Public Health Insights from Social Media Analysis during the COVID-19 Pandemic in South Korea
Abstract
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2. Xue J, Chen J, Hu R, Chen C, Zheng C, Su Y, et al. (2020). Twitter discussions and emotions about the COVID-19 pandem-ic: machine learning approach. J Med In-ternet Res, 22(11):e20550.
3. Panagiotopoulos P, Barnett J, Bigdeli AZ, Sams S (2016). Social media in emergen-cy management: Twitter as a tool for communicating risks to the public. Tech-nol Forecast Soc Change, 111:86-96.
4. Wiegmann M, Kersten J, Senaratne H, Potthast M, Klan F, Stein B (2021). Op-portunities and risks of disaster data from social media: a systematic review of incident information. Nat Hazards Earth Syst Sci, 21(5):1431-44.
5. Bertoni E, Fontana M, Gabrielli L, Signo-relli S, Vespe M, editors (2023). Handbook of computational social science for policy. Cham: Springer International Publishing. Avail-able from: https://link.springer.com/10.1007/978-3-031-16624-2
6. Jeong IW (2020). South Korea pioneers coronavirus drive-through testing sta-tion. CNN. Available from: https://www.cnn.com/2020/03/02/asia/coronavirus-drive-through-south-korea-hnk-intl/index.html
7. Nham E, Song JY, Noh JY, Cheong HJ, Kim WJ (2022). COVID-19 vaccination in Korea: past, present, and the way forward. J Korean Med Sci, 37(47):e351.
8. Buchy P, Buisson Y, Cintra O, et al. (2021). COVID-19 pandemic: lessons learned from more than a century of pandemics and current vaccine development for pandemic control. Int J Infect Dis, 112:300-17.
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| Issue | Vol 54 No 9 (2025) | |
| Section | Letter to the Editor | |
| DOI | https://doi.org/10.18502/ijph.v54i9.19870 | |
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This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License. |
How to Cite
1.
Park S, Song T, Park J-H. Public Health Insights from Social Media Analysis during the COVID-19 Pandemic in South Korea. Iran J Public Health. 2025;54(9):2035-2036.



