Suppr超能文献

社会压力驱动 COVID-19 疫情的多波动态。

Social stress drives the multi-wave dynamics of COVID-19 outbreaks.

机构信息

Department of Neurotechnology, Lobachevsky University, 23 Gagarin Ave., 603022, Nizhny Novgorod, Russia.

Laboratory of Autowave Processes, Institute of Applied Physics of the Russian Academy of Sciences (IAP RAS), 46 Ulyanov St., 603950, Nizhny Novgorod, Russia.

出版信息

Sci Rep. 2021 Nov 18;11(1):22497. doi: 10.1038/s41598-021-01317-z.

Abstract

The dynamics of epidemics depend on how people's behavior changes during an outbreak. At the beginning of the epidemic, people do not know about the virus, then, after the outbreak of epidemics and alarm, they begin to comply with the restrictions and the spreading of epidemics may decline. Over time, some people get tired/frustrated by the restrictions and stop following them (exhaustion), especially if the number of new cases drops down. After resting for a while, they can follow the restrictions again. But during this pause the second wave can come and become even stronger then the first one. Studies based on SIR models do not predict the observed quick exit from the first wave of epidemics. Social dynamics should be considered. The appearance of the second wave also depends on social factors. Many generalizations of the SIR model have been developed that take into account the weakening of immunity over time, the evolution of the virus, vaccination and other medical and biological details. However, these more sophisticated models do not explain the apparent differences in outbreak profiles between countries with different intrinsic socio-cultural features. In our work, a system of models of the COVID-19 pandemic is proposed, combining the dynamics of social stress with classical epidemic models. Social stress is described by the tools of sociophysics. The combination of a dynamic SIR-type model with the classical triad of stages of the general adaptation syndrome, alarm-resistance-exhaustion, makes it possible to describe with high accuracy the available statistical data for 13 countries. The sets of kinetic constants corresponding to optimal fit of model to data were found. These constants characterize the ability of society to mobilize efforts against epidemics and maintain this concentration over time and can further help in the development of management strategies specific to a particular society.

摘要

传染病的动态取决于人们在疫情爆发期间行为的变化。在疫情初期,人们对病毒一无所知,然后,在疫情爆发和警报发出后,他们开始遵守限制措施,疫情的传播可能会下降。随着时间的推移,一些人会对限制感到厌倦/沮丧而停止遵守(疲惫),特别是如果新病例数量下降。休息一段时间后,他们可以再次遵守限制措施。但在这段暂停期间,第二波疫情可能会到来,而且比第一波更强烈。基于 SIR 模型的研究并不能预测到观察到的疫情第一波迅速退出。社会动态应该被考虑。第二波疫情的出现也取决于社会因素。已经开发了许多 SIR 模型的推广形式,这些模型考虑了随着时间的推移免疫力的减弱、病毒的进化、疫苗接种和其他医学和生物学细节。然而,这些更复杂的模型并不能解释具有不同内在社会文化特征的国家之间爆发情况的明显差异。在我们的工作中,提出了一个 COVID-19 大流行模型系统,将社会压力的动态与经典传染病模型相结合。社会压力通过社会物理学工具来描述。将动态 SIR 型模型与一般适应综合征的经典三联症(警报-抵抗-疲惫)相结合,使得能够高精度地描述 13 个国家的可用统计数据。找到了与数据最佳拟合的模型的相应动力学常数集。这些常数表征了社会动员力量对抗疫情的能力,并随着时间的推移保持这种浓度,这可以进一步帮助制定针对特定社会的管理策略。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/115e/8602246/366e1532e328/41598_2021_1317_Fig1_HTML.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验