State Environmental Protection Key Laboratory of Integrated Surface Water-Groundwater Pollution Control, School of Environmental Science and Engineering, Southern University of Science and Technology, Shenzhen 518055, China.
Department of Electrical and Computer Engineering, Stony Brook University, Stony Brook, NY 11794, USA; West Windsor-Plainsboro High School North, Plainsboro, NJ 08536, USA.
Sci Total Environ. 2021 Mar 20;761:144114. doi: 10.1016/j.scitotenv.2020.144114. Epub 2020 Dec 15.
In the outbreak of infectious diseases such as COVID-19, social media channels are important tools for the public to obtain information and form their opinions on infection risk, which can affect their disease prevention behaviors and the consequent disease transmission processes. However, there has been a lack of theoretical investigation into how social media and human behaviors jointly affect the spread of infectious diseases. In this study, we develop an agent-based modeling framework that couples (1) a general opinion dynamics model that describes how individuals form their opinions on epidemic risk with various information sources, (2) a behavioral adoption model that simulates the adoption of disease prevention behaviors, and (3) an epidemiological SEIR model that simulates the spread of diseases in a host population. Through simulating the spread of a coronavirus-like disease in a hypothetical residential area, the modeling results show that social media can make a community more sensitive to external drivers. Social media can increase the public's awareness of infection risk, which is beneficial for epidemic containment, when high-quality epidemic information exists at the early stage of pandemics. However, fabricated and fake news on social media, after a "latent period", can lead to a significant increase in infection rate. The modeling results provide scientific evidence for the intricate interplay between social media and human behaviors in epidemic dynamics and control, and highlight the importance of public education to promote behavioral changes and the need to correct misinformation and fake news on social media in a timely manner.
在 COVID-19 等传染病爆发期间,社交媒体渠道是公众获取信息和形成感染风险观点的重要工具,这些观点可能会影响他们的疾病预防行为以及随之而来的疾病传播过程。然而,目前缺乏关于社交媒体和人类行为如何共同影响传染病传播的理论研究。在本研究中,我们开发了一个基于代理的建模框架,该框架结合了(1)一种通用的观点动力学模型,用于描述个体如何通过各种信息源形成对传染病风险的观点;(2)一种行为采用模型,用于模拟疾病预防行为的采用;以及(3)一种 SEIR 流行病学模型,用于模拟宿主人群中疾病的传播。通过模拟一种类似冠状病毒的疾病在假设的居民区中的传播,建模结果表明,社交媒体可以使社区对外部驱动因素更加敏感。当大流行病的早期存在高质量的传染病信息时,社交媒体可以提高公众对感染风险的认识,这有利于控制疫情。然而,社交媒体上的虚假和假新闻在“潜伏期”后,可能会导致感染率显著上升。建模结果为社交媒体和人类行为在疫情动态和控制中的复杂相互作用提供了科学证据,并强调了公众教育的重要性,以促进行为改变,以及及时纠正社交媒体上的错误信息和假新闻的必要性。