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Structural Topic Modeling Analysis of Patient Safety Interest among Health Consumers in Social Media
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Nari Kim, Nam-Ju Lee
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J Korean Acad Nurs 2024;54(2):266-278. Published online May 31, 2024
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DOI: https://doi.org/10.4040/jkan.23156
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Abstract
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- Purpose
This study aimed to investigate healthcare consumers’ interest in patient safety on social media using structural topic modeling (STM) and to identify changes in interest over time. Methods Analyzing 105,727 posts from Naver news comments, blogs, internet cafés, and Twitter between 2010 and 2022, this study deployed a Python script for data collection and preprocessing. STM analysis was conducted using R, with the documents’ publication years serving as metadata to trace the evolution of discussions on patient safety. Results The analysis identified a total of 13 distinct topics, organized into three primary communities: (1) “Demand for systemic improvement of medical accidents,” underscoring the need for legal and regulatory reform to enhance accountability; (2) “Efforts of the government and organizations for safety management,” highlighting proactive risk mitigation strategies; and (3) “Medical accidents exposed in the media,” reflecting widespread concerns over medical negligence and its repercussions. These findings indicate pervasive concerns regarding medical accountability and transparency among healthcare consumers. Conclusion The findings emphasize the importance of transparent healthcare policies and practices that openly address patient safety incidents. There is clear advocacy for policy reforms aimed at increasing the accountability and transparency of healthcare providers. Moreover, this study highlights the significance of educational and engagement initiatives involving healthcare consumers in fostering a culture of patient safety. Integrating consumer perspectives into patient safety strategies is crucial for developing a robust safety culture in healthcare.
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Citations
Citations to this article as recorded by 
- From Posts to Protection: Understanding User-Generated Safety Content on Reddit
Mashael Yousef Almoqbel International Journal of Computational and Experimental Science and Engineering.2025;[Epub] CrossRef
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