Statistical modeling of the novel COVID-19 epidemic in Iraq

Author:

Ghanim Al-Ani Ban1

Affiliation:

1. Department of Statistics and Informatics , University of Mosul , Mosul , Iraq

Abstract

Abstract Objectives This study aimed to apply three of the most important nonlinear growth models (Gompertz, Richards, and Weibull) to study the daily cumulative number of COVID-19 cases in Iraq during the period from 13th of March, 2020 to 22nd of July, 2020. Methods Using the nonlinear least squares method, the three growth models were estimated in addition to calculating some related measures in this study using the “nonlinear regression” tool available in Minitab-17, and the initial values of the parameters were deduced from the transformation to the simple linear regression equation. Comparison of these models was made using some statistics (F-test, AIC, BIC, AICc and WIC). Results The results indicate that the Weibull model is the best adequate model for studying the cumulative daily number of COVID-19 cases in Iraq according to some criteria such as having the highest F and lowest values for RMSE, bias, MAE, AIC, BIC, AICc and WIC with no any violations of the assumptions for the model’s residuals (independent, normal distribution and homogeneity variance). The overall model test and tests of the estimated parameters showed that the Weibull model was statistically significant for describing the study data. Conclusions From the Weibull model predictions, the number of cumulative confirmed cases of novel coronavirus in Iraq will increase by a range of 101,396 (95% PI: 99,989 to 102,923) to 114,907 (95% PI: 112,251 to 117,566) in the next 24 days (23rd of July to 15th of August 15, 2020). From the inflection points in the Weibull curve, the peak date when the growth rate will be maximum, is 7th of July, 2020, and at this time the daily cumulative cases become 67,338. Using the nonlinear least squares method, the models were estimated and some related measures were calculated in this study using the “nonlinear regression” tool available in Minitab-17, and the initial values of the parameters were obtained from the transformation to the simple linear regression model.

Publisher

Walter de Gruyter GmbH

Subject

Applied Mathematics,Epidemiology

Reference27 articles.

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2. Bates, D. M., and D. J. Watts. 2007. Nonlinear Regression Analysis and its Applications. New York: John Wiley & Sons.

3. Brockwell, P. J., and R. A. Davis. 2016. Introduction to Time Series and Forecasting, 3rd ed. Switzerland: Springer-Verlag.

4. Burnham, K. P., and D. R. Anderson. 2002. Model Selection and Multimodel Inference: A Practical Information-Theoretic Approach. New York: Springer-Verlag.

5. Carroll, R. J., and D. Ruppert. 1988. Transformations and Weighting in Regression. New York: Chapman & Hall.

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