Center for International Health, Education, and Biosecurity, Institute of Human Virology-University of Maryland School of Medicine, Baltimore, Maryland, USA.
Department of Epidemiology and Public Health, University of Maryland School of Medicine, Baltimore, Maryland, USA.
Epidemiol Infect. 2021 Mar 25;149:e80. doi: 10.1017/S0950268821000649.
This study aimed to identify an appropriate simple mathematical model to fit the number of coronavirus disease 2019 (COVID-19) cases at the national level for the early portion of the pandemic, before significant public health interventions could be enacted. The total number of cases for the COVID-19 epidemic over time in 28 countries was analysed and fit to several simple rate models. The resulting model parameters were used to extrapolate projections for more recent data. While the Gompertz growth model (mean R2 = 0.998) best fit the current data, uncertainties in the eventual case limit introduced significant model errors. However, the quadratic rate model (mean R2 = 0.992) fit the current data best for 25 (89%) countries as determined by R2 values of the remaining models. Projection to the future using the simple quadratic model accurately forecast the number of future total number of cases 50% of the time up to 10 days in advance. Extrapolation to the future with the simple exponential model significantly overpredicted the total number of future cases. These results demonstrate that accurate future predictions of the case load in a given country can be made using this very simple model.
本研究旨在确定一个合适的简单数学模型,以拟合大流行早期国家层面的 2019 年冠状病毒病(COVID-19)病例数,此时尚未实施重大公共卫生干预措施。分析了 28 个国家 COVID-19 疫情随时间变化的总病例数,并拟合了几种简单的速率模型。使用所得模型参数对最近的数据进行外推预测。虽然戈珀兹增长模型(平均 R2 = 0.998)最能拟合当前数据,但最终病例数的不确定性导致模型存在较大误差。然而,对于 25 个国家(89%),二次速率模型(平均 R2 = 0.992)通过剩余模型的 R2 值确定为最能拟合当前数据。使用简单的二次模型对未来进行预测,提前 10 天预测未来总病例数的准确率达到 50%。使用简单的指数模型对未来进行外推预测,会显著高估未来的总病例数。这些结果表明,使用这种非常简单的模型可以对特定国家的病例负荷进行准确的未来预测。