Motivated by the recent outbreak of coronavirus (COVID-19), we propose a stochastic model of epidemic temporal growth and mitigation based on a time-modulated Hawkes process. The model is sufficiently rich to incorporate specific characteristics of the novel coronavirus, to capture the impact of undetected, asymptomatic and super-diffusive individuals, and especially to take into account time-varying counter-measures and detection efforts. Yet, it is simple enough to allow scalable and efficient computation of the temporal evolution of the epidemic, and exploration of what-if scenarios. Compared to traditional compartmental models, our approach allows a more faithful description of virus specific features, such as distributions for the time spent in stages, which is crucial when the time-scale of control (e.g., mobility restrictions) is comparable to the lifetime of a single infection. We apply the model to the first and second wave of COVID-19 in Italy, shedding light into several effects related to mobility restrictions introduced by the government, and to the effectiveness of contact tracing and mass testing performed by the national health service.
翻译:由于最近爆发了冠状病毒(COVID-19),我们提出了一个基于时间调整的霍克斯过程的流行病暂时增长和减缓的随机模型,该模型足够丰富,足以纳入新冠状病毒的具体特点,捕捉未发现、无症状和超困难个人的影响,特别是考虑到时间变化的反制措施和检测努力。然而,它非常简单,可以对流行病的时间演变进行可缩放和高效的计算,并探索哪些情况。与传统的区划模型相比,我们的方法可以更忠实地描述病毒的具体特征,例如分阶段分配病毒的具体特征,当控制的时间尺度(例如行动限制)与单一感染的寿命相当时,这一点至关重要。我们对意大利的COVID-19第一波和第二波采用该模型,对政府引入的流动限制产生的若干影响以及国家保健服务进行的接触追踪和大规模测试的有效性进行透视。