FRC for Information and Computational Technologies, Novosibirsk, Russia.
Sirius University of Science and Technology, Sirius, Russia.
Sci Rep. 2023 Aug 18;13(1):13439. doi: 10.1038/s41598-023-40008-9.
SEIR (Susceptible-Exposed-Infected-Recovered) approach is a classic modeling method that is frequently used to study infectious diseases. However, in the vast majority of such models transitions from one population group to another are described using the mass-action law. That causes inability to reproduce observable dynamics of an infection such as the incubation period or progression of the disease's symptoms. In this paper, we propose a new approach to simulate the epidemic dynamics based on a system of differential equations with time delays and instant transitions to approximate durations of transition processes more correctly and make model parameters more clear. The suggested approach can be applied not only to Covid-19 but also to the study of other infectious diseases. We utilized it in the development of the delay-based model of the COVID-19 pandemic in Germany and France. The model takes into account testing of different population groups, symptoms progression from mild to critical, vaccination, duration of protective immunity and new virus strains. The stringency index was used as a generalized characteristic of the non-pharmaceutical government interventions in corresponding countries to contain the virus spread. The parameter identifiability analysis demonstrated that the presented modeling approach enables to significantly reduce the number of parameters and make them more identifiable. Both models are publicly available.
SEIR(易感-暴露-感染-恢复)方法是一种经典的建模方法,常用于研究传染病。然而,在绝大多数此类模型中,从一个人群组转移到另一个人群组是使用质量作用定律描述的。这导致无法再现感染的可观察动态,例如潜伏期或疾病症状的进展。在本文中,我们提出了一种新的方法,基于具有时滞和即时转换的微分方程系统来模拟传染病的动态,以更准确地近似过渡过程的持续时间,并使模型参数更加清晰。该方法不仅可应用于 COVID-19,还可用于研究其他传染病。我们在德国和法国的 COVID-19 大流行的基于时滞的模型开发中使用了它。该模型考虑了不同人群组的检测、从轻度到重症的症状进展、疫苗接种、保护性免疫持续时间和新病毒株。严格指数被用作相应国家控制病毒传播的非药物政府干预的广义特征。参数可识别性分析表明,所提出的建模方法可以显著减少参数数量并使它们更具可识别性。这两个模型都是公开的。