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Accepted for/Published in: JMIR Formative Research

Date Submitted: Jan 20, 2023
Date Accepted: Aug 1, 2023

The final, peer-reviewed published version of this preprint can be found here:

Influence of Tweets Indicating False Rumors on COVID-19 Vaccination: Case Study

Hirabayashi M, Shibata D, Shinohara E, Kawazoe Y

Influence of Tweets Indicating False Rumors on COVID-19 Vaccination: Case Study

JMIR Form Res 2023;7:e45867

DOI: 10.2196/45867

PMID: 37669092

PMCID: 10482055

Influence of tweets indicating false rumors on COVID-19 vaccination: Case Study

  • Mai Hirabayashi; 
  • Daisaku Shibata; 
  • Emiko Shinohara; 
  • Yoshimasa Kawazoe

ABSTRACT

Background:

As of December 2022, the outbreak of COVID-19 showed no sign of abating, continuing to impact people's lives, livelihoods, economies, and more. Vaccination is an effective way to achieve mass immunity, which is indispensable for controlling infectious diseases. However, in places such as Japan, where vaccination is voluntary, there are people who choose to not receive the vaccine, even if an effective vaccine is offered. It has been noted that information on social media influences vaccination intentions. Thus, to promote vaccination, it is necessary to clarify what kind of information can influence attitudes towards vaccines.

Objective:

False rumors are often posted and spread in large numbers on social media, especially during emergencies. Therefore, we analyze tweets with indications of false rumors related to the COVID-19 vaccine on Twitter. We defined a tweet indicating a false rumor (TIFR) as one that contains questions or points out errors of information. We aimed to answer the following questions: (1) what kinds of TIFRs about the COVID-19 vaccine were posted on Twitter, and (2) are the number of posted TIFRs related to social conditions such as vaccination status.

Methods:

We use the following data sets: (1) the number of TIFRs automatically collected by the "Rumor Cloud", and (2) the number of COVID-19 vaccine inoculators published on the website of the Prime Minister's Office. First, we counted the number of COVID-19 vaccine-related TIFRs from data set (1). Then, we examined the cross-correlation coefficients between data set (1) and data set (2). Through this verification, we examined the correlation coefficients for the following three periods: (A) the same period of data, (B) the case where the occurrence of the suggestion of TIFRs precedes the vaccination (negative time lag), and (C) the case where the vaccination precedes the occurrence of TIFRs (positive time lag). The data period used for the validation was from October 4, 2021 to April 18, 2022.

Results:

The correlation coefficients between the number of TIFRs and vaccine inoculators showed significant and strong positive correlations. The correlation coefficient was over 0.7 at -8, -7, and -1 weeks of lag. Results suggests that the number of vaccine inoculators tended to increase with an increase in the number of TIFRs. Significant correlation coefficients of 0.5 to 0.6 were observed for lag +1 week and +2 weeks. This implies that an increase of vaccine inoculators increases the number of TIFRs.

Conclusions:

This study revealed the following two findings: (1) most TIFRs about the COVID-19 vaccine were negative. (2) There was a positive correlation between the number of TIFRs and the number of COVID-19 vaccinations. Our results suggest that the increase in the number of TIFRs may have been a factor in inducing vaccination behavior.


 Citation

Please cite as:

Hirabayashi M, Shibata D, Shinohara E, Kawazoe Y

Influence of Tweets Indicating False Rumors on COVID-19 Vaccination: Case Study

JMIR Form Res 2023;7:e45867

DOI: 10.2196/45867

PMID: 37669092

PMCID: 10482055

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