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基于复杂适应系统理论和社会网络分析的公共卫生突发事件信息协同演化过程研究——以新冠肺炎疫情为例。

Research on the collaborative evolution process of information in public health emergencies based on complex adaptive system theory and social network analysis: a case study of the COVID-19 pandemic.

机构信息

School of Business, Ningbo University, Ningbo, China.

School of International Trade and Economics, University of International Business and Economics, Beijing, China.

出版信息

Front Public Health. 2023 Sep 25;11:1210255. doi: 10.3389/fpubh.2023.1210255. eCollection 2023.

DOI:10.3389/fpubh.2023.1210255
PMID:37818306
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10560709/
Abstract

INTRODUCTION

This review aimed to elucidate the significance of information collaboration in the prevention and control of public health emergencies, and its evolutionary pathway guided by the theory of complex adaptive systems.

METHODS

The study employed time-slicing techniques and social network analysis to translate the dynamic evolution of information collaboration into a stage-based static representation. Data were collected from January to April 2020, focusing on the COVID-19 pandemic. Python was used to amass data from diverse sources including government portals, public commentary, social organizations, market updates, and healthcare institutions. Post data collection, the structures, collaboration objectives, and participating entities within each time slice were explored using social network analysis.

RESULTS

The findings suggest that the law of evolution for information collaboration in public health emergencies primarily starts with small-scale collaboration, grows to full-scale in the middle phase, and then reverts to small-scale in the final phase. The network's complexity increases initially and then gradually decreases, mirroring changes in collaboration tasks, objectives, and strategies.

DISCUSSION

The dynamic pattern of information collaboration highlighted in this study offers valuable insights for enhancing emergency management capabilities. Recognizing the evolving nature of information collaboration can significantly improve information processing efficiency during public health crises.

摘要

简介

本研究旨在阐明信息协作在公共卫生突发事件预防和控制中的重要性,并通过复杂适应系统理论来揭示其演进路径。

方法

本研究采用时间切片技术和社会网络分析,将信息协作的动态演变转化为基于阶段的静态表示。数据收集时间为 2020 年 1 月至 4 月,主要聚焦于 COVID-19 大流行。Python 被用于从政府门户、公众评论、社会组织、市场更新和医疗机构等多个来源收集数据。在数据收集之后,使用社会网络分析来探索每个时间片内的结构、协作目标和参与实体。

结果

研究结果表明,公共卫生突发事件中信息协作的演化规律主要表现为:初期为小规模协作,中期发展为全面协作,后期则回归为小规模协作。网络的复杂性最初增加,然后逐渐降低,这与协作任务、目标和策略的变化相吻合。

讨论

本研究中突显的信息协作动态模式为提升应急管理能力提供了有价值的见解。认识到信息协作的演进性质可以显著提高公共卫生危机期间的信息处理效率。

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