Prediction of COVID-19 pandemic dynamics in Russia based on simple mathematical models of epidemics

D. Tomchin, Maria Sitchikhina, M. Ananyevskiy, T. Sventsitskaya, A. Fradkov
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引用次数: 2

Abstract

Introduction: The COVID-19 pandemic which began in 2020 and has taken more than five million lives has become a threat to the very existence of mankind. Therefore, predicting the spread of COVID-19 in each individual country is a very urgent task. The complexity of its solution is due to the requirement for fast processing of large amounts of data and the fact that the data are mostly inaccurate and do not have the statistical properties necessary for the successful application of statistical methods. Therefore, it seems important to develop simple forecasting methods based on classical simple models of epidemiology which are only weakly sensitive to data inaccuracies. It is also important to demonstrate the feasibility of the approach in relation to the incidence data in Russia. Purpose: Obtaining forecast data based on classical simple models of epidemics, namely SIR and SEIR. Methods: For discrete versions of SIR and SEIR models, it is proposed to estimate the parameters of the models using a reduced version of the least squares method, and apply a scenario approach to the forecasting. The simplicity and a small number of parameters are the advantages of SIR and SEIR models, which is very important in the context of a lack of numerical input data and structural incompleteness of the models. Results: A forecast of the spread of COVID-19 in Russia has been built based on published data on the incidence from March 10 to April 20, 2020, and then, selectively, according to October 2020 data and October 2021 data. The results of the comparison between SIR and SEIR forecasts are presented. The same method was used to construct and present forecasts based on morbidity data in the fall of 2020 and in the fall of 2021 for Russia and for St. Petersburg. To set the parameters of the models which are difficult to determine from the official data, a scenario approach is used: the dynamics of the epidemic is analyzed for several possible values of the parameters. Practical relevance: The results obtained show that the proposed method predicts well the time of the onset of the peak incidence, despite the inaccuracy of the initial data.
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基于流行简单数学模型的俄罗斯COVID-19大流行动态预测
简介:始于2020年的新冠肺炎大流行夺走了500多万人的生命,已成为对人类生存的威胁。因此,预测新冠肺炎在每个国家的传播是一项非常紧迫的任务。其解决方案的复杂性是由于需要快速处理大量数据,而且数据大多不准确,不具备成功应用统计方法所需的统计特性。因此,在经典的简单流行病学模型的基础上开发简单的预测方法似乎很重要,这些模型对数据不准确的敏感性很弱。根据俄罗斯的发病率数据证明该方法的可行性也很重要。目的:基于经典的流行病简单模型,即SIR和SEIR,获得预测数据。方法:对于SIR和SEIR模型的离散版本,建议使用最小二乘法的简化版本来估计模型的参数,并将情景方法应用于预测。SIR和SEIR模型的优点是简单性和参数数量少,这在缺乏数字输入数据和模型结构不完整的情况下非常重要。结果:根据已公布的2020年3月10日至4月20日的发病率数据,然后根据2020年10月的数据和2021年10月数据,有选择地对新冠肺炎在俄罗斯的传播进行了预测。给出了SIR和SEIR预测之间的比较结果。同样的方法也用于根据俄罗斯和圣彼得堡2020年秋季和2021年秋季的发病率数据构建和呈现预测。为了设置难以从官方数据中确定的模型参数,使用了一种情景方法:分析流行病的动态,寻找几个可能的参数值。实际相关性:所获得的结果表明,尽管初始数据不准确,但所提出的方法很好地预测了峰值发生率的开始时间。
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来源期刊
Informatsionno-Upravliaiushchie Sistemy
Informatsionno-Upravliaiushchie Sistemy Mathematics-Control and Optimization
CiteScore
1.40
自引率
0.00%
发文量
35
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