Moodley Raymond, Chiclana Francisco, Caraffini Fabio, Gongora Mario
Institute of Artificial Itelligence, School of Computer Science and Informatics De Montfort University Leicester UK.
Andalusian Research Institute on Data Science and Computational Intelligence (DaSCI) University of Granada Granada Spain.
Int J Intell Syst. 2022 Apr;37(4):2739-2757. doi: 10.1002/int.22440. Epub 2021 May 2.
The unfolding coronavirus (COVID-19) pandemic has highlighted the global need for robust predictive and containment tools and strategies. COVID-19 continues to cause widespread economic and social turmoil, and while the current focus is on both minimising the spread of the disease and deploying a range of vaccines to save lives, attention will soon turn to future proofing. In line with this, this paper proposes a prediction and containment model that could be used for pandemics and natural disasters. It combines selective lockdowns and protective cordons to rapidly contain the hazard while allowing minimally impacted local communities to conduct "business as usual" and/or offer support to highly impacted areas. A flexible, easy to use data analytics model, based on Self Organising Maps, is developed to facilitate easy decision making by governments and organisations. Comparative tests using publicly available data for Great Britain (GB) show that through the use of the proposed prediction and containment strategy, it is possible to reduce the peak infection rate, while keeping several regions (up to 25% of GB parliamentary constituencies) economically active within protective cordons.
不断蔓延的冠状病毒(COVID-19)大流行凸显了全球对强大的预测和遏制工具及策略的需求。COVID-19持续引发广泛的经济和社会动荡,虽然当前的重点是尽量减少疾病传播并部署一系列疫苗以拯救生命,但很快就会将注意力转向防患未来。与此一致,本文提出了一种可用于大流行和自然灾害的预测与遏制模型。该模型结合了选择性封锁和防护警戒线,以迅速遏制危害,同时允许受影响最小的当地社区“照常营业”和/或向受影响严重的地区提供支持。开发了一种基于自组织映射的灵活、易于使用的数据分析模型,以方便政府和组织进行决策。使用英国(GB)公开可用数据进行的对比测试表明,可以通过使用所提出的预测和遏制策略来降低峰值感染率,同时使几个地区(高达GB议会选区的25%)在防护警戒线内保持经济活跃。