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Accepted for/Published in: Journal of Medical Internet Research

Date Submitted: Aug 27, 2020
Date Accepted: Mar 3, 2021
Date Submitted to PubMed: Mar 18, 2021

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

COVID-19 Discourse on Twitter in Four Asian Countries: Case Study of Risk Communication

Park S, Han S, Kim J, Molaie MM, Vu HD, Singh K, Han J, Lee W, Cha M

COVID-19 Discourse on Twitter in Four Asian Countries: Case Study of Risk Communication

J Med Internet Res 2021;23(3):e23272

DOI: 10.2196/23272

PMID: 33684054

PMCID: 8108572

COVID-19 Discourse on Twitter: Case Study of Risk Communication in Four Asian Countries

  • Sungkyu Park; 
  • Sungwon Han; 
  • Jeongwook Kim; 
  • Mir Majid Molaie; 
  • Hoang Dieu Vu; 
  • Karandeep Singh; 
  • Jiyoung Han; 
  • Wonjae Lee; 
  • Meeyoung Cha

ABSTRACT

Background:

The novel coronavirus disease (hereafter COVID-19) caused by severe acute respiratory coronavirus 2 (SARS-CoV-2) has caused a global pandemic. During this time, a plethora of information regarding COVID-19 containing both false information (misinformation) and accurate information circulated on social media. The World Health Organization has declared a need to fight not only the pandemic but also the infodemic (a portmanteau of information and pandemic). In this context, it is critical to analyze the quality and veracity of information shared on social media and the evolution of discussions on major topics regarding COVID-19.

Objective:

This research characterizes risk communication patterns by analyzing public discourse on the novel coronavirus in four Asian countries that suffered outbreaks of varying degrees of severity: South Korea, Iran, Vietnam, and India.

Methods:

We collect tweets on COVID-19 posted from the four Asian countries from the start of their respective COVID-19 outbreaks in January until March 2020. We consult with locals and utilize relevant keywords from the local languages, following each country's tweet conventions. We then utilize a natural language processing (NLP) method to learn topics in an unsupervised fashion automatically. Finally, we qualitatively label the extracted topics to comprehend their semantic meanings.

Results:

We find that the official phases of the epidemic, as announced by the governments of the studied countries, do not align well with the online attention paid to COVID-19. Motivated by this misalignment, we develop a new natural language processing method to identify the transitions in topic phases and compare the identified topics across the four Asian countries. We examine the time lag between social media attention and confirmed patient counts. We confirm an inverse relationship between the tweet count and topic diversity.

Conclusions:

Through the current research, we observe similarities and differences in the social media discourse on the pandemic in different Asian countries. We observe that once the daily tweet count hits its peak, the successive tweet count trend tends to decrease for all countries. This phenomenon aligns with the dynamics of the issue-attention cycle, an existing construct from communication theory conceptualizing how an issue rises and falls from public attention. Little work has been performed to identify topics in online risk communication by collectively considering temporal tweet trends in different countries. In this regard, if a critical piece of misinformation can be detected at an early stage in one country, it can be reported to prevent the spread of misinformation in other countries. Therefore, this work can help social media services, social media communicators, journalists, policymakers, and medical professionals fight the infodemic on a global scale. Clinical Trial: N/A


 Citation

Please cite as:

Park S, Han S, Kim J, Molaie MM, Vu HD, Singh K, Han J, Lee W, Cha M

COVID-19 Discourse on Twitter in Four Asian Countries: Case Study of Risk Communication

J Med Internet Res 2021;23(3):e23272

DOI: 10.2196/23272

PMID: 33684054

PMCID: 8108572

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