| Literature DB >> 34447924 |
Jean-Christophe Boucher1, Kirsten Cornelson2, Jamie L Benham3,4, Madison M Fullerton4, Theresa Tang4, Cora Constantinescu5, Mehdi Mourali6, Robert J Oxoby7, Deborah A Marshall3,4, Hadi Hemmati8, Abbas Badami8, Jia Hu4, Raynell Lang3.
Abstract
BACKGROUND: The rollout of COVID-19 vaccines has brought vaccine hesitancy to the forefront in managing this pandemic. COVID-19 vaccine hesitancy is fundamentally different from that of other vaccines due to the new technologies being used, rapid development, and widespread global distribution. Attitudes on vaccines are largely driven by online information, particularly information on social media. The first step toward influencing attitudes about immunization is understanding the current patterns of communication that characterize the immunization debate on social media platforms.Entities:
Keywords: COVID-19; Twitter; attitudes; behavior; coronavirus; machine learning; public health; risk reduction; social media; social network analysis
Year: 2021 PMID: 34447924 PMCID: PMC8363124 DOI: 10.2196/28800
Source DB: PubMed Journal: JMIR Infodemiology ISSN: 2564-1891
Figure 1Data analytics workflow. NLP: natural language processing.
Figure 2Twitter retweet cluster of COVID-19 vaccination (November 19 to November 26, 2020). The vaccine acceptant cluster (n=211,549), vaccine hesitant cluster (n=88,892), Indian vaccine acceptant cluster (n=28,713), and French vaccine hesitant cluster (n=11,509) are seen. Nodes represent specific Twitter accounts, while edges represent retweet activity between accounts. Presented are the four largest online communities mentioning COVID-19 vaccination.
Inferred topic analysis of the COVID-19 vaccination hesitancy cluster (November 19 to November 26, 2020).
| Topic | Topic keywords bi-gram (tf-idf) | Inferred topic | Tweets (N=146,191), n (%) |
| 1 | Countries test, results multinational, multinational companies, the Johnson, commie, passes two, proposing freedom, commie proposing, full commie, Johnson government, gone full, government gone | Trust in the government | 33,578 (23.0%) |
| 2 | Tanked economy, tweet day, bell, disturbing tweet, day professor, most disturbing, bell talking, professor sir, irving bell, john irving, irving, sir john | COVID-19 vaccine hesitancy: Efficacy | 30,576 (20.9%) |
| 3 | Produced cell, unlicensed produced, lines aborted, shots wont, HIV/AIDS, won’t walk, test enough, infection enough, antibodies past, enough effective, enough antibodies, past infection | COVID-19 vaccine hesitancy: Efficacy | 28,818 (19.7%) |
| 4 | Presi, COVID literally, one two, presi im, corner presi, literaly around, im sitting, sitting thinking, thinking incredible, incredible one | Support for Trump’s management of the COVID-19 crisis | 11,631 (8.0%) |
| 5 | nick healthy, jer, emtfire, gau nick, jer gau, damage jer, dayprofessor sir, tweet dayprofessor, dayprofessor | COVID-19 vaccine hesitancy: Side effects | 9579 (6.6%) |
| 6 | Passports we, elite continue, the elite, commercial flights, fly private, breaking qantas, ceo confirms, you’ve vaccinated, compulsory international, international, confirms proof, proof you’ve | Trust in multinational corporations | 9286 (6.4%) |
| 7 | Attacked, attacked since, since apr, apr highlighting, highlighting imp, viciously, imp tcell, sarscov, despite published, published COVID, viciously attacked, ive viciously | COVID-19 vaccine hesitancy: Efficacy | 7896 (5.4%) |
| 8 | Label new, staff form, group label, jabs poison, longterm tcell, immunity cases, watch interview, interview dr, science longterm, discussing hysteria, phd discussing, dr phd. | COVID-19 vaccine hesitancy: Efficacy | 6921 (4.7%) |
| 9 | Arn caca, quand, faire, arn, bonjour, confinement vaccin, avec, caca, confinement, vaccin contre, contre le, le vaccin | COVID-19 vaccine hesitancy: Side effects | 2822 (1.9%) |
| 10 | Coronavirus im, pr quarter, newspapers, im delighted, delighted mainstream, mainstream newspapers, newspapers picking, picking pr. | COVID-19 vaccine hesitancy: Efficacy | 2320 (1.6%) |
| 11 | Fly must, want fly, begins if, must take | Trust in multinational corporations | 1586 (1.1%) |
| 12 | Protestors, force in, could force, COVID law, authorities could, Denmark, proposed forced, protesting proposed, protestors protesting, in Denmark, Denmark protestors, law authorities | Trust in the government | 1178 (0.8%) |
Figure 3Distribution of inferred topics in COVID-19 vaccine hesitancy clusters on social media. This figure presents the aggregated results of inferred topics in vaccine hesitancy clusters from Table 1.