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An Easy-to-Use Public Health-Driven Method (the Generalized Logistic Differential Equation Model) Accurately Simulated COVID-19 Epidemic in Wuhan and Correctly Determined the Early Warning Time

INTRODUCTION: Modeling on infectious diseases is significant to facilitate public health policymaking. There are two main mathematical methods that can be used for the simulation of the epidemic and prediction of optimal early warning timing: the logistic differential equation (LDE) model and the mo...

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Autores principales: Li, Zhuoyang, Lin, Shengnan, Rui, Jia, Bai, Yao, Deng, Bin, Chen, Qiuping, Zhu, Yuanzhao, Luo, Li, Yu, Shanshan, Liu, Weikang, Zhang, Shi, Su, Yanhua, Zhao, Benhua, Zhang, Hao, Chiang, Yi-Chen, Liu, Jianhua, Luo, Kaiwei, Chen, Tianmu
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8936678/
https://www.ncbi.nlm.nih.gov/pubmed/35321194
http://dx.doi.org/10.3389/fpubh.2022.813860
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author Li, Zhuoyang
Lin, Shengnan
Rui, Jia
Bai, Yao
Deng, Bin
Chen, Qiuping
Zhu, Yuanzhao
Luo, Li
Yu, Shanshan
Liu, Weikang
Zhang, Shi
Su, Yanhua
Zhao, Benhua
Zhang, Hao
Chiang, Yi-Chen
Liu, Jianhua
Luo, Kaiwei
Chen, Tianmu
author_facet Li, Zhuoyang
Lin, Shengnan
Rui, Jia
Bai, Yao
Deng, Bin
Chen, Qiuping
Zhu, Yuanzhao
Luo, Li
Yu, Shanshan
Liu, Weikang
Zhang, Shi
Su, Yanhua
Zhao, Benhua
Zhang, Hao
Chiang, Yi-Chen
Liu, Jianhua
Luo, Kaiwei
Chen, Tianmu
author_sort Li, Zhuoyang
collection PubMed
description INTRODUCTION: Modeling on infectious diseases is significant to facilitate public health policymaking. There are two main mathematical methods that can be used for the simulation of the epidemic and prediction of optimal early warning timing: the logistic differential equation (LDE) model and the more complex generalized logistic differential equation (GLDE) model. This study aimed to compare and analyze these two models. METHODS: We collected data on (coronavirus disease 2019) COVID-19 and four other infectious diseases and classified the data into four categories: different transmission routes, different epidemic intensities, different time scales, and different regions, using R(2) to compare and analyze the goodness-of-fit of LDE and GLDE models. RESULTS: Both models fitted the epidemic curves well, and all results were statistically significant. The R(2) test value of COVID-19 was 0.924 (p < 0.001) fitted by the GLDE model and 0.916 (p < 0.001) fitted by the LDE model. The R(2) test value varied between 0.793 and 0.966 fitted by the GLDE model and varied between 0.594 and 0.922 fitted by the LDE model for diseases with different transmission routes. The R(2) test values varied between 0.853 and 0.939 fitted by the GLDE model and varied from 0.687 to 0.769 fitted by the LDE model for diseases with different prevalence intensities. The R(2) test value varied between 0.706 and 0.917 fitted by the GLDE model and varied between 0.410 and 0.898 fitted by the LDE model for diseases with different time scales. The GLDE model also performed better with nation-level data with the R(2) test values between 0.897 and 0.970 vs. 0.731 and 0.953 that fitted by the LDE model. Both models could characterize the patterns of the epidemics well and calculate the acceleration weeks. CONCLUSION: The GLDE model provides more accurate goodness-of-fit to the data than the LDE model. The GLDE model is able to handle asymmetric data by introducing shape parameters that allow it to fit data with various distributions. The LDE model provides an earlier epidemic acceleration week than the GLDE model. We conclude that the GLDE model is more advantageous in asymmetric infectious disease data simulation.
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spelling pubmed-89366782022-03-22 An Easy-to-Use Public Health-Driven Method (the Generalized Logistic Differential Equation Model) Accurately Simulated COVID-19 Epidemic in Wuhan and Correctly Determined the Early Warning Time Li, Zhuoyang Lin, Shengnan Rui, Jia Bai, Yao Deng, Bin Chen, Qiuping Zhu, Yuanzhao Luo, Li Yu, Shanshan Liu, Weikang Zhang, Shi Su, Yanhua Zhao, Benhua Zhang, Hao Chiang, Yi-Chen Liu, Jianhua Luo, Kaiwei Chen, Tianmu Front Public Health Public Health INTRODUCTION: Modeling on infectious diseases is significant to facilitate public health policymaking. There are two main mathematical methods that can be used for the simulation of the epidemic and prediction of optimal early warning timing: the logistic differential equation (LDE) model and the more complex generalized logistic differential equation (GLDE) model. This study aimed to compare and analyze these two models. METHODS: We collected data on (coronavirus disease 2019) COVID-19 and four other infectious diseases and classified the data into four categories: different transmission routes, different epidemic intensities, different time scales, and different regions, using R(2) to compare and analyze the goodness-of-fit of LDE and GLDE models. RESULTS: Both models fitted the epidemic curves well, and all results were statistically significant. The R(2) test value of COVID-19 was 0.924 (p < 0.001) fitted by the GLDE model and 0.916 (p < 0.001) fitted by the LDE model. The R(2) test value varied between 0.793 and 0.966 fitted by the GLDE model and varied between 0.594 and 0.922 fitted by the LDE model for diseases with different transmission routes. The R(2) test values varied between 0.853 and 0.939 fitted by the GLDE model and varied from 0.687 to 0.769 fitted by the LDE model for diseases with different prevalence intensities. The R(2) test value varied between 0.706 and 0.917 fitted by the GLDE model and varied between 0.410 and 0.898 fitted by the LDE model for diseases with different time scales. The GLDE model also performed better with nation-level data with the R(2) test values between 0.897 and 0.970 vs. 0.731 and 0.953 that fitted by the LDE model. Both models could characterize the patterns of the epidemics well and calculate the acceleration weeks. CONCLUSION: The GLDE model provides more accurate goodness-of-fit to the data than the LDE model. The GLDE model is able to handle asymmetric data by introducing shape parameters that allow it to fit data with various distributions. The LDE model provides an earlier epidemic acceleration week than the GLDE model. We conclude that the GLDE model is more advantageous in asymmetric infectious disease data simulation. Frontiers Media S.A. 2022-03-07 /pmc/articles/PMC8936678/ /pubmed/35321194 http://dx.doi.org/10.3389/fpubh.2022.813860 Text en Copyright © 2022 Li, Lin, Rui, Bai, Deng, Chen, Zhu, Luo, Yu, Liu, Zhang, Su, Zhao, Zhang, Chiang, Liu, Luo and Chen. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Public Health
Li, Zhuoyang
Lin, Shengnan
Rui, Jia
Bai, Yao
Deng, Bin
Chen, Qiuping
Zhu, Yuanzhao
Luo, Li
Yu, Shanshan
Liu, Weikang
Zhang, Shi
Su, Yanhua
Zhao, Benhua
Zhang, Hao
Chiang, Yi-Chen
Liu, Jianhua
Luo, Kaiwei
Chen, Tianmu
An Easy-to-Use Public Health-Driven Method (the Generalized Logistic Differential Equation Model) Accurately Simulated COVID-19 Epidemic in Wuhan and Correctly Determined the Early Warning Time
title An Easy-to-Use Public Health-Driven Method (the Generalized Logistic Differential Equation Model) Accurately Simulated COVID-19 Epidemic in Wuhan and Correctly Determined the Early Warning Time
title_full An Easy-to-Use Public Health-Driven Method (the Generalized Logistic Differential Equation Model) Accurately Simulated COVID-19 Epidemic in Wuhan and Correctly Determined the Early Warning Time
title_fullStr An Easy-to-Use Public Health-Driven Method (the Generalized Logistic Differential Equation Model) Accurately Simulated COVID-19 Epidemic in Wuhan and Correctly Determined the Early Warning Time
title_full_unstemmed An Easy-to-Use Public Health-Driven Method (the Generalized Logistic Differential Equation Model) Accurately Simulated COVID-19 Epidemic in Wuhan and Correctly Determined the Early Warning Time
title_short An Easy-to-Use Public Health-Driven Method (the Generalized Logistic Differential Equation Model) Accurately Simulated COVID-19 Epidemic in Wuhan and Correctly Determined the Early Warning Time
title_sort easy-to-use public health-driven method (the generalized logistic differential equation model) accurately simulated covid-19 epidemic in wuhan and correctly determined the early warning time
topic Public Health
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8936678/
https://www.ncbi.nlm.nih.gov/pubmed/35321194
http://dx.doi.org/10.3389/fpubh.2022.813860
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