COVID-19 propagation mathematical modeling: the case of Senegal

Q2 Agricultural and Biological Sciences
Mouhamadou Diaby, Oumar Diop, A. Konté, A. Sène
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引用次数: 2

Abstract

The outburst of the COVID-19 pandemic has raised several questions leading to a complex system in terms of modeling. Indeed, the modeling of the epidemic, at the level of a country, needs considering each of the different sources of contamination as well as the public health authorities strategy, in a specific way. With this in mind, in the present paper, we develop a mathematical model of the COVID-19 epidemic in Senegal. In the model, the population is subdivided into five compartments: susceptible, infected but asymptomatic, symptomatic, quarantined, and recovered immune people. In addition, due to its important impact on the propagation of the disease, we add one more variable: the number of infected objects. Therefore, the model corresponds to a system of six non-linear ordinary differential equations we submit to an analytical study to prove the relevancy of the model,  simulate the evolution of the epidemic, and retrieve epidemiological parameters, namely the infection rate and the basic reproduction number. Based on the senegalese territory COVID-19 data, we simulate various scenarios as for the evolution of the epidemic in the country, in order to predict the peak and its magnitude with regard to the application of barrier measures. We also explore the option of collective immunity with special protection for vulnerable people. In doing so, non-available parameters are identified using some mathematical identification technics.
COVID-19传播数学建模:以塞内加尔为例
新冠肺炎疫情的爆发引发了几个问题,导致了一个复杂的建模系统。事实上,在一个国家层面上,流行病的建模需要以特定的方式考虑每种不同的污染源以及公共卫生当局的战略。考虑到这一点,在本文中,我们开发了塞内加尔新冠肺炎疫情的数学模型。在该模型中,人群被细分为五个部分:易感人群、感染但无症状人群、有症状人群、隔离人群和免疫康复人群。此外,由于其对疾病传播的重要影响,我们增加了一个变量:感染对象的数量。因此,该模型对应于我们提交给分析研究的六个非线性常微分方程组,以证明该模型的相关性,模拟疫情的演变,并检索流行病学参数,即感染率和基本繁殖数。根据塞内加尔领土新冠肺炎数据,我们模拟了该国疫情演变的各种情景,以预测屏障措施应用方面的峰值及其规模。我们还探讨了为弱势群体提供特殊保护的集体豁免方案。在这样做的过程中,使用一些数学识别技术来识别不可用的参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biomath
Biomath Agricultural and Biological Sciences-Agricultural and Biological Sciences (miscellaneous)
CiteScore
2.20
自引率
0.00%
发文量
6
审稿时长
20 weeks
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