University of Kansas, Lawrence, Kansas, United States.
Augusta University, Augusta, Georgia, United States.
PeerJ. 2023 Feb 15;11:e14736. doi: 10.7717/peerj.14736. eCollection 2023.
COVID-19 is a respiratory disease caused by a recently discovered, novel coronavirus, SARS-COV-2. The disease has led to over 81 million confirmed cases of COVID-19, with close to two million deaths. In the current social climate, the risk of COVID-19 infection is driven by individual and public perception of risk and sentiments. A number of factors influences public perception, including an individual's belief system, prior knowledge about a disease and information about a disease. In this article, we develop a model for COVID-19 using a system of ordinary differential equations following the natural history of the infection. The model uniquely incorporates social behavioral aspects such as quarantine and quarantine violation. The model is further driven by people's sentiments (positive and negative) which accounts for the influence of disinformation. People's sentiments were obtained by parsing through and analyzing COVID-19 related tweets from Twitter, a social media platform across six countries. Our results show that our model incorporating public sentiments is able to capture the trend in the trajectory of the epidemic curve of the reported cases. Furthermore, our results show that positive public sentiments reduce disease burden in the community. Our results also show that quarantine violation and early discharge of the infected population amplifies the disease burden on the community. Hence, it is important to account for public sentiment and individual social behavior in epidemic models developed to study diseases like COVID-19.
COVID-19 是一种由新型冠状病毒 SARS-COV-2 引起的呼吸道疾病。该疾病已导致超过 8100 万例 COVID-19 确诊病例,近 200 万人死亡。在当前的社会环境下,COVID-19 感染的风险由个人和公众对风险和情绪的感知驱动。许多因素影响公众的看法,包括个人的信仰体系、对疾病的先验知识和有关疾病的信息。在本文中,我们使用遵循感染自然史的常微分方程系统为 COVID-19 建立了一个模型。该模型独特地纳入了隔离和违反隔离等社会行为方面。该模型还受到人们情绪(正面和负面)的驱动,这反映了虚假信息的影响。人们的情绪是通过对来自社交媒体平台 Twitter 的 COVID-19 相关推文进行解析和分析获得的,Twitter 是一个覆盖六个国家的社交媒体平台。我们的结果表明,我们的模型纳入公众情绪能够捕捉到报告病例的疫情曲线轨迹的趋势。此外,我们的结果表明,公众的积极情绪会减轻社区的疾病负担。我们的结果还表明,违反隔离规定和过早释放受感染人群会加剧社区的疾病负担。因此,在开发用于研究 COVID-19 等疾病的传染病模型时,考虑公众情绪和个人社会行为非常重要。