Exploring Patterns in Online Discussions into the Lingering Impact of COVID-19, Two Years On

Author:

Sinha Gaurav R.1,Power Shannon R.1,Kursuncu Ugur2

Affiliation:

1. University of Georgia

2. Georgia State University

Abstract

Abstract Purpose The purpose of this study was to explore underlying patterns in the users’ discussions in an online community on the darker effects of COVID-19. Understanding these patterns is critical as they can provide new information in tailoring support to individuals facing specific post-pandemic issues. Methods A mixed-method approach was used to identify patterns in large volumes of publicly available responses (n = 23,957 posts; ~1,061,825 words) from an online community. Qualitatively, 1,000 random responses were manually coded by two coders and vetted by an investigator. As it was difficult to manually code such a big dataset, a quantitative approach building a topic model was employed with a language model. Results Qualitative analyses revealed 20 themes, including mental health (13%), impacts of direct and indirect deaths on socio-economically vulnerable groups (e.g. children and elderly, 10.4%), increasing sociopolitical divide and vaccination debate (6.8%), and work-related issues (e.g. burnout and layoffs, 6%). Topic analyses resulted in similar categories (n = 30), including physical health, loss experiences during COVID-19 & suicide; sociopolitical impact & adaptations in pandemic lifestyle; mental health & vaccination; pandemic restrictions, youth & behavioral expectations; distrust for institutions & resource scarcity; staffing issues & personal crisis; disrupted careers; and childcare challenges & economic shifts. Conclusion As researchers are harnessing vast amounts of real-time human interaction data to study a variety of public health issues, our study provides insights into the specific challenges that people experienced when it became convenient to share concerns online amid an overloaded healthcare system during the pandemic.

Publisher

Research Square Platform LLC

Reference25 articles.

1. Author1 et al, 2023a.

2. Author1 et al, 2023b..

3. WHO. WHO Coronavirus (COVID-19) Dashboard. 2023. https://covid19.who.int/?mapFilter=deaths (accessed 11 December 2023)

4. The first year of the Covid-19 pandemic through the lens of r/Coronavirus subreddit: An exploratory study;Tan Z;Health Technol,2023

5. The COVID-19 Pandemic: A Health Crisis Managed or a Panic Response with Disastrous Future Consequences?;Luqmani YA;Med Princ Pract Int J Kuwait Univ Health Sci Cent,2022

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