Investigating #covidnurse messages on TikTok: A Descriptive Study
ABSTRACT
Background:
During a time of high stress and decreased social interaction, nurses have turned to social media platforms like TikTok, as an outlet for expression, entertainment, and communication.
Objective:
The purpose of this cross-sectional content analysis study was to describe the content of videos on the hashtag #covidnurse on TikTok which included 100 videos in the English language.
Methods:
At the time of the study, this hashtag had 116.9M views. Each video was coded for content related to what nurses encountered and were feeling during the COVID-19 pandemic.
Results:
Combined, the 100 videos sampled received 47,056,700 views, 76,856 comments, and 5,996,676 likes. There were 4 content categories that appeared in a majority (>50) of the videos: 83 showed the individual as a nurse, 72 showed the individual in professional attire, 58 mentioned/suggested stress, 55 used music, and 53 mentioned/suggested frustration. Those that mentioned stress and those that mentioned frustration received less than 50% of the total views (46.17% and 34.69%, respectively). While not a majority, 49 of the 100 videos mentioned the importance of nursing. These videos garnered 37.41% of the total views, 34.82% of the total comments, and 23.85% of the total likes. So, despite nearly half of the total videos mentioning how important nurses are, these videos received less than half of the total views, comments, and likes.
Conclusions:
Social media and increasingly video related online messaging such as TikTok are important platforms for social networking, social support, entertainment, and education on diverse topics including health in general and COVID-19 specifically. This presents an opportunity for future research; to assess the utility of the TikTok platform for meaningful engagement and health communication on significant public health issues.
Citation
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Copyright
© The authors. All rights reserved. This is a privileged document currently under peer-review/community review (or an accepted/rejected manuscript). Authors have provided JMIR Publications with an exclusive license to publish this preprint on it's website for review and ahead-of-print citation purposes only. While the final peer-reviewed paper may be licensed under a cc-by license on publication, at this stage authors and publisher expressively prohibit redistribution of this draft paper other than for review purposes.