Amaral Marco A, Oliveira Marcelo M de, Javarone Marco A
Instituto de Artes, Humanidades e Ciẽncias, Universidade Federal do Sul da Bahia, Teixeira de Freitas-BA, 45996-108 Brazil.
Departamento de Física e Matemática, CAP, Universidade Federal de São João del Rei, Ouro Branco-MG, 36420-000 Brazil.
Chaos Solitons Fractals. 2021 Feb;143:110616. doi: 10.1016/j.chaos.2020.110616. Epub 2021 Jan 7.
During pandemic events, strategies such as social distancing can be fundamental to reduce simultaneous infections and mitigate the disease spreading, which is very relevant to the risk of a healthcare system collapse. Although these strategies can be recommended, or even imposed, their actual implementation may depend on the population perception of the risks associated with a potential infection. The current COVID-19 crisis, for instance, is showing that some individuals are much more prone than others to remain isolated. To better understand these dynamics, we propose an epidemiological SIR model that uses evolutionary game theory for combining in a single process social strategies, individual risk perception, and viral spreading. In particular, we consider a disease spreading through a population, whose agents can choose between self-isolation and a lifestyle careless of any epidemic risk. The strategy adoption is individual and depends on the perceived disease risk compared to the quarantine cost. The game payoff governs the strategy adoption, while the epidemic process governs the agent's health state. At the same time, the infection rate depends on the agent's strategy while the perceived disease risk depends on the fraction of infected agents. Our results show recurrent infection waves, which are usually seen in previous historic epidemic scenarios with voluntary quarantine. In particular, such waves re-occur as the population reduces disease awareness. Notably, the risk perception is found to be fundamental for controlling the magnitude of the infection peak, while the final infection size is mainly dictated by the infection rates. Low awareness leads to a single and strong infection peak, while a greater disease risk leads to shorter, although more frequent, peaks. The proposed model spontaneously captures relevant aspects of a pandemic event, highlighting the fundamental role of social strategies.
在疫情期间,社交距离等策略对于减少同时感染和减缓疾病传播至关重要,这与医疗系统崩溃的风险密切相关。尽管这些策略可以被推荐甚至强制实施,但其实际执行可能取决于民众对潜在感染相关风险的认知。例如,当前的新冠疫情危机表明,一些人比其他人更倾向于保持隔离。为了更好地理解这些动态,我们提出了一个流行病学SIR模型,该模型使用进化博弈论将社会策略、个体风险认知和病毒传播整合在一个单一过程中。具体而言,我们考虑一种疾病在人群中传播,其中的个体可以在自我隔离和不顾任何疫情风险的生活方式之间做出选择。策略的采用是个体性的,取决于与隔离成本相比所感知到的疾病风险。博弈的收益决定策略的采用,而疫情过程决定个体的健康状态。同时,感染率取决于个体的策略,而所感知到的疾病风险取决于感染个体的比例。我们的结果显示出反复出现的感染浪潮,这在以往有自愿隔离的历史疫情场景中很常见。特别是,随着人群对疾病的认知降低,这种浪潮会再次出现。值得注意的是,发现风险认知对于控制感染峰值的大小至关重要,而最终的感染规模主要由感染率决定。低认知导致单一且强烈的感染峰值,而更高的疾病风险导致峰值虽短但更频繁。所提出的模型自然地捕捉了疫情事件的相关方面,突出了社会策略的重要作用。