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一种应用于武汉新冠疫情数据、传播参数存在跳跃的改进型SEIR模型。

A modified SEIR model with a jump in the transmission parameter applied to COVID-19 data on Wuhan.

作者信息

Bai Tian, Wang Dianpeng, Dai Wenlin

机构信息

School of Mathematics and Statistics Beijing Institute of Technology Beijing China.

Center for Applied Statistics, Institute of Statistics and Big Data Renmin University of China Beijing China.

出版信息

Stat (Int Stat Inst). 2022 Dec;11(1):e511. doi: 10.1002/sta4.511. Epub 2022 Dec 23.

Abstract

In December 2019, Wuhan, the capital of Hubei Province, was struck by an outbreak of COVID-19. Numerous studies have been conducted to fit COVID-19 data and make statistical inferences. In applications, functions of the parameters in the model are usually used to assess severity of the outbreak. Because of the strategies applied during the struggle against the pandemic, the trend of the parameters changes abruptly. However, time-varying parameters with a jump have received scant attention in the literature. In this study, a modified SEIR model is proposed to fit the actual situation of the COVID-19 epidemic. In the proposed model, the dynamic propagation system is modified because of the high infectivity during incubation, and a time-varying parametric strategy is suggested to account for the utility of the intervention. A corresponding model selection algorithm based on the information criterion is also suggested to detect the jump in the transmission parameter. A real data analysis based on the COVID-19 epidemic in Wuhan and a simulation study demonstrate the plausibility and validity of the proposed method.

摘要

2019年12月,湖北省省会武汉爆发了新型冠状病毒肺炎疫情。已经开展了大量研究来拟合新型冠状病毒肺炎数据并进行统计推断。在实际应用中,模型参数的函数通常用于评估疫情的严重程度。由于在抗击疫情期间采取的策略,参数的趋势会突然发生变化。然而,具有跳跃的时变参数在文献中很少受到关注。在本研究中,提出了一种改进的SEIR模型以拟合新型冠状病毒肺炎疫情的实际情况。在所提出的模型中,由于潜伏期的高传染性,对动态传播系统进行了修改,并提出了一种时变参数策略来考虑干预措施的作用。还提出了一种基于信息准则的相应模型选择算法来检测传播参数的跳跃。基于武汉新型冠状病毒肺炎疫情的实际数据分析和模拟研究证明了所提方法的合理性和有效性。

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