Forecasting and Evaluating Multiple Interventions for COVID-19 Worldwide

Título

Forecasting and Evaluating Multiple Interventions for COVID-19 Worldwide

Autor

Li Jin, Eric Boerwinkle, Momiao Xiong, Zixin Hu, Qiyang Ge, Shudi Li

Descripción

As the Covid-19 pandemic surges around the world, questions arise about the number of global cases at the pandemic's peak, the length of the pandemic before receding, and the timing of intervention strategies to significantly stop the spread of Covid-19. We have developed artificial intelligence (AI)-inspired methods for modeling the transmission dynamics of the epidemics and evaluating interventions to curb the spread and impact of COVID-19. The developed methods were applied to the surveillance data of cumulative and new COVID-19 cases and deaths reported by WHO as of March 16th, 2020. Both the timing and the degree of intervention were evaluated. The average error of five-step ahead forecasting was 2.5%. The total peak number of cumulative cases, new cases, and the maximum number of cumulative cases in the world with complete intervention implemented 4 weeks later than the beginning date (March 16th, 2020) reached 75,249,909, 10,086,085, and 255,392,154, respectively. However, the total peak number of cumulative cases, new cases, and the maximum number of cumulative cases in the world with complete intervention after 1 week were reduced to 951,799, 108,853 and 1,530,276, respectively. Duration time of the COVID-19 spread was reduced from 356 days to 232 days between later and earlier interventions. We observed that delaying intervention for 1 month caused the maximum number of cumulative cases reduce by −166.89 times that of earlier complete intervention, and the number of deaths increased from 53,560 to 8,938,725. Earlier and complete intervention is necessary to stem the tide of COVID-19 infection.

Fecha

2020

Materia

forecasting, artificial intelligence, time series, autoencoder, Transmission dynamics, COVID-19

Identificador

DOI: 10.3389/frai.2020.00041

Fuente

Frontiers in Artificial Intelligence

Editor

Frontiers Media S.A.

Cobertura

Electronic computers. Computer science

Archivos

https://socictopen.socict.org/files/to_import/pdfs/5001682.pdf

Colección

Citación

Li Jin, Eric Boerwinkle, Momiao Xiong, Zixin Hu, Qiyang Ge, Shudi Li, “Forecasting and Evaluating Multiple Interventions for COVID-19 Worldwide,” SOCICT Open, consulta 20 de abril de 2026, https://socictopen.socict.org/items/show/3390.

Formatos de Salida

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