» Articles » PMID: 39739945

Analyzing Information Sharing Behaviors During Stance Formation on COVID-19 Vaccination Among Japanese Twitter Users

Overview
Journal PLoS One
Date 2024 Dec 31
PMID 39739945
Authors
Affiliations
Soon will be listed here.
Abstract

To prevent widespread epidemics such as influenza or measles, it is crucial to reach a broad acceptance of vaccinations while addressing vaccine hesitancy and refusal. To gain a deeper understanding of Japan's sharp increase in COVID-19 vaccination coverage, we performed an analysis on the posts of Twitter users to investigate the formation of users' stances toward COVID-19 vaccines and information-sharing actions through the formation. We constructed a dataset of all Japanese posts mentioning vaccines for five months since the beginning of the vaccination campaign in Japan and carried out a stance detection task for all the users who wrote the posts by training an original deep neural network. Investigating the users' stance formations using this large dataset, it became clear that some neutral users became pro-vaccine, while almost no neutral users became anti-vaccine in Japan. Our examination of their information-sharing activities during a period prior to and subsequent to their stance formation clarified that users with certain types and specific types of websites were referred to. We hope that our results contribute to the increase in coverage of 2nd and further doses and following vaccinations in the future.

References
1.
Cascini F, Pantovic A, Al-Ajlouni Y, Failla G, Puleo V, Melnyk A . Social media and attitudes towards a COVID-19 vaccination: A systematic review of the literature. EClinicalMedicine. 2022; 48:101454. PMC: 9120591. DOI: 10.1016/j.eclinm.2022.101454. View

2.
Piedrahita-Valdes H, Piedrahita-Castillo D, Bermejo-Higuera J, Guillem-Saiz P, Bermejo-Higuera J, Guillem-Saiz J . Vaccine Hesitancy on Social Media: Sentiment Analysis from June 2011 to April 2019. Vaccines (Basel). 2021; 9(1). PMC: 7827575. DOI: 10.3390/vaccines9010028. View

3.
Alhuzali H, Zhang T, Ananiadou S . Emotions and Topics Expressed on Twitter During the COVID-19 Pandemic in the United Kingdom: Comparative Geolocation and Text Mining Analysis. J Med Internet Res. 2022; 24(10):e40323. PMC: 9536769. DOI: 10.2196/40323. View

4.
Garcia K, Berton L . Topic detection and sentiment analysis in Twitter content related to COVID-19 from Brazil and the USA. Appl Soft Comput. 2021; 101:107057. PMC: 7832522. DOI: 10.1016/j.asoc.2020.107057. View

5.
Balakrishnan V, Ng W, Soo M, Han G, Lee C . Infodemic and fake news - A comprehensive overview of its global magnitude during the COVID-19 pandemic in 2021: A scoping review. Int J Disaster Risk Reduct. 2022; 78:103144. PMC: 9247231. DOI: 10.1016/j.ijdrr.2022.103144. View