基于本体的大流行病传播风险分析环境因素综述

COVID Pub Date : 2024-04-11 DOI:10.3390/covid4040031
Liege Cheung, Adela S. M. Lau, K. F. Lam, P. Y. Ng
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引用次数: 0

摘要

接触追踪是一种用于控制大流行病传播的方法。本研究的目标是通过实证回顾和内容分析,找出导致大流行病传播的环境因素,并提出一种基于本体的大数据架构来收集这些因素,以便进行预测。目前还没有研究将这些因素作为大流行病预测的整体进行研究。采用的研究方法是实证研究和内容分析。以接触追踪、大流行传播、恐惧、卫生措施、政府政策、预防计划、大流行计划、信息披露、大流行经济学和 COVID-19 为关键词,对 EBSCOHost 数据库(如 Medline、ERIC、图书馆信息科学与技术等)中 2019 年至 2022 年有关大流行传播的研究进行归档。结果显示,588 项存档研究中只有 84 项是相关的。大流行病的风险认知(14 项)、卫生行为(7 项)、文化(12 项)以及政府对预防大流行病政策的态度(25 项)、教育计划(2 项)、商业限制(2 项)、技术基础设施和多媒体使用(24 项)是影响公众预防大流行病行为的主要环境因素。本文提出了一种基于本体的大数据架构来收集这些因素,从而建立传播预测模型。新方法克服了传统流行病预测模型(如易感者-暴露者-感染者-康复者(SEIR))仅使用时间序列预测流行趋势的局限性。大数据架构允许使用多维数据和现代人工智能方法来训练传染情景,以进行传播预测。它有助于政策制定者规划流行病预防计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Review of Environmental Factors for an Ontology-Based Risk Analysis for Pandemic Spread
Contact tracing is a method used to control the spread of a pandemic. The objectives of this research are to conduct an empirical review and content analysis to identify the environmental factors causing the spread of the pandemic and to propose an ontology-based big data architecture to collect these factors for prediction. No research studies these factors as a whole in pandemic prediction. The research method used was an empirical study and content analysis. The keywords contact tracking, pandemic spread, fear, hygiene measures, government policy, prevention programs, pandemic programs, information disclosure, pandemic economics, and COVID-19 were used to archive studies on the pandemic spread from 2019 to 2022 in the EBSCOHost databases (e.g., Medline, ERIC, Library Information Science & Technology, etc.). The results showed that only 84 of the 588 archived studies were relevant. The risk perception of the pandemic (n = 14), hygiene behavior (n = 7), culture (n = 12), and attitudes of government policies on pandemic prevention (n = 25), education programs (n = 2), business restrictions (n = 2), technology infrastructure, and multimedia usage (n = 24) were the major environmental factors influencing public behavior of pandemic prevention. An ontology-based big data architecture is proposed to collect these factors for building the spread prediction model. The new method overcomes the limitation of traditional pandemic prediction model such as Susceptible-Exposed-Infected-Recovered (SEIR) that only uses time series to predict epidemic trend. The big data architecture allows multi-dimension data and modern AI methods to be used to train the contagion scenarios for spread prediction. It helps policymakers to plan pandemic prevention programs.
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