Impact analysis of environmental and social factors on early-stage COVID-19 transmission in China by machine learning

As a highly contagious disease, COVID-19 caused a worldwide pandemic and it is still ongoing. However, the infection in China has been successfully controlled although its initial transmission was also nationwide and has caused a serious public health crisis. The analysis on the early-stage COVID-19...

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Veröffentlicht in:Environmental research 2022-05, Vol.208, p.112761-112761, Article 112761
Hauptverfasser: Han, Yifei, Huang, Jinliang, Li, Rendong, Shao, Qihui, Han, Dongfeng, Luo, Xiyue, Qiu, Juan
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container_end_page 112761
container_issue
container_start_page 112761
container_title Environmental research
container_volume 208
creator Han, Yifei
Huang, Jinliang
Li, Rendong
Shao, Qihui
Han, Dongfeng
Luo, Xiyue
Qiu, Juan
description As a highly contagious disease, COVID-19 caused a worldwide pandemic and it is still ongoing. However, the infection in China has been successfully controlled although its initial transmission was also nationwide and has caused a serious public health crisis. The analysis on the early-stage COVID-19 transmission in China is worth investigating for its guiding significance on prevention to other countries and regions. In this study, we conducted the experiments from the perspectives of COVID-19 occurrence and intensity. We eliminated unimportant factors from 113 variables and applied four machine learning-based classification and regression models to predict COVID-19 occurrence and intensity, respectively. The influence of each important factor was analysed when applicable. Our optimal model on COVID-19 occurrence prediction presented an accuracy of 91.91% and the best R2 of intensity prediction reached 0.778. Linear regression-based model was identified as unable to fit and predict the intensity, and thus only the variable influence on COVID-19 occurrence can be explained. We found that (1) CO VID-19 was more likely to occur in prosperous cities closer to the epicentre and located on higher altitudes, (2) and the occurrence was higher under extreme weather and high minimum relative humidity. (3) Most air pollutants increased the risk of COVID-19 occurrence except NO2 and O3, and there existed a lag effect of 6–7 days. (4) NPIs (non-pharmaceutical interventions) did not show apparent effect until two weeks after. •COVID-19 mostly occurs in high-altitude big cities closer to the epicentre.•Extreme weather and higher minimum relative humidity motivate COVID-19 occurrence.•Most air pollutants increase COVID-19 occurrence after 6-7 days except NO2 and O3.•NPIs need 15 days to show the control effect.•COVID-19 intensity prediction is too complex to be explained by factor influence.
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(4) NPIs (non-pharmaceutical interventions) did not show apparent effect until two weeks after. •COVID-19 mostly occurs in high-altitude big cities closer to the epicentre.•Extreme weather and higher minimum relative humidity motivate COVID-19 occurrence.•Most air pollutants increase COVID-19 occurrence after 6-7 days except NO2 and O3.•NPIs need 15 days to show the control effect.•COVID-19 intensity prediction is too complex to be explained by factor influence.</description><identifier>ISSN: 0013-9351</identifier><identifier>ISSN: 1096-0953</identifier><identifier>EISSN: 1096-0953</identifier><identifier>DOI: 10.1016/j.envres.2022.112761</identifier><identifier>PMID: 35065932</identifier><language>eng</language><publisher>Netherlands: Elsevier Inc</publisher><subject>Air pollutants ; Air Pollutants - analysis ; Air Pollution - analysis ; China - epidemiology ; Cities ; COVID-19 ; COVID-19 - epidemiology ; Humans ; Machine Learning ; Meteorology ; Non-pharmaceutical interventions ; Particulate Matter - analysis ; SARS-CoV-2 ; Social data ; Social Factors</subject><ispartof>Environmental research, 2022-05, Vol.208, p.112761-112761, Article 112761</ispartof><rights>2022 The Authors</rights><rights>Copyright © 2022 The Authors. 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However, the infection in China has been successfully controlled although its initial transmission was also nationwide and has caused a serious public health crisis. The analysis on the early-stage COVID-19 transmission in China is worth investigating for its guiding significance on prevention to other countries and regions. In this study, we conducted the experiments from the perspectives of COVID-19 occurrence and intensity. We eliminated unimportant factors from 113 variables and applied four machine learning-based classification and regression models to predict COVID-19 occurrence and intensity, respectively. The influence of each important factor was analysed when applicable. Our optimal model on COVID-19 occurrence prediction presented an accuracy of 91.91% and the best R2 of intensity prediction reached 0.778. Linear regression-based model was identified as unable to fit and predict the intensity, and thus only the variable influence on COVID-19 occurrence can be explained. 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(4) NPIs (non-pharmaceutical interventions) did not show apparent effect until two weeks after. •COVID-19 mostly occurs in high-altitude big cities closer to the epicentre.•Extreme weather and higher minimum relative humidity motivate COVID-19 occurrence.•Most air pollutants increase COVID-19 occurrence after 6-7 days except NO2 and O3.•NPIs need 15 days to show the control effect.•COVID-19 intensity prediction is too complex to be explained by factor influence.</description><subject>Air pollutants</subject><subject>Air Pollutants - analysis</subject><subject>Air Pollution - analysis</subject><subject>China - epidemiology</subject><subject>Cities</subject><subject>COVID-19</subject><subject>COVID-19 - epidemiology</subject><subject>Humans</subject><subject>Machine Learning</subject><subject>Meteorology</subject><subject>Non-pharmaceutical interventions</subject><subject>Particulate Matter - analysis</subject><subject>SARS-CoV-2</subject><subject>Social data</subject><subject>Social Factors</subject><issn>0013-9351</issn><issn>1096-0953</issn><issn>1096-0953</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2022</creationdate><recordtype>article</recordtype><sourceid>EIF</sourceid><recordid>eNp9UcuOEzEQtBCIDQt_gJCPXCb4NR77goTCK9JKewGuVo-nJ-toxg72JFL-Hq-yLHDh5La6qrqri5DXnK054_rdfo3xlLGsBRNizbnoNH9CVpxZ3TDbyqdkxRiXjZUtvyIvStnXL28le06uZMt0a6VYkeN2PoBfKESYziUUmkZadUNOcca4wFQ7Ay3Jh1qOFZlyxUSKkKdzUxbYId3c_th-bLilS4ZY5lBKqIgQ6eYuRKD9mc7ga4l0qrQY4u4leTbCVPDVw3tNvn_-9G3ztbm5_bLdfLhpvNJyaYzAUfbGe6t6BhxNh0IhZ2oA0Zq213bwrR2q5Z75lhtjQRurFRjtwSqU1-T9Rfdw7GccfHWUYXKHHGbIZ5cguH87Mdy5XTo503VaC10F3j4I5PTziGVx1Z7HaYKI6Vic0EKoTiolK1RdoD6nUjKOj2M4c_eJub27JObuE3OXxCrtzd8rPpJ-R_THA9ZDnQJmV3zA6HEIGf3ihhT-P-EXniarOA</recordid><startdate>20220515</startdate><enddate>20220515</enddate><creator>Han, Yifei</creator><creator>Huang, Jinliang</creator><creator>Li, Rendong</creator><creator>Shao, Qihui</creator><creator>Han, Dongfeng</creator><creator>Luo, Xiyue</creator><creator>Qiu, Juan</creator><general>Elsevier Inc</general><general>The Authors. 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source MEDLINE; Elsevier ScienceDirect Journals
subjects Air pollutants
Air Pollutants - analysis
Air Pollution - analysis
China - epidemiology
Cities
COVID-19
COVID-19 - epidemiology
Humans
Machine Learning
Meteorology
Non-pharmaceutical interventions
Particulate Matter - analysis
SARS-CoV-2
Social data
Social Factors
title Impact analysis of environmental and social factors on early-stage COVID-19 transmission in China by machine learning
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