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Modified SEIR and AI prediction of the epidemics trend of COVID-19 in China under public health interventions

机译:公共卫生干预措施修改了中国Covid-19的流行病趋势的改进的Seir和AI预测

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Background: The coronavirus disease 2019 (COVID-19) outbreak originating in Wuhan, Hubei province, China, coincided with chunyun, the period of mass migration for the annual Spring Festival. To contain its spread, China adopted unprecedented nationwide interventions on January 23 2020. These policies included large-scale quarantine, strict controls on travel and extensive monitoring of suspected cases. However, it is unknown whether these policies have had an impact on the epidemic. We sought to show how these control measures impacted the containment of the epidemic. Methods: We integrated population migration data before and after January 23 and most updated COVID-19 epidemiological data into the Susceptible-Exposed-Infectious-Removed (SEIR) model to derive the epidemic curve. We also used an artificial intelligence (AI) approach, trained on the 2003 SARS data, to predict the epidemic. Results: We found that the epidemic of China should peak by late February, showing gradual decline by end of April. A five-day delay in implementation would have increased epidemic size in mainland China three-fold. Lifting the Hubei quarantine would lead to a second epidemic peak in Hubei province in mid-March and extend the epidemic to late April, a result corroborated by the machine learning prediction. Conclusions: Our dynamic SEIR model was effective in predicting the COVID-19 epidemic peaks and sizes. The implementation of control measures on January 23 2020 was indispensable in reducing the eventual COVID-19 epidemic size.
机译:背景:2019年冠状病毒疾病2019(Covid-19)爆发源于中国湖北省武汉,恰逢春云,为年春节迁移时期。为了遏制其传播,中国在2020年1月23日通过了前所未有的全国性干预措施。这些政策包括大规模的检疫,严格控制旅行和对涉嫌案件的广泛监测。然而,这是未知这些政策是否对疫情产生影响。我们试图展示这些控制措施如何影响流行病的遏制。方法:我们在1月23日之前和之后综合人口迁移数据以及大多数更新的Covid-19流行病学数据进入易感暴露的暴露(SEIR)模型,以导出流行病曲线。我们还使用了一种人工智能(AI)方法,在2003年的SARS数据上培训,预测流行病。结果:我们发现,中国的流行病应该达到2月底,逐步下降到4月底。实施五天的实施延迟将在中国大陆的疫情规模增加三倍。提升湖北检疫将在3月中旬导致湖北省第二次疫情,并将疫情扩展到4月下旬,这是机器学习预测的结果。结论:我们的动态SEIR模型可有效预测Covid-19流行病峰和尺寸。在降低最终Covid-19流行病的情况下,1月23日2020年1月23日的控制措施的实施是必不可少的。

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