Prediction of the infectious outbreak COVID-19 and prevalence of anxiety: Global evidence

Forecasting disease outbreaks in real-time using time-series data can help for the planning of public health interventions. We used a support vector machine (SVM) model using epidemiological data provided by Johns Hopkins University Centre for Systems Science and Engineering (JHU CCSE), World Health...

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Main Authors: Alghazzawi, Daniyal, Qazi, Atika, Qazi, Javaria, Naseer, Khulla, Zeeshan, Muhammad, Abo, Mohamed Elhag Mohamed, Hasan, Najmul, Qazi, Shiza, Naz, Kiran, Dey, Samrat Kumar, Yang, Shuiqing
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Published: MDPI 2021
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Online Access:http://eprints.um.edu.my/35335/
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spelling my.um.eprints.353352022-10-27T05:34:25Z http://eprints.um.edu.my/35335/ Prediction of the infectious outbreak COVID-19 and prevalence of anxiety: Global evidence Alghazzawi, Daniyal Qazi, Atika Qazi, Javaria Naseer, Khulla Zeeshan, Muhammad Abo, Mohamed Elhag Mohamed Hasan, Najmul Qazi, Shiza Naz, Kiran Dey, Samrat Kumar Yang, Shuiqing BF Psychology R Medicine RA Public aspects of medicine Forecasting disease outbreaks in real-time using time-series data can help for the planning of public health interventions. We used a support vector machine (SVM) model using epidemiological data provided by Johns Hopkins University Centre for Systems Science and Engineering (JHU CCSE), World Health Organization (WHO), and the Centers for Disease Control and Prevention (CDC) to predict upcoming records before the WHO made an official declaration. Our study, conducted on the time series data available from 22 January till 10 March 2020, revealed that COVID-19 was spreading at an alarming rate and progressing towards a pandemic. The initial insight that confirmed COVID-19 cases were increasing was because these received the highest number of effects for our selected dataset from 22 January to 10 March 2020, i.e., 126,344 (64%). The recovered cases were 68289 (34%), and the death rate was around 2%. Moreover, we classified the tweets from 22 January to 15 April 2020 into positive and negative sentiments to identify the emotions (stress or relaxed) posted by Twitter users related to the COVID-19 pandemic. Our analysis identified that tweets mostly conveyed a negative sentiment with a high frequency of words for #coronavirus and #lockdown amid COVID-19. However, these anxiety tweets are an alarm for healthcare authorities to devise plans accordingly. MDPI 2021-10 Article PeerReviewed Alghazzawi, Daniyal and Qazi, Atika and Qazi, Javaria and Naseer, Khulla and Zeeshan, Muhammad and Abo, Mohamed Elhag Mohamed and Hasan, Najmul and Qazi, Shiza and Naz, Kiran and Dey, Samrat Kumar and Yang, Shuiqing (2021) Prediction of the infectious outbreak COVID-19 and prevalence of anxiety: Global evidence. Sustainability, 13 (20). ISSN 2071-1050, DOI https://doi.org/10.3390/su132011339 <https://doi.org/10.3390/su132011339>. 10.3390/su132011339
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic BF Psychology
R Medicine
RA Public aspects of medicine
spellingShingle BF Psychology
R Medicine
RA Public aspects of medicine
Alghazzawi, Daniyal
Qazi, Atika
Qazi, Javaria
Naseer, Khulla
Zeeshan, Muhammad
Abo, Mohamed Elhag Mohamed
Hasan, Najmul
Qazi, Shiza
Naz, Kiran
Dey, Samrat Kumar
Yang, Shuiqing
Prediction of the infectious outbreak COVID-19 and prevalence of anxiety: Global evidence
description Forecasting disease outbreaks in real-time using time-series data can help for the planning of public health interventions. We used a support vector machine (SVM) model using epidemiological data provided by Johns Hopkins University Centre for Systems Science and Engineering (JHU CCSE), World Health Organization (WHO), and the Centers for Disease Control and Prevention (CDC) to predict upcoming records before the WHO made an official declaration. Our study, conducted on the time series data available from 22 January till 10 March 2020, revealed that COVID-19 was spreading at an alarming rate and progressing towards a pandemic. The initial insight that confirmed COVID-19 cases were increasing was because these received the highest number of effects for our selected dataset from 22 January to 10 March 2020, i.e., 126,344 (64%). The recovered cases were 68289 (34%), and the death rate was around 2%. Moreover, we classified the tweets from 22 January to 15 April 2020 into positive and negative sentiments to identify the emotions (stress or relaxed) posted by Twitter users related to the COVID-19 pandemic. Our analysis identified that tweets mostly conveyed a negative sentiment with a high frequency of words for #coronavirus and #lockdown amid COVID-19. However, these anxiety tweets are an alarm for healthcare authorities to devise plans accordingly.
format Article
author Alghazzawi, Daniyal
Qazi, Atika
Qazi, Javaria
Naseer, Khulla
Zeeshan, Muhammad
Abo, Mohamed Elhag Mohamed
Hasan, Najmul
Qazi, Shiza
Naz, Kiran
Dey, Samrat Kumar
Yang, Shuiqing
author_facet Alghazzawi, Daniyal
Qazi, Atika
Qazi, Javaria
Naseer, Khulla
Zeeshan, Muhammad
Abo, Mohamed Elhag Mohamed
Hasan, Najmul
Qazi, Shiza
Naz, Kiran
Dey, Samrat Kumar
Yang, Shuiqing
author_sort Alghazzawi, Daniyal
title Prediction of the infectious outbreak COVID-19 and prevalence of anxiety: Global evidence
title_short Prediction of the infectious outbreak COVID-19 and prevalence of anxiety: Global evidence
title_full Prediction of the infectious outbreak COVID-19 and prevalence of anxiety: Global evidence
title_fullStr Prediction of the infectious outbreak COVID-19 and prevalence of anxiety: Global evidence
title_full_unstemmed Prediction of the infectious outbreak COVID-19 and prevalence of anxiety: Global evidence
title_sort prediction of the infectious outbreak covid-19 and prevalence of anxiety: global evidence
publisher MDPI
publishDate 2021
url http://eprints.um.edu.my/35335/
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score 13.211869