A Two-Step Polynomial and Nonlinear Growth Approach for Modeling COVID-19 Cases in Mexico
Since December 2019, the novel coronavirus (SARS-CoV-2) and its associated illness COVID-19 have rapidly spread worldwide. The Mexican government has implemented public safety measures to minimize the spread of the virus. In this paper, we used statistical models in two stages to estimate the total...
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doaj-77b852e4dc934d0a909256a41beddaed2021-09-26T00:37:49ZengMDPI AGMathematics2227-73902021-09-0192180218010.3390/math9182180A Two-Step Polynomial and Nonlinear Growth Approach for Modeling COVID-19 Cases in MexicoRafael Pérez Abreu C.0Samantha Estrada1Héctor de-la-Torre-Gutiérrez2Aguascalientes Campus, Centro de Investigación en Matemáticas, A. C., Calzada de la Plenitud 103, José Vasconcelos Calderón, Aguascalientes 20200, MexicoDepartment of Psychology and Counseling, University of Texas at Tyler, 3900 University Blvd, Tyler, TX 75799, USAAguascalientes Campus, Centro de Investigación en Matemáticas, A. C., Calzada de la Plenitud 103, José Vasconcelos Calderón, Aguascalientes 20200, MexicoSince December 2019, the novel coronavirus (SARS-CoV-2) and its associated illness COVID-19 have rapidly spread worldwide. The Mexican government has implemented public safety measures to minimize the spread of the virus. In this paper, we used statistical models in two stages to estimate the total number of coronavirus (COVID-19) cases per day at the state and national levels in Mexico. In this paper, we propose two types of models. First, a polynomial model of the growth for the first part of the outbreak until the inflection point of the pandemic curve and then a second nonlinear growth model used to estimate the middle and the end of the outbreak. Model selection was performed using Vuong’s test. The proposed models showed overall fit similar to predictive models (e.g., time series and machine learning); however, the interpretation of parameters is simpler for decisionmakers, and the residuals follow the expected distribution when fitting the models without autocorrelation being an issue.https://www.mdpi.com/2227-7390/9/18/2180COVID-19epidemic modelingtime series predictionnonlinear growth modelsPrais–Winsten estimationcontagion modeling |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Rafael Pérez Abreu C. Samantha Estrada Héctor de-la-Torre-Gutiérrez |
spellingShingle |
Rafael Pérez Abreu C. Samantha Estrada Héctor de-la-Torre-Gutiérrez A Two-Step Polynomial and Nonlinear Growth Approach for Modeling COVID-19 Cases in Mexico Mathematics COVID-19 epidemic modeling time series prediction nonlinear growth models Prais–Winsten estimation contagion modeling |
author_facet |
Rafael Pérez Abreu C. Samantha Estrada Héctor de-la-Torre-Gutiérrez |
author_sort |
Rafael Pérez Abreu C. |
title |
A Two-Step Polynomial and Nonlinear Growth Approach for Modeling COVID-19 Cases in Mexico |
title_short |
A Two-Step Polynomial and Nonlinear Growth Approach for Modeling COVID-19 Cases in Mexico |
title_full |
A Two-Step Polynomial and Nonlinear Growth Approach for Modeling COVID-19 Cases in Mexico |
title_fullStr |
A Two-Step Polynomial and Nonlinear Growth Approach for Modeling COVID-19 Cases in Mexico |
title_full_unstemmed |
A Two-Step Polynomial and Nonlinear Growth Approach for Modeling COVID-19 Cases in Mexico |
title_sort |
two-step polynomial and nonlinear growth approach for modeling covid-19 cases in mexico |
publisher |
MDPI AG |
series |
Mathematics |
issn |
2227-7390 |
publishDate |
2021-09-01 |
description |
Since December 2019, the novel coronavirus (SARS-CoV-2) and its associated illness COVID-19 have rapidly spread worldwide. The Mexican government has implemented public safety measures to minimize the spread of the virus. In this paper, we used statistical models in two stages to estimate the total number of coronavirus (COVID-19) cases per day at the state and national levels in Mexico. In this paper, we propose two types of models. First, a polynomial model of the growth for the first part of the outbreak until the inflection point of the pandemic curve and then a second nonlinear growth model used to estimate the middle and the end of the outbreak. Model selection was performed using Vuong’s test. The proposed models showed overall fit similar to predictive models (e.g., time series and machine learning); however, the interpretation of parameters is simpler for decisionmakers, and the residuals follow the expected distribution when fitting the models without autocorrelation being an issue. |
topic |
COVID-19 epidemic modeling time series prediction nonlinear growth models Prais–Winsten estimation contagion modeling |
url |
https://www.mdpi.com/2227-7390/9/18/2180 |
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