S. Gounane, Y. Barkouch, Abdelghafour Atlas, M. Bendahmane, Fahd Karami, D. Meskine
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引用次数: 25
Abstract
Abstract Recently, various mathematical models have been proposed to model COVID-19 outbreak. These models are an effective tool to study the mechanisms of coronavirus spreading and to predict the future course of COVID-19 disease. They are also used to evaluate strategies to control this pandemic. Generally, SIR compartmental models are appropriate for understanding and predicting the dynamics of infectious diseases like COVID-19. The classical SIR model is initially introduced by Kermack and McKendrick (cf. (Anderson, R. M. 1991. “Discussion: the Kermack–McKendrick Epidemic Threshold Theorem.” Bulletin of Mathematical Biology 53 (1): 3–32; Kermack, W. O., and A. G. McKendrick. 1927. “A Contribution to the Mathematical Theory of Epidemics.” Proceedings of the Royal Society 115 (772): 700–21)) to describe the evolution of the susceptible, infected and recovered compartment. Focused on the impact of public policies designed to contain this pandemic, we develop a new nonlinear SIR epidemic problem modeling the spreading of coronavirus under the effect of a social distancing induced by the government measures to stop coronavirus spreading. To find the parameters adopted for each country (for e.g. Germany, Spain, Italy, France, Algeria and Morocco) we fit the proposed model with respect to the actual real data. We also evaluate the government measures in each country with respect to the evolution of the pandemic. Our numerical simulations can be used to provide an effective tool for predicting the spread of the disease.
近年来,人们提出了各种数学模型来模拟COVID-19的爆发。这些模型是研究新冠病毒传播机制和预测新冠病毒未来病程的有效工具。它们还用于评估控制这一流行病的战略。一般来说,SIR区室模型适用于理解和预测COVID-19等传染病的动态。经典SIR模型最初是由Kermack和McKendrick(参见Anderson, R. M. 1991)提出的。"讨论:Kermack-McKendrick流行病阈值定理"数学生物学通报53 (1):3-32;柯马克,W. O.和A. G.麦肯德里克。1927. 《流行病数学理论的贡献》《英国皇家学会学报》115(772):700-21)描述了易感、感染和恢复的隔室的演变。针对旨在遏制疫情的公共政策的影响,我们建立了一个新的非线性SIR流行病问题,该问题模拟了政府阻止冠状病毒传播措施引起的社会距离效应下冠状病毒的传播。为了找到每个国家(例如德国、西班牙、意大利、法国、阿尔及利亚和摩洛哥)采用的参数,我们根据实际的真实数据拟合提出的模型。我们还根据疫情的演变评估每个国家的政府措施。我们的数值模拟可以为预测疾病的传播提供有效的工具。
期刊介绍:
Epidemiologic Methods (EM) seeks contributions comparable to those of the leading epidemiologic journals, but also invites papers that may be more technical or of greater length than what has traditionally been allowed by journals in epidemiology. Applications and examples with real data to illustrate methodology are strongly encouraged but not required. Topics. genetic epidemiology, infectious disease, pharmaco-epidemiology, ecologic studies, environmental exposures, screening, surveillance, social networks, comparative effectiveness, statistical modeling, causal inference, measurement error, study design, meta-analysis