Impact of random and targeted disruptions on information diffusion during outbreaks

爆发 信息交流 比例(比率) 人口 心理干预 大流行 传染病(医学专业) 计算机科学 疾病 环境卫生 2019年冠状病毒病(COVID-19) 医学 地理 病毒学 电信 地图学 病理 精神科
作者
Hosein Masoomy,Tom Chou,Lucas Böttcher
出处
期刊:Chaos [American Institute of Physics]
卷期号:33 (3) 被引量:1
标识
DOI:10.1063/5.0139844
摘要

Outbreaks are complex multi-scale processes that are impacted not only by cellular dynamics and the ability of pathogens to effectively reproduce and spread, but also by population-level dynamics and the effectiveness of mitigation measures. A timely exchange of information related to the spread of novel pathogens, stay-at-home orders, and other measures can be effective at containing an infectious disease, particularly during the early stages when testing infrastructure, vaccines, and other medical interventions may not be available at scale. Using a multiplex epidemic model that consists of an information layer (modeling information exchange between individuals) and a spatially embedded epidemic layer (representing a human contact network), we study how random and targeted disruptions in the information layer (e.g., errors and intentional attacks on communication infrastructure) impact the total proportion of infections, peak prevalence (i.e., the maximum proportion of infections), and the time to reach peak prevalence. We calibrate our model to the early outbreak stages of the SARS-CoV-2 pandemic in 2020. Mitigation campaigns can still be effective under random disruptions, such as failure of information channels between a few individuals. However, targeted disruptions or sabotage of hub nodes that exchange information with a large number of individuals can abruptly change outbreak characteristics, such as the time to reach the peak of infection. Our results emphasize the importance of the availability of a robust communication infrastructure during an outbreak that can withstand both random and targeted disruptions.
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