School of Information Engineering, China University of Geosciences, Beijing, China.
Technology Innovation Center for Territory Spatial Big-Data, MNR of China, Beijing, China.
Front Public Health. 2022 Oct 18;10:1033432. doi: 10.3389/fpubh.2022.1033432. eCollection 2022.
The COVID-19 epidemic has caused more than 6.4 million deaths to date and has become a hot topic of interest in different disciplines. According to bibliometric analysis, more than 340,000 articles have been published on the COVID-19 epidemic from the beginning of the epidemic until recently. Modeling infectious diseases can provide critical planning and analytical tools for outbreak control and public health research, especially from a spatio-temporal perspective. However, there has not been a comprehensive review of the developing process of spatio-temporal dynamic models. Therefore, the aim of this study is to provide a comprehensive review of these spatio-temporal dynamic models for dealing with COVID-19, focusing on the different model scales. We first summarized several data used in the spatio-temporal modeling of the COVID-19, and then, through literature review and summary, we found that the existing COVID-19 spatio-temporal models can be divided into two categories: macro-dynamic models and micro-dynamic models. Typical representatives of these two types of models are compartmental and metapopulation models, cellular automata (CA), and agent-based models (ABM). Our results show that the modeling results are not accurate enough due to the unavailability of the fine-grained dataset of COVID-19. Furthermore, although many models have been developed, many of them focus on short-term prediction of disease outbreaks and lack medium- and long-term predictions. Therefore, future research needs to integrate macroscopic and microscopic models to build adaptive spatio-temporal dynamic simulation models for the medium and long term (from months to years) and to make sound inferences and recommendations about epidemic development in the context of medical discoveries, which will be the next phase of new challenges and trends to be addressed. In addition, there is still a gap in research on collecting fine-grained spatial-temporal big data based on cloud platforms and crowdsourcing technologies to establishing world model to battle the epidemic.
新冠疫情已导致超过 640 万人死亡,成为不同学科关注的热点。根据文献计量分析,自疫情爆发以来,截至目前,已有超过 34 万篇关于新冠疫情的文章发表。传染病建模可以为疫情控制和公共卫生研究提供关键的规划和分析工具,尤其是从时空角度来看。然而,目前还没有对时空动态模型的发展过程进行全面综述。因此,本研究旨在全面综述用于应对新冠疫情的时空动态模型,重点关注不同的模型尺度。我们首先总结了新冠疫情时空建模中使用的几种数据,然后通过文献回顾和总结,发现现有的新冠疫情时空模型可以分为两类:宏观动态模型和微观动态模型。这两种类型模型的典型代表是房室和化学生态模型、元胞自动机(CA)和基于主体的模型(ABM)。我们的研究结果表明,由于缺乏新冠疫情的细粒度数据集,建模结果不够准确。此外,尽管已经开发了许多模型,但许多模型都侧重于疾病爆发的短期预测,缺乏对中期和长期的预测。因此,未来的研究需要整合宏观和微观模型,构建用于中期和长期(从几个月到几年)的自适应时空动态模拟模型,并根据医学发现对疫情发展进行合理推断和建议,这将是下一阶段需要应对的新挑战和趋势。此外,在基于云平台和众包技术收集细粒度时空大数据以建立世界模型来抗击疫情方面,仍存在研究差距。