Cargando…
Spatial modeling, risk mapping, change detection, and outbreak trend analysis of coronavirus (COVID-19) in Iran (days between February 19 and June 14, 2020)
OBJECTIVES: Coronavirus disease 2019 (COVID-19) represents a major pandemic threat that has spread to more than 212 countries with more than 432,902 recorded deaths and 7,898,442 confirmed cases worldwide so far (on June 14, 2020). It is crucial to investigate the spatial drivers to prevent and cont...
Autores principales: | , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
The Authors. Published by Elsevier Ltd on behalf of International Society for Infectious Diseases.
2020
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7305907/ https://www.ncbi.nlm.nih.gov/pubmed/32574693 http://dx.doi.org/10.1016/j.ijid.2020.06.058 |
_version_ | 1783548562759483392 |
---|---|
author | Pourghasemi, Hamid Reza Pouyan, Soheila Heidari, Bahram Farajzadeh, Zakariya Fallah Shamsi, Seyed Rashid Babaei, Sedigheh Khosravi, Rasoul Etemadi, Mohammad Ghanbarian, Gholamabbas Farhadi, Ahmad Safaeian, Roja Heidari, Zahra Tarazkar, Mohammad Hassan Tiefenbacher, John P. Azmi, Amir Sadeghian, Faezeh |
author_facet | Pourghasemi, Hamid Reza Pouyan, Soheila Heidari, Bahram Farajzadeh, Zakariya Fallah Shamsi, Seyed Rashid Babaei, Sedigheh Khosravi, Rasoul Etemadi, Mohammad Ghanbarian, Gholamabbas Farhadi, Ahmad Safaeian, Roja Heidari, Zahra Tarazkar, Mohammad Hassan Tiefenbacher, John P. Azmi, Amir Sadeghian, Faezeh |
author_sort | Pourghasemi, Hamid Reza |
collection | PubMed |
description | OBJECTIVES: Coronavirus disease 2019 (COVID-19) represents a major pandemic threat that has spread to more than 212 countries with more than 432,902 recorded deaths and 7,898,442 confirmed cases worldwide so far (on June 14, 2020). It is crucial to investigate the spatial drivers to prevent and control the epidemic of COVID-19. METHODS: This is the first comprehensive study of COVID-19 in Iran; and it carries out spatial modeling, risk mapping, change detection, and outbreak trend analysis of the disease spread. Four main steps were taken: comparison of Iranian coronavirus data with the global trends, prediction of mortality trends using regression modeling, spatial modeling, risk mapping, and change detection using the random forest (RF) machine learning technique (MLT), and validation of the modeled risk map. RESULTS: The results show that from February 19 to June 14, 2020, the average growth rates (GR) of COVID-19 deaths and the total number of COVID-19 cases in Iran were 1.08 and 1.10, respectively. Based on the World Health Organisation (WHO) data, Iran’s fatality rate (deaths/0.1 M pop) is 10.53. Other countries’ fatality rates were, for comparison, Belgium – 83.32, UK – 61.39, Spain – 58.04, Italy – 56.73, Sweden – 48.28, France – 45.04, USA – 35.52, Canada – 21.49, Brazil – 20.10, Peru – 19.70, Chile – 16.20, Mexico– 12.80, and Germany – 10.58. The fatality rate for China is 0.32 (deaths/0.1 M pop). Over time, the heatmap of the infected areas identified two critical time intervals for the COVID-19 outbreak in Iran. The provinces were classified in terms of disease and death rates into a large primary group and three provinces that had critical outbreaks were separate from the others. The heatmap of countries of the world shows that China and Italy were distinguished from other countries in terms of nine viral infection-related parameters. The regression models for death cases showed an increasing trend but with some evidence of turning. A polynomial relationship was identified between the coronavirus infection rate and the province population density. Also, a third-degree polynomial regression model for deaths showed an increasing trend recently, indicating that subsequent measures taken to cope with the outbreak have been insufficient and ineffective. The general trend of deaths in Iran is similar to the world's, but Iran’s shows lower volatility. Change detection of COVID-19 risk maps with a random forest model for the period from March 11 to March 18 showed an increasing trend of COVID-19 in Iran’s provinces. It is worth noting that using the LASSO MLT to evaluate variables’ importance, indicated that the most important variables were the distance from bus stations, bakeries, hospitals, mosques, ATMs (automated teller machines), banks, and the minimum temperature of the coldest month. CONCLUSIONS: We believe that this study's risk maps are the primary, fundamental step to take for managing and controlling COVID-19 in Iran and its provinces. |
format | Online Article Text |
id | pubmed-7305907 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2020 |
publisher | The Authors. Published by Elsevier Ltd on behalf of International Society for Infectious Diseases. |
record_format | MEDLINE/PubMed |
spelling | pubmed-73059072020-06-22 Spatial modeling, risk mapping, change detection, and outbreak trend analysis of coronavirus (COVID-19) in Iran (days between February 19 and June 14, 2020) Pourghasemi, Hamid Reza Pouyan, Soheila Heidari, Bahram Farajzadeh, Zakariya Fallah Shamsi, Seyed Rashid Babaei, Sedigheh Khosravi, Rasoul Etemadi, Mohammad Ghanbarian, Gholamabbas Farhadi, Ahmad Safaeian, Roja Heidari, Zahra Tarazkar, Mohammad Hassan Tiefenbacher, John P. Azmi, Amir Sadeghian, Faezeh Int J Infect Dis Article OBJECTIVES: Coronavirus disease 2019 (COVID-19) represents a major pandemic threat that has spread to more than 212 countries with more than 432,902 recorded deaths and 7,898,442 confirmed cases worldwide so far (on June 14, 2020). It is crucial to investigate the spatial drivers to prevent and control the epidemic of COVID-19. METHODS: This is the first comprehensive study of COVID-19 in Iran; and it carries out spatial modeling, risk mapping, change detection, and outbreak trend analysis of the disease spread. Four main steps were taken: comparison of Iranian coronavirus data with the global trends, prediction of mortality trends using regression modeling, spatial modeling, risk mapping, and change detection using the random forest (RF) machine learning technique (MLT), and validation of the modeled risk map. RESULTS: The results show that from February 19 to June 14, 2020, the average growth rates (GR) of COVID-19 deaths and the total number of COVID-19 cases in Iran were 1.08 and 1.10, respectively. Based on the World Health Organisation (WHO) data, Iran’s fatality rate (deaths/0.1 M pop) is 10.53. Other countries’ fatality rates were, for comparison, Belgium – 83.32, UK – 61.39, Spain – 58.04, Italy – 56.73, Sweden – 48.28, France – 45.04, USA – 35.52, Canada – 21.49, Brazil – 20.10, Peru – 19.70, Chile – 16.20, Mexico– 12.80, and Germany – 10.58. The fatality rate for China is 0.32 (deaths/0.1 M pop). Over time, the heatmap of the infected areas identified two critical time intervals for the COVID-19 outbreak in Iran. The provinces were classified in terms of disease and death rates into a large primary group and three provinces that had critical outbreaks were separate from the others. The heatmap of countries of the world shows that China and Italy were distinguished from other countries in terms of nine viral infection-related parameters. The regression models for death cases showed an increasing trend but with some evidence of turning. A polynomial relationship was identified between the coronavirus infection rate and the province population density. Also, a third-degree polynomial regression model for deaths showed an increasing trend recently, indicating that subsequent measures taken to cope with the outbreak have been insufficient and ineffective. The general trend of deaths in Iran is similar to the world's, but Iran’s shows lower volatility. Change detection of COVID-19 risk maps with a random forest model for the period from March 11 to March 18 showed an increasing trend of COVID-19 in Iran’s provinces. It is worth noting that using the LASSO MLT to evaluate variables’ importance, indicated that the most important variables were the distance from bus stations, bakeries, hospitals, mosques, ATMs (automated teller machines), banks, and the minimum temperature of the coldest month. CONCLUSIONS: We believe that this study's risk maps are the primary, fundamental step to take for managing and controlling COVID-19 in Iran and its provinces. The Authors. Published by Elsevier Ltd on behalf of International Society for Infectious Diseases. 2020-09 2020-06-20 /pmc/articles/PMC7305907/ /pubmed/32574693 http://dx.doi.org/10.1016/j.ijid.2020.06.058 Text en © 2020 The Authors Since January 2020 Elsevier has created a COVID-19 resource centre with free information in English and Mandarin on the novel coronavirus COVID-19. The COVID-19 resource centre is hosted on Elsevier Connect, the company's public news and information website. Elsevier hereby grants permission to make all its COVID-19-related research that is available on the COVID-19 resource centre - including this research content - immediately available in PubMed Central and other publicly funded repositories, such as the WHO COVID database with rights for unrestricted research re-use and analyses in any form or by any means with acknowledgement of the original source. These permissions are granted for free by Elsevier for as long as the COVID-19 resource centre remains active. |
spellingShingle | Article Pourghasemi, Hamid Reza Pouyan, Soheila Heidari, Bahram Farajzadeh, Zakariya Fallah Shamsi, Seyed Rashid Babaei, Sedigheh Khosravi, Rasoul Etemadi, Mohammad Ghanbarian, Gholamabbas Farhadi, Ahmad Safaeian, Roja Heidari, Zahra Tarazkar, Mohammad Hassan Tiefenbacher, John P. Azmi, Amir Sadeghian, Faezeh Spatial modeling, risk mapping, change detection, and outbreak trend analysis of coronavirus (COVID-19) in Iran (days between February 19 and June 14, 2020) |
title | Spatial modeling, risk mapping, change detection, and outbreak trend analysis of coronavirus (COVID-19) in Iran (days between February 19 and June 14, 2020) |
title_full | Spatial modeling, risk mapping, change detection, and outbreak trend analysis of coronavirus (COVID-19) in Iran (days between February 19 and June 14, 2020) |
title_fullStr | Spatial modeling, risk mapping, change detection, and outbreak trend analysis of coronavirus (COVID-19) in Iran (days between February 19 and June 14, 2020) |
title_full_unstemmed | Spatial modeling, risk mapping, change detection, and outbreak trend analysis of coronavirus (COVID-19) in Iran (days between February 19 and June 14, 2020) |
title_short | Spatial modeling, risk mapping, change detection, and outbreak trend analysis of coronavirus (COVID-19) in Iran (days between February 19 and June 14, 2020) |
title_sort | spatial modeling, risk mapping, change detection, and outbreak trend analysis of coronavirus (covid-19) in iran (days between february 19 and june 14, 2020) |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7305907/ https://www.ncbi.nlm.nih.gov/pubmed/32574693 http://dx.doi.org/10.1016/j.ijid.2020.06.058 |
work_keys_str_mv | AT pourghasemihamidreza spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 AT pouyansoheila spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 AT heidaribahram spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 AT farajzadehzakariya spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 AT fallahshamsiseyedrashid spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 AT babaeisedigheh spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 AT khosravirasoul spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 AT etemadimohammad spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 AT ghanbariangholamabbas spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 AT farhadiahmad spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 AT safaeianroja spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 AT heidarizahra spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 AT tarazkarmohammadhassan spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 AT tiefenbacherjohnp spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 AT azmiamir spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 AT sadeghianfaezeh spatialmodelingriskmappingchangedetectionandoutbreaktrendanalysisofcoronaviruscovid19inirandaysbetweenfebruary19andjune142020 |