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COVID-SGIS: A Smart Tool for Dynamic Monitoring and Temporal Forecasting of Covid-19

Background: The global burden of the new coronavirus SARS-CoV-2 is increasing at an unprecedented rate. The current spread of Covid-19 in Brazil is problematic causing a huge public health burden to its population and national health-care service. To evaluate strategies for alleviating such problems...

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Autores principales: de Lima, Clarisse Lins, da Silva, Cecilia Cordeiro, da Silva, Ana Clara Gomes, Luiz Silva, Eduardo, Marques, Gabriel Souza, de Araújo, Lucas Job Brito, Albuquerque Júnior, Luiz Antônio, de Souza, Samuel Barbosa Jatobá, de Santana, Maíra Araújo, Gomes, Juliana Carneiro, de Freitas Barbosa, Valter Augusto, Musah, Anwar, Kostkova, Patty, dos Santos, Wellington Pinheiro, da Silva Filho, Abel Guilhermino
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7705350/
https://www.ncbi.nlm.nih.gov/pubmed/33282815
http://dx.doi.org/10.3389/fpubh.2020.580815
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author de Lima, Clarisse Lins
da Silva, Cecilia Cordeiro
da Silva, Ana Clara Gomes
Luiz Silva, Eduardo
Marques, Gabriel Souza
de Araújo, Lucas Job Brito
Albuquerque Júnior, Luiz Antônio
de Souza, Samuel Barbosa Jatobá
de Santana, Maíra Araújo
Gomes, Juliana Carneiro
de Freitas Barbosa, Valter Augusto
Musah, Anwar
Kostkova, Patty
dos Santos, Wellington Pinheiro
da Silva Filho, Abel Guilhermino
author_facet de Lima, Clarisse Lins
da Silva, Cecilia Cordeiro
da Silva, Ana Clara Gomes
Luiz Silva, Eduardo
Marques, Gabriel Souza
de Araújo, Lucas Job Brito
Albuquerque Júnior, Luiz Antônio
de Souza, Samuel Barbosa Jatobá
de Santana, Maíra Araújo
Gomes, Juliana Carneiro
de Freitas Barbosa, Valter Augusto
Musah, Anwar
Kostkova, Patty
dos Santos, Wellington Pinheiro
da Silva Filho, Abel Guilhermino
author_sort de Lima, Clarisse Lins
collection PubMed
description Background: The global burden of the new coronavirus SARS-CoV-2 is increasing at an unprecedented rate. The current spread of Covid-19 in Brazil is problematic causing a huge public health burden to its population and national health-care service. To evaluate strategies for alleviating such problems, it is necessary to forecast the number of cases and deaths in order to aid the stakeholders in the process of making decisions against the disease. We propose a novel system for real-time forecast of the cumulative cases of Covid-19 in Brazil. Methods: We developed the novel COVID-SGIS application for the real-time surveillance, forecast and spatial visualization of Covid-19 for Brazil. This system captures routinely reported Covid-19 information from 27 federative units from the Brazil.io database. It utilizes all Covid-19 confirmed case data that have been notified through the National Notification System, from March to May 2020. Time series ARIMA models were integrated for the forecast of cumulative number of Covid-19 cases and deaths. These include 6-days forecasts as graphical outputs for each federative unit in Brazil, separately, with its corresponding 95% CI for statistical significance. In addition, a worst and best scenarios are presented. Results: The following federative units (out of 27) were flagged by our ARIMA models showing statistically significant increasing temporal patterns of Covid-19 cases during the specified day-to-day period: Bahia, Maranhão, Piauí, Rio Grande do Norte, Amapá, Rondônia, where their day-to-day forecasts were within the 95% CI limits. Equally, the same findings were observed for Espírito Santo, Minas Gerais, Paraná, and Santa Catarina. The overall percentage error between the forecasted values and the actual values varied between 2.56 and 6.50%. For the days when the forecasts fell outside the forecast interval, the percentage errors in relation to the worst case scenario were below 5%. Conclusion: The proposed method for dynamic forecasting may be used to guide social policies and plan direct interventions in a cost-effective, concise, and robust manner. This novel tools can play an important role for guiding the course of action against the Covid-19 pandemic for Brazil and country neighbors in South America.
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spelling pubmed-77053502020-12-03 COVID-SGIS: A Smart Tool for Dynamic Monitoring and Temporal Forecasting of Covid-19 de Lima, Clarisse Lins da Silva, Cecilia Cordeiro da Silva, Ana Clara Gomes Luiz Silva, Eduardo Marques, Gabriel Souza de Araújo, Lucas Job Brito Albuquerque Júnior, Luiz Antônio de Souza, Samuel Barbosa Jatobá de Santana, Maíra Araújo Gomes, Juliana Carneiro de Freitas Barbosa, Valter Augusto Musah, Anwar Kostkova, Patty dos Santos, Wellington Pinheiro da Silva Filho, Abel Guilhermino Front Public Health Public Health Background: The global burden of the new coronavirus SARS-CoV-2 is increasing at an unprecedented rate. The current spread of Covid-19 in Brazil is problematic causing a huge public health burden to its population and national health-care service. To evaluate strategies for alleviating such problems, it is necessary to forecast the number of cases and deaths in order to aid the stakeholders in the process of making decisions against the disease. We propose a novel system for real-time forecast of the cumulative cases of Covid-19 in Brazil. Methods: We developed the novel COVID-SGIS application for the real-time surveillance, forecast and spatial visualization of Covid-19 for Brazil. This system captures routinely reported Covid-19 information from 27 federative units from the Brazil.io database. It utilizes all Covid-19 confirmed case data that have been notified through the National Notification System, from March to May 2020. Time series ARIMA models were integrated for the forecast of cumulative number of Covid-19 cases and deaths. These include 6-days forecasts as graphical outputs for each federative unit in Brazil, separately, with its corresponding 95% CI for statistical significance. In addition, a worst and best scenarios are presented. Results: The following federative units (out of 27) were flagged by our ARIMA models showing statistically significant increasing temporal patterns of Covid-19 cases during the specified day-to-day period: Bahia, Maranhão, Piauí, Rio Grande do Norte, Amapá, Rondônia, where their day-to-day forecasts were within the 95% CI limits. Equally, the same findings were observed for Espírito Santo, Minas Gerais, Paraná, and Santa Catarina. The overall percentage error between the forecasted values and the actual values varied between 2.56 and 6.50%. For the days when the forecasts fell outside the forecast interval, the percentage errors in relation to the worst case scenario were below 5%. Conclusion: The proposed method for dynamic forecasting may be used to guide social policies and plan direct interventions in a cost-effective, concise, and robust manner. This novel tools can play an important role for guiding the course of action against the Covid-19 pandemic for Brazil and country neighbors in South America. Frontiers Media S.A. 2020-11-17 /pmc/articles/PMC7705350/ /pubmed/33282815 http://dx.doi.org/10.3389/fpubh.2020.580815 Text en Copyright © 2020 de Lima, da Silva, da Silva, Luiz Silva, Marques, de Araújo, Albuquerque Júnior, de Souza, de Santana, Gomes, de Freitas Barbosa, Musah, Kostkova, dos Santos and da Silva Filho. http://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
de Lima, Clarisse Lins
da Silva, Cecilia Cordeiro
da Silva, Ana Clara Gomes
Luiz Silva, Eduardo
Marques, Gabriel Souza
de Araújo, Lucas Job Brito
Albuquerque Júnior, Luiz Antônio
de Souza, Samuel Barbosa Jatobá
de Santana, Maíra Araújo
Gomes, Juliana Carneiro
de Freitas Barbosa, Valter Augusto
Musah, Anwar
Kostkova, Patty
dos Santos, Wellington Pinheiro
da Silva Filho, Abel Guilhermino
COVID-SGIS: A Smart Tool for Dynamic Monitoring and Temporal Forecasting of Covid-19
title COVID-SGIS: A Smart Tool for Dynamic Monitoring and Temporal Forecasting of Covid-19
title_full COVID-SGIS: A Smart Tool for Dynamic Monitoring and Temporal Forecasting of Covid-19
title_fullStr COVID-SGIS: A Smart Tool for Dynamic Monitoring and Temporal Forecasting of Covid-19
title_full_unstemmed COVID-SGIS: A Smart Tool for Dynamic Monitoring and Temporal Forecasting of Covid-19
title_short COVID-SGIS: A Smart Tool for Dynamic Monitoring and Temporal Forecasting of Covid-19
title_sort covid-sgis: a smart tool for dynamic monitoring and temporal forecasting of covid-19
topic Public Health
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7705350/
https://www.ncbi.nlm.nih.gov/pubmed/33282815
http://dx.doi.org/10.3389/fpubh.2020.580815
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