美国COVID-19的介绍模型

P. Nelson
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引用次数: 0

摘要

学生开发和测试由严重急性呼吸综合征冠状病毒2 (SARS-CoV-2)病毒引起的2019冠状病毒病(COVID-19)传播的简单动力学模型。采用Microsoft Excel作为建模平台,因为它对学生没有威胁,而且使用广泛。学生开发有限差分模型,并在预格式化电子表格的单元格中实现它们,遵循指导式探究教学法,以循序渐进的方式引入新的模型参数。这种方法允许学生以系统的方式研究新模型参数的含义。学生们使用最小二乘技术和Excel的求解器将结果模型与美国每天报告的病例数据拟合。学生们使用自己的电子表格发现,COVID-19最初的指数增长可以用简化的无限增长模型和易感感染康复模型来解释。他们还发现,社交距离的影响可以使用感染率系数的高斯过渡函数来建模,夏季的激增是由于过早放松社交距离,然后重新实施更严格的社交距离造成的。然后,学生们对疫苗接种的效果进行建模,并验证由此产生的易感感染-恢复接种疫苗(SIRV)模型,证明该模型成功预测了从感恩节到2021年2月14日假期期间每天报告的病例数据。然后对相同的SIRV模型进行扩展,并成功拟合到2021年6月1日的第四个峰值,这是由进一步放松社交距离措施造成的。最后,学生们将模型扩展到今天(2021年8月27日),并成功地解释了SARS-CoV-2病毒的δ变体的出现。拟合的模型还预测,delta变异峰值将相对较短,每天的病例数据将在2021年9月初开始下降,这与目前的预期相反。本案例研究为对科学建模感兴趣的学生提供了极好的顶点体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Introductory Models of COVID-19 in the United States
Students develop and test simple kinetic models of the spread of coronavirus disease 2019 (COVID-19) caused by the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) virus. Microsoft Excel is used as the modeling platform because it is nonthreatening to students and it is widely available. Students develop finite difference models and implement them in the cells of preformatted spreadsheets following a guided inquiry pedagogy that introduces new model parameters in a scaffolded step-by-step manner. That approach allows students to investigate the implications of new model parameters in a systematic way. Students fit the resulting models to reported cases per day data for the United States using least squares techniques with Excel's Solver. Using their own spreadsheets, students discover for themselves that the initial exponential growth of COVID-19 can be explained by a simplified unlimited growth model and by the susceptible-infected-recovered (SIR) model. They also discover that the effects of social distancing can be modeled using a Gaussian transition function for the infection rate coefficient and that the summer surge was caused by prematurely relaxing social distancing and then reimposing stricter social distancing. Students then model the effect of vaccinations and validate the resulting susceptible-infected-recovered-vaccinated (SIRV) model by showing that it successfully predicts the reported cases per day data from Thanksgiving through the holiday period up to 14 February 2021. The same SIRV model is then extended and successfully fits the fourth peak up to 1 June 2021, caused by further relaxation of social distancing measures. Finally, students extend the model up to the present day (27 August 2021) and successfully account for the appearance of the delta variant of the SARS-CoV-2 virus. The fitted model also predicts that the delta variant peak will be comparatively short, and the cases per day data should begin to fall off in early September 2021, counter to current expectations. This case study makes an excellent capstone experience for students interested in scientific modeling.
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