We propose a multi-layer network model for the spread of COVID-19 that accounts for interactions within the family, between schoolmates, and casual contacts in the population. We utilize the proposed model-calibrated on epidemiological and demographic data-to investigate current questions concerning the implementation of non-pharmaceutical interventions (NPIs) during the vaccination campaign. Specifically, we consider scenarios in which the most fragile population has already received the vaccine, and we focus our analysis on the role of schools as drivers of the contagions and on the implementation of targeted intervention policies oriented to children and their families. We perform our analysis by means of a campaign of Monte Carlo simulations. Our findings suggest that, in a phase with NPIs enacted but in-person education, children play a key role in the spreading of COVID-19. Interestingly, we show that children's testing might be an important tool to flatten the epidemic curve, in particular when combined with enacting temporary online education for classes in which infected students are detected. Finally, we test a vaccination strategy that prioritizes the members of large families and we demonstrate its good performance. We believe that our modeling framework and our findings could be of help for public health authorities for planning their current and future interventions, as well as to increase preparedness for future epidemic outbreaks.
翻译:我们提出一个传播COVID-19的多层次网络模式,说明家庭内部、校友之间和人口临时接触之间的相互作用;我们利用拟议的流行病学和人口数据模型校准流行病学和人口数据模型,调查在疫苗接种运动期间实施非药物干预(NPIs)的当前问题;具体地说,我们考虑最脆弱人口已经获得疫苗的情景,我们集中分析学校作为传染驱动因素的作用以及针对儿童及其家庭的有针对性的干预政策的执行情况;我们通过蒙特卡洛模拟运动进行分析;我们的调查结果表明,在已经颁布NPIs但进行面对面教育的阶段,儿童在传播COVID-19方面发挥着关键作用。有意思的是,我们表明儿童测试可能是稳定流行病曲线的重要工具,特别是当我们同时对发现受感染学生的班子实施临时在线教育时;我们测试了一种以大家庭成员为优先对象的疫苗接种战略,我们展示了它的良好表现;我们认为,在已经颁布NPIPISD-19的阶段,儿童在传播COVID-19方面发挥着关键作用。有趣的是,我们表明,儿童测试可能是一种重要工具,可以用来稳定流行病的曲线曲线,特别是当结合对被感染学生进行临时在线教育时,我们测试时,我们测试一项疫苗战略,它将优先考虑大家庭成员,并展示其良好的效果。 我们相信,我们的模型框架和我们的调查结果可以帮助公众规划,作为流行病的流行病的流行病爆发。