利用Gompertz和Logistic增长曲线对伊朗COVID-19总病例数建模

Hossein Zamani
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摘要

简介:增长曲线是时间依赖性回归模型,通常用于描述疫情中总病例或死亡人数的快速增长。方法:Gompertz和logistic函数可用于描述人群的生长曲线或任何时间依赖性变量,如代谢率、肿瘤生长和常见疾病的总病例数或死亡人数。考虑了包括物流、SS物流、广义物流和电力物流以及Gompertz模型在内的增长曲线的物流族,以描述2020年2月19日至2021年5月28日期间伊朗新冠肺炎总费用_百万(t_c_p_m)的增长曲线。使用R中的nls函数将模型拟合到数据,并使用数值和图形方法评估拟合精度。结果:应用逻辑家族和Gompertz增长曲线拟合伊朗新冠肺炎的total_cases_per_million作为响应,以天为单位的时间作为预测变量。将训练和测试RMSE准则作为评估模型精度的数值准则。拟合模型的增长曲线与观测数据的增长曲线进行了比较。结果表明,逻辑模型和Gompertz模型比替代模型更好地描述了目标变量。结论:结果表明,logistic和Gompertz模型比替代模型更好地描述了反应变量。因此,逻辑和Gompertz模型能够很好地描述和预测新冠肺炎变量(包括总病例、死亡、康复等)。
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Modeling the Number of COVID-19 Total Cases in Iran Using Gompertz and Logistic Growth Curves
Introduction: The growth curve are time dependece regression models which commonly are useful in describing the rapid growth of total cases or deaths in a pandemic situation. Methods: The Gompertz and logistic functions are useful to describe the growth curve of a population or any time dependence variable such as metabolic rate, growth of tumors and total number of cases or deaths in a pervasive disease. The logistics family of growth curve including logistic, SSlogistic, generalized logistic and power logistic and Gompertz models were considered to describe the growth curve of total_cases_per_million (t_c_p_m) of COVID-19 in Iran during the 19-Feb-2020 to 28-May-2021. The models were fitted to data using nls function in R and the fitting accuracy was evaluated using the numerical and graphical approaches. Results: The logistic family and Gompertz growth curve were applied to fit the total_cases_per_million of COVID-19 in Iran as the response versus the time in days as predictor variable. The training and testing RMSE criterions were considered as the numerical criterions to assess the model accuracy. The growth curve of fitted models was compared with the growth curve of observed data. Results indicated that the logistic and Gompertz models provided a better description of target variable than the alternatives. Conclusion: As results shown, the logistic and Gompertz models provided a better description of response variable than the alternatives. Therefore, the logistic and Gompertz models are able to describe and forecast the COVID-19 variables (including total cases, death, recovered and so on) very well.
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26
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12 weeks
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