The unprecedented coronavirus disease 2019 (COVID-19) pandemic is still a worldwide threat to human life since its invasion into the daily lives of the public in the first several months of 2020. Predicting the size of confirmed cases is important for countries and communities to make proper prevention and control policies so as to effectively curb the spread of COVID-19. Different from the 2003 SARS epidemic and the worldwide 2009 H1N1 influenza pandemic, COVID-19 has unique epidemiological characteristics in its infectious and recovered compartments. This drives us to formulate a new infectious dynamic model for forecasting the COVID-19 pandemic within the human mobility network, named the SaucIR-model in the sense that the new compartmental model extends the benchmark SIR model by dividing the flow of people in the infected state into asymptomatic, pathologically infected but unconfirmed, and confirmed. Furthermore, we employ dynamic modeling of population flow in the model in order that spatial effects can be incorporated effectively. We forecast the spread of accumulated confirmed cases in some provinces of mainland China and other countries that experienced severe infection during the time period from late February to early May 2020. The novelty of incorporating the geographic spread of the pandemic leads to a surprisingly good agreement with published confirmed case reports. The numerical analysis validates the high degree of predictability of our proposed SaucIR model compared to existing resemblance. The proposed forecasting SaucIR model is implemented in Python. A web-based application is also developed by Dash (under construction).
翻译:自2020年头几个月入侵公众日常生活以来,2019年科罗纳病毒(COVID-19)这一史无前例的流行性冠状病毒疾病(COVID-19)在2020年头几个月仍对人的生命构成全球性威胁,预测确诊病例的规模对于各国和社区制定适当的预防和控制政策以有效遏制COVID-19的蔓延至关重要。不同于2003年SARS流行病和2009年全球H1N1流感大流行,COVID-19在传染和回收间隔中具有独特的流行病学特征。这促使我们制定一个新的传染性动态模型,用于预测人类流动网络内COVID-19大流行,称为 SaucIR模型,因为新的区际模型将基准SIR模型扩展,将受感染状态下的人的流量分成零位、病态感染但未经证实和确认的人群流动。此外,我们在模型中采用了动态的人口流动模型,以便有效地纳入空间影响。我们预测了中国大陆某些省份和其他在2月底至2020年5月初经历严重感染的国家累积的病例的蔓延程度(SaucIR模型称为SaoIR模型)的模型模型模型。将新的结构模型扩展了基准模式,比较了我们现有的数据库的地理预测性分析,将现有数据库的地理结构化为目前的模型。