Big data technology in infectious diseases modeling, simulation, and prediction after the COVID-19 outbreak

IF 4.4 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Honghao Shi , Jingyuan Wang , Jiawei Cheng , Xiaopeng Qi , Hanran Ji , Claudio J Struchiner , Daniel AM Villela , Eduard V Karamov , Ali S Turgiev
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引用次数: 1

Abstract

After the outbreak of COVID-19, the interaction of infectious disease systems and social systems has challenged traditional infectious disease modeling methods. Starting from the research purpose and data, researchers improved the structure and data of the compartment model or used agents and artificial intelligence based models to solve epidemiological problems. In terms of modeling methods, the researchers use compartment subdivision, dynamic parameters, agent-based model methods, and artificial intelligence related methods. In terms of factors studied, the researchers studied 6 categories: human mobility, nonpharmaceutical interventions (NPIs), ages, medical resources, human response, and vaccine. The researchers completed the study of factors through modeling methods to quantitatively analyze the impact of social systems and put forward their suggestions for the future transmission status of infectious diseases and prevention and control strategies. This review started with a research structure of research purpose, factor, data, model, and conclusion. Focusing on the post-COVID-19 infectious disease prediction simulation research, this study summarized various improvement methods and analyzes matching improvements for various specific research purposes.

Abstract Image

Abstract Image

Abstract Image

新冠肺炎疫情后传染病建模、模拟和预测中的大数据技术
新冠肺炎爆发后,传染病系统与社会系统的相互作用对传统的传染病建模方法提出了挑战。从研究目的和数据出发,研究人员改进了隔间模型的结构和数据,或使用基于代理和人工智能的模型来解决流行病学问题。在建模方法方面,研究人员使用了隔间细分、动态参数、基于主体的模型方法和人工智能相关方法。就研究的因素而言,研究人员研究了6类:人类流动性、非药物干预(NPI)、年龄、医疗资源、人类反应和疫苗。研究人员通过建模方法完成了对因素的研究,定量分析了社会系统的影响,并对未来传染病的传播状况和防控策略提出了建议。这篇综述从研究目的、因素、数据、模型和结论的研究结构开始。本研究以COVID-19后传染病预测模拟研究为重点,总结了各种改进方法,并针对各种具体研究目的分析了匹配改进。
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来源期刊
Intelligent medicine
Intelligent medicine Surgery, Radiology and Imaging, Artificial Intelligence, Biomedical Engineering
CiteScore
5.20
自引率
0.00%
发文量
19
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