3.8 Review

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

期刊

INTELLIGENT MEDICINE
卷 3, 期 2, 页码 85-96

出版社

ELSEVIER
DOI: 10.1016/j.imed.2023.01.002

关键词

Infectious disease model; Data embedding; Social system; Dynamic; Modeling the social systems

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This study summarizes various improvement methods for post-COVID19 infectious disease prediction simulation research, analyzes the impact of various factors on the social system, and provides suggestions for the future transmission status of infectious diseases and prevention and control strategies.
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-COVID19 infectious disease prediction simulation research, this study summarized various improvement methods and analyzes matching improvements for various specific research purposes.

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