of infectious diseases and develop a framework that allows to account simultaneously for both the connectivity of individuals and the age-structure of the population. We compare different scenarios, namely, i) the homogeneous mixing setting, ii) one in which only the social mixing is taken into account, iii) a setting that considers the connectivity of individuals alone, and finally, iv) a multilayer representation in which both the social mixing and the number of contacts are included in the model. We analytically show that the thresholds obtained for these four scenarios are different. In addition, we conduct extensive numerical simulations and conclude that heterogeneities in the contact network are important for a proper determination of the epidemic threshold, whereas the age-structure plays a bigger role beyond the onset of the outbreak. Altogether, when it comes to evaluate interventions such as vaccination, both sources of individual heterogeneity are important and should be concurrently considered. Our results also provide an indication of the errors incurred in situations in which one cannot access all needed information in terms of connectivity and age of the population.