COVID-19 Anti-Vaccine Sentiments: Analyses of Comments from Social Media

Purpose: This study analyzed the insights and sentiments of COVID-19 anti-vaccine comments from Instagram feeds and Facebook postings. The sentiments related to the acceptance and effectiveness of the vaccines that were on the verge of being made available to the public. Patients and methods: The qu...

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Main Authors: Li Ping Wong, Yulan Lin, Haridah Alias, Sazaly Abu Bakar, Qinjian Zhao, Zhijian Hu
Format: Article
Language:English
Published: MDPI AG 2021-11-01
Series:Healthcare
Subjects:
Online Access:https://www.mdpi.com/2227-9032/9/11/1530
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author Li Ping Wong
Yulan Lin
Haridah Alias
Sazaly Abu Bakar
Qinjian Zhao
Zhijian Hu
author_facet Li Ping Wong
Yulan Lin
Haridah Alias
Sazaly Abu Bakar
Qinjian Zhao
Zhijian Hu
author_sort Li Ping Wong
collection DOAJ
description Purpose: This study analyzed the insights and sentiments of COVID-19 anti-vaccine comments from Instagram feeds and Facebook postings. The sentiments related to the acceptance and effectiveness of the vaccines that were on the verge of being made available to the public. Patients and methods: The qualitative software QSR-NVivo 10 was used to manage, code, and analyse the data. Results: The analyses uncovered several major issues concerning COVID-19 vaccine hesitancy. The production of the COVID-19 vaccine at an unprecedented speed evoked the fear of skipping steps that would compromise vaccine safety. The unknown long-term effects and duration of protection erode confidence in taking the vaccines. There were also persistent concerns with regard to vaccine compositions that could be harmful or contain aborted foetal cells. The rate of COVID-19 death was viewed as low. Many interpreted the 95% effectiveness of the COVID-19 vaccine as insufficient. Preference for immunity gains from having an infection was viewed as more effective. Peer-reviewed publication-based data were favoured as a source of trust in vaccination decision-making. Conclusions: The anti-COVID-19 vaccine sentiments found in this study provide important insights for the formulation of public health messages to instill confidence in the vaccines.
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spelling doaj.art-cfdda54becb24c019232610f8bac3b7f2023-11-22T23:32:12ZengMDPI AGHealthcare2227-90322021-11-01911153010.3390/healthcare9111530COVID-19 Anti-Vaccine Sentiments: Analyses of Comments from Social MediaLi Ping Wong0Yulan Lin1Haridah Alias2Sazaly Abu Bakar3Qinjian Zhao4Zhijian Hu5Centre for Epidemiology and Evidence-Based Practice, Department of Social and Preventive Medicine, Faculty of Medicine, University of Malaya, Kuala Lumpur 50603, MalaysiaDepartment of Epidemiology and Health Statistics, School of Public Health, Fujian Medical University, Fuzhou 350122, ChinaCentre for Epidemiology and Evidence-Based Practice, Department of Social and Preventive Medicine, Faculty of Medicine, University of Malaya, Kuala Lumpur 50603, MalaysiaTropical Infectious Diseases Research and Educational Centre (TIDREC), University of Malaya, Kuala Lumpur 50603, MalaysiaState Key Laboratory of Molecular Vaccinology and Molecular Diagnostics, National Institute of Diagnostics and Vaccine Development in Infectious Diseases, School of Public Health, Xiamen University, Xiamen 361005, ChinaDepartment of Epidemiology and Health Statistics, School of Public Health, Fujian Medical University, Fuzhou 350122, ChinaPurpose: This study analyzed the insights and sentiments of COVID-19 anti-vaccine comments from Instagram feeds and Facebook postings. The sentiments related to the acceptance and effectiveness of the vaccines that were on the verge of being made available to the public. Patients and methods: The qualitative software QSR-NVivo 10 was used to manage, code, and analyse the data. Results: The analyses uncovered several major issues concerning COVID-19 vaccine hesitancy. The production of the COVID-19 vaccine at an unprecedented speed evoked the fear of skipping steps that would compromise vaccine safety. The unknown long-term effects and duration of protection erode confidence in taking the vaccines. There were also persistent concerns with regard to vaccine compositions that could be harmful or contain aborted foetal cells. The rate of COVID-19 death was viewed as low. Many interpreted the 95% effectiveness of the COVID-19 vaccine as insufficient. Preference for immunity gains from having an infection was viewed as more effective. Peer-reviewed publication-based data were favoured as a source of trust in vaccination decision-making. Conclusions: The anti-COVID-19 vaccine sentiments found in this study provide important insights for the formulation of public health messages to instill confidence in the vaccines.https://www.mdpi.com/2227-9032/9/11/1530antivaccinesocial mediavaccine hesitancy
spellingShingle Li Ping Wong
Yulan Lin
Haridah Alias
Sazaly Abu Bakar
Qinjian Zhao
Zhijian Hu
COVID-19 Anti-Vaccine Sentiments: Analyses of Comments from Social Media
Healthcare
antivaccine
social media
vaccine hesitancy
title COVID-19 Anti-Vaccine Sentiments: Analyses of Comments from Social Media
title_full COVID-19 Anti-Vaccine Sentiments: Analyses of Comments from Social Media
title_fullStr COVID-19 Anti-Vaccine Sentiments: Analyses of Comments from Social Media
title_full_unstemmed COVID-19 Anti-Vaccine Sentiments: Analyses of Comments from Social Media
title_short COVID-19 Anti-Vaccine Sentiments: Analyses of Comments from Social Media
title_sort covid 19 anti vaccine sentiments analyses of comments from social media
topic antivaccine
social media
vaccine hesitancy
url https://www.mdpi.com/2227-9032/9/11/1530
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AT haridahalias covid19antivaccinesentimentsanalysesofcommentsfromsocialmedia
AT sazalyabubakar covid19antivaccinesentimentsanalysesofcommentsfromsocialmedia
AT qinjianzhao covid19antivaccinesentimentsanalysesofcommentsfromsocialmedia
AT zhijianhu covid19antivaccinesentimentsanalysesofcommentsfromsocialmedia