Medford Richard J, Saleh Sameh N, Sumarsono Andrew, Perl Trish M, Lehmann Christoph U
University of Texas Southwestern Medical Center, Department of Internal Medicine, Division of Infectious Diseases and Geographic Medicine, Dallas, Texas, USA.
University of Texas Southwestern Medical Center, Clinical Informatics Center, Dallas, Texas, USA.
Open Forum Infect Dis. 2020 Jun 30;7(7):ofaa258. doi: 10.1093/ofid/ofaa258. eCollection 2020 Jul.
Twitter has been used to track trends and disseminate health information during viral epidemics. On January 21, 2020, the Centers for Disease Control and Prevention activated its Emergency Operations Center and the World Health Organization released its first situation report about coronavirus disease 2019 (COVID-19), sparking significant media attention. How Twitter content and sentiment evolved in the early stages of the COVID-19 pandemic has not been described.
We extracted tweets matching hashtags related to COVID-19 from January 14 to 28, 2020 using Twitter's application programming interface. We measured themes and frequency of keywords related to infection prevention practices. We performed a sentiment analysis to identify the sentiment polarity and predominant emotions in tweets and conducted topic modeling to identify and explore discussion topics over time. We compared sentiment, emotion, and topics among the most popular tweets, defined by the number of retweets.
We evaluated 126 049 tweets from 53 196 unique users. The hourly number of COVID-19-related tweets starkly increased from January 21, 2020 onward. Approximately half (49.5%) of all tweets expressed fear and approximately 30% expressed surprise. In the full cohort, the economic and political impact of COVID-19 was the most commonly discussed topic. When focusing on the most retweeted tweets, the incidence of fear decreased and topics focused on quarantine efforts, the outbreak and its transmission, as well as prevention.
Twitter is a rich medium that can be leveraged to understand public sentiment in real-time and potentially target individualized public health messages based on user interest and emotion.
在病毒性流行病期间,推特已被用于追踪趋势和传播健康信息。2020年1月21日,美国疾病控制与预防中心启动了其应急行动中心,世界卫生组织发布了首份关于2019冠状病毒病(COVID-19)的情况报告,引发了媒体的广泛关注。COVID-19大流行早期推特内容和情绪是如何演变的尚未得到描述。
我们使用推特的应用程序编程接口,提取了2020年1月14日至28日与COVID-19相关的带有主题标签的推文。我们测量了与感染预防措施相关的主题和关键词频率。我们进行了情感分析,以确定推文中的情感极性和主要情绪,并进行了主题建模,以识别和探索随时间变化的讨论话题。我们比较了按转发数定义的最热门推文中的情感、情绪和话题。
我们评估了来自53196个不同用户的126049条推文。2020年1月21日起,与COVID-19相关的推文每小时数量急剧增加。所有推文中约一半(49.5%)表达了恐惧,约30%表达了惊讶。在整个队列中,COVID-19的经济和政治影响是最常讨论的话题。当关注转发最多的推文时,恐惧情绪的发生率下降,话题集中在隔离措施、疫情爆发及其传播以及预防方面。
推特是一种丰富的媒介,可用于实时了解公众情绪,并有可能根据用户兴趣和情绪针对性地推送个性化的公共卫生信息。