Department of Psychiatry, Kangbuk Samsung Hospital, Sungkyunkwan University School of Medicine, Seoul, 03181 Republic of Korea.
Department of Preventive Medicine, College of Medicine, Korea University, 73, Goryeodae-ro, Seongbuk-gu, Seoul, 02841 Republic of Korea; Department of Global Community Health, the School of Public Health, Korea University, 73, Goryeodae-ro, Seongbuk-gu, Seoul, 02841 Republic of Korea.
Soc Sci Med. 2024 Oct;359:117276. doi: 10.1016/j.socscimed.2024.117276. Epub 2024 Aug 27.
Numerous studies have highlighted the significant impact of disasters on mental health, often leading to psychiatric disorders among affected individuals. Timely identification of disaster-related mental health problems is crucial to prevent long-term negative consequences and improve individual and community resilience. To address the limitations of prior research that has focused solely on isolated incidents, we analyzed the impact of a recurring Halloween event in Itaewon, South Korea, which culminated tragically in a crowd crush incident in 2022. We conducted sentiment analysis on big data from Korean Twitter to gauge the impact of this disaster on public sentiment. We collected tweets 2 weeks before and after the annual festival from 2020 to 2022, allowing for the consideration of variability across years and days before the disaster. Using a pre-trained RoBERTa neural network model fine-tuned with public sentiment datasets, we categorized tweets into seven pre-defined emotional categories: Anger, sadness, happiness, disgust, fear, surprise, and neutrality. These sentiments were then analyzed as daily time-series data. The overall tweet volume across all sentiment categories increased, particularly showing an increase in the number of tweets indicating "Sadness" in 2022 compared with that in previous years. Post-disaster, a substantial increase was noted in the proportion of tweets expressing "Sadness" and "Fear." This trend was confirmed by Seasonal Autoregressive Integrated Moving Average with Exogenous Regressor models. Notably, there was an increase in the number of tweets expressing all sentiments, including "Happy." However, significant changes in proportions were observed only in tweets categorized as expressing "Sadness" [0.046 (95% CI: 0.024-0.068, P < 0.0001)] and "Fear" [0.033 (95% CI: 0.014-0.051, P < 0.0001)]. Our study demonstrates the feasibility of using sentiment data from social media, combined with sentiment classification, to assess distinct public mental health features following disasters. This approach provides valuable insights into the emotional impact of each event.
许多研究都强调了灾害对心理健康的重大影响,往往会导致受灾个体出现精神障碍。及时识别与灾害相关的心理健康问题对于预防长期负面影响和提高个人及社区的韧性至关重要。为了解决先前研究仅关注孤立事件的局限性,我们分析了韩国梨泰院 recurring Halloween event 的影响,该事件在 2022 年最终导致了一场人群踩踏事故。我们对来自韩国 Twitter 的大数据进行了情感分析,以评估这场灾难对公众情绪的影响。我们收集了 2020 年至 2022 年每年节日前后两周的推文,考虑了灾难前几年和不同日子的可变性。我们使用经过公共情绪数据集微调的预训练 RoBERTa 神经网络模型,将推文分为七个预先定义的情感类别:愤怒、悲伤、快乐、厌恶、恐惧、惊讶和中立。然后,这些情绪作为每日时间序列数据进行分析。所有情感类别中的总体推文量都增加了,特别是在 2022 年,与前几年相比,“悲伤”类别的推文数量增加了。灾难后,表达“悲伤”和“恐惧”的推文比例显著增加。季节性自回归综合移动平均外生回归模型证实了这一趋势。值得注意的是,表达所有情绪(包括“快乐”)的推文数量增加了。然而,仅在被归类为表达“悲伤”[0.046(95%CI:0.024-0.068,P<0.0001)]和“恐惧”[0.033(95%CI:0.014-0.051,P<0.0001)]的推文中观察到比例的显著变化。我们的研究表明,使用社交媒体的情感数据结合情感分类来评估灾难后不同的公众心理健康特征是可行的。这种方法提供了对每个事件情感影响的宝贵见解。