Ansumali Santosh, Kaushal Shaurya, Kumar Aloke, Prakash Meher K, Vidyasagar M
Jawaharlal Nehru Centre for Advanced Scientific Research, Bangalore, India.
Indian Institute of Science, Bangalore, India.
Annu Rev Control. 2020;50:432-447. doi: 10.1016/j.arcontrol.2020.10.003. Epub 2020 Oct 9.
The SARS-CoV-2 is a type of coronavirus that has caused the pandemic known as the Coronavirus Disease of 2019, or COVID-19. In traditional epidemiological models such as SEIR (Susceptible, Exposed, Infected, Removed), the exposed group does not infect the susceptible group . A distinguishing feature of COVID-19 is that, unlike with previous viral diseases, there is a distinct "asymptomatic" group , which does not show any symptoms, but can nevertheless infect others, at the same rate as infected symptomatic patients. This situation is captured in a model known as SAIR (Susceptible, Asymptomatic, Infected, Removed), introduced in Robinson and Stillianakis (2013). The dynamical behavior of the SAIR model is quite different from that of the SEIR model. In this paper, we use Lyapunov theory to establish the global asymptotic stabililty of the SAIR model, both without and with vital dynamics. Then we develop compartmental SAIR models to cater to the migration of population across geographic regions, and once again establish global asymptotic stability. Next, we go beyond long-term asymptotic analysis and present methods for estimating the parameters in the SAIR model. We apply these estimation methods to data from several countries including India, and demonstrate that the predicted trajectories of the disease closely match actual data. We show that "herd immunity" (defined as the time when the number of infected persons is maximum) can be achieved when the total of infected, symptomatic and asymptomatic persons is as low as 25% of the population. Previous estimates are typically 50% or higher. We also conclude that "lockdown" as a way of greatly reducing inter-personal contact has been very effective in checking the progress of the disease.
严重急性呼吸综合征冠状病毒2(SARS-CoV-2)是一种冠状病毒,它引发了被称为2019冠状病毒病(COVID-19)的全球大流行。在传统的流行病学模型中,如易感-暴露-感染-康复(SEIR)模型,暴露组不会感染易感组。COVID-19的一个显著特征是,与以往的病毒性疾病不同,它有一个独特的“无症状”群体,该群体不表现出任何症状,但仍能以与有症状感染患者相同的速率感染他人。这种情况在罗宾逊和斯蒂利亚纳基斯(2013年)引入的一个名为易感-无症状-感染-康复(SAIR)的模型中得到了体现。SAIR模型的动力学行为与SEIR模型有很大不同。在本文中,我们运用李雅普诺夫理论来建立有无生命动力学情况下SAIR模型的全局渐近稳定性。然后我们开发了分区SAIR模型以适应人口在不同地理区域的迁移,并再次建立全局渐近稳定性。接下来,我们超越长期渐近分析,提出了估计SAIR模型参数的方法。我们将这些估计方法应用于包括印度在内的几个国家的数据,并证明该疾病的预测轨迹与实际数据紧密匹配。我们表明,当感染、有症状和无症状人群总数低至人口的25%时,就可以实现“群体免疫”(定义为感染人数最多的时间)。先前的估计通常为50%或更高。我们还得出结论,作为一种大幅减少人际接触的方式,“封锁”在遏制疾病传播方面非常有效。