Che ShaoPeng, Wang Xiaoke, Zhang Shunan, Kim Jang Hyun
School of Journalism and Communication, Tsinghua University, Beijing, China.
Department of Cardiovascular Medicine, The First Affiliated Hospital of Xi'an Jiaotong University, Xi'an, China.
Z Gesundh Wiss. 2023 Jan 31:1-20. doi: 10.1007/s10389-023-01833-4.
This study explored the influence of daily new case videos posted by public health agencies (PHAs) on TikTok in the context of COVID-19 normalization, as well as public sentiment and concerns. Five different stages were used, based on the Crisis and Emergency Risk Communication model, amidst the 2022 Shanghai lockdown.
After dividing the duration of the 2022 Shanghai lockdown into stages, we crawled all the user comments of videos posted by Healthy China on TikTok with the theme of daily new cases based on these five stages. Third, we constructed the pre-training model, ERNIE, to classify the sentiment of user comments. Finally, we performed semantic network analyses based on the sentiment classification results.
First, the high cost of fighting the epidemic during the 2022 Shanghai lockdown was why ordinary people were reluctant to cooperate with the anti-epidemic policy in the pre-crisis stage. Second, Shanghai unilaterally revised the definition of asymptomatic patients led to an escalation of risk levels and control conditions in other regions, ultimately affecting the lives and work of ordinary people in the area during the initial event stage. Third, the public reported specific details that affected their lives due to the long-term resistance to the epidemic in the maintenance stage. Fourth, the public became bored with videos regarding daily new cases in the resolution stage. Finally, the main reason for the negative public sentiment was that the local government did not follow the central government's anti-epidemic policy.
Our results suggest that the methodology used in this study is feasible. Furthermore, our findings will help the Chinese government or PHAs improve the possible behaviors that displease the public in the anti-epidemic process.
本研究探讨了在新冠疫情常态化背景下,公共卫生机构(PHA)在TikTok上发布的每日新增病例视频的影响,以及公众情绪和担忧。在2022年上海封控期间,基于危机与应急风险沟通模型划分了五个不同阶段。
将2022年上海封控时长划分为不同阶段后,我们基于这五个阶段抓取了“健康中国”在TikTok上发布的以每日新增病例为主题的视频的所有用户评论。第三,我们构建了预训练模型ERNIE来对用户评论的情绪进行分类。最后,我们基于情绪分类结果进行语义网络分析。
第一,2022年上海封控期间抗疫成本高昂是危机前阶段普通民众不愿配合抗疫政策的原因。第二,上海单方面修改无症状患者定义导致其他地区风险等级和管控条件升级,最终在事件初期影响了该地区普通民众的生活和工作。第三,在维持阶段,公众报告了因长期抗疫而影响其生活的具体细节。第四,在解决阶段,公众对每日新增病例相关视频感到厌烦。最后,公众负面情绪的主要原因是地方政府未遵循中央政府的抗疫政策。
我们的结果表明本研究中使用的方法是可行的。此外,我们的研究结果将有助于中国政府或公共卫生机构改进抗疫过程中可能令公众不满的行为。