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新冠病毒疾病(COVID-19)数据的感染易感性分层风险建模:一种确定性易感-暴露-感染-康复(SEIR)流行病模型分析

Infection vulnerability stratification risk modelling of COVID-19 data: a deterministic SEIR epidemic model analysis.

作者信息

Kumar Ajay, Choi Tsan-Ming, Wamba Samuel Fosso, Gupta Shivam, Tan Kim Hua

机构信息

AIM Research Center on Artificial Intelligence in Value Creation, EMLYON Business School, Paris, France.

Department and Graduate Institute of Business Administration, College of Management, National Taiwan University, Roosevelt Road, Taipei, 10617 Taiwan.

出版信息

Ann Oper Res. 2021 Jun 4:1-27. doi: 10.1007/s10479-021-04091-3.

Abstract

Basic Susceptible-Exposed-Infectious-Removed (SEIR) models of COVID-19 dynamics tend to be excessively pessimistic due to high basic reproduction values, which result in overestimations of cases of infection and death. We propose an extended SEIR model and daily data of COVID-19 cases in the U.S. and the seven largest European countries to forecast possible pandemic dynamics by investigating the effects of infection vulnerability stratification and measures on preventing the spread of infection. We assume that (i) the number of cases would be underestimated at the beginning of a new virus pandemic due to the lack of effective diagnostic methods and (ii) people more susceptible to infection are more likely to become infected; whereas during the later stages, the chances of infection among others will be reduced, thereby potentially leading to pandemic cessation. Based on infection vulnerability stratification, we demonstrate effects brought by the fraction of infected persons in the population at the start of pandemic deceleration on the cumulative fraction of the infected population. We interestingly show that moderate and long-lasting preventive measures are more effective than more rigid measures, which tend to be eventually loosened or abandoned due to economic losses, delay the peak of infection and fail to reduce the total number of cases. Our calculations relate the pandemic's second wave to high seasonal fluctuations and a low vulnerability stratification coefficient. Our characterisation of basic reproduction dynamics indicates that second wave of the pandemic is likely to first occur in Germany, Spain, France, and Italy, and a second wave is also possible in the U.K. and the U.S. Our findings show that even if the total elimination of the virus is impossible, the total number of infected people can be reduced during the deceleration stage.

摘要

由于基本再生数较高,新冠疫情动态的基本易感-暴露-感染-移除(SEIR)模型往往过于悲观,这导致对感染和死亡病例的高估。我们提出了一个扩展的SEIR模型,并利用美国和七个欧洲大国的新冠病例每日数据,通过研究感染易感性分层和预防感染传播措施的影响,来预测可能的疫情动态。我们假设:(i)在新病毒大流行开始时,由于缺乏有效的诊断方法,病例数会被低估;(ii)更容易感染的人更有可能被感染;而在后期,其他人的感染几率会降低,从而有可能导致疫情停止。基于感染易感性分层,我们展示了在疫情减速开始时人群中感染人群比例对累积感染人群比例的影响。我们有趣地发现,适度且持久的预防措施比更为严格的措施更有效,后者往往因经济损失最终会被放松或放弃,会推迟感染高峰且无法减少病例总数。我们的计算将疫情的第二波与高季节性波动和低易感性分层系数联系起来。我们对基本再生动态的描述表明,疫情的第二波可能首先出现在德国、西班牙、法国和意大利,英国和美国也有可能出现第二波。我们的研究结果表明,即使不可能完全消除病毒,在减速阶段也可以减少感染人数。

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