Mental Health Pandemic during the COVID-19 Outbreak: Social Media as a
Window to Public Mental Health
- URL: http://arxiv.org/abs/2203.00237v4
- Date: Tue, 25 Apr 2023 21:18:12 GMT
- Title: Mental Health Pandemic during the COVID-19 Outbreak: Social Media as a
Window to Public Mental Health
- Authors: Michelle Bak, Chungyi Chiu, Jessie Chin
- Abstract summary: This study aims to identify and analyze depression-related dialogues on loneliness subreddits during the COVID-19 outbreak.
Our results showed significant increases in the volume of depression-related discussions where challenges were reported during the pandemic.
The current findings suggest the potential of social media to serve as a window for monitoring public mental health.
- Score: 0.055248043932579184
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Intensified preventive measures during the COVID-19 pandemic, such as
lockdown and social distancing, heavily increased the perception of social
isolation (i.e., a discrepancy between one's social needs and the provisions of
the social environment) among young adults. Social isolation is closely
associated with situational loneliness (i.e., loneliness emerging from
environmental change), a risk factor for depressive symptoms. Prior research
suggested vulnerable young adults are likely to seek support from an online
social platform such as Reddit, a perceived comfortable environment for lonely
individuals to seek mental health help through anonymous communication with a
broad social network. Therefore, this study aims to identify and analyze
depression-related dialogues on loneliness subreddits during the COVID-19
outbreak, with the implications on depression-related infoveillance during the
pandemic. Our study utilized logistic regression and topic modeling to classify
and examine depression-related discussions on loneliness subreddits before and
during the pandemic. Our results showed significant increases in the volume of
depression-related discussions (i.e., topics related to mental health, social
interaction, family, and emotion) where challenges were reported during the
pandemic. We also found a switch in dominant topics emerging from
depression-related discussions on loneliness subreddits, from dating
(prepandemic) to online interaction and community (pandemic), suggesting the
increased expressions or need of online social support during the pandemic. The
current findings suggest the potential of social media to serve as a window for
monitoring public mental health. Our future study will clinically validate the
current approach, which has implications for designing a surveillance system
during the crisis.
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