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基于元民族志的重大传染病疫情公众信息回避行为影响因素模型构建

Construction of influencing factors model for public information avoidance behavior in major infectious disease outbreaks based on meta-ethnography.

作者信息

Yang Yuqi, Hu Rui, Ge Yongqing, Yin Jing

机构信息

School of Public Administration, Sichuan University, Chengdu, Sichuan, 610065, China.

The Library of Hubei Minzu University, Enshi, Hubei, 445000, China.

出版信息

Heliyon. 2023 Sep 16;9(9):e20240. doi: 10.1016/j.heliyon.2023.e20240. eCollection 2023 Sep.

Abstract

OBJECTIVE

Major infectious disease outbreaks are highly susceptible to diffuse outbreaks due to their sudden and more widespread nature. Compared to previous outbreaks such as the Spanish flu and SARS in China, COVID-19 has greatly affected the health of citizens and the economic development of countries worldwide, and is representative of major infectious disease outbreaks in many ways. Information avoidance, a common information behaviour during major infectious disease outbreaks, can alleviate the stress caused by information overload as a strategy to reduce negative emotions and maintain optimism. However, it can also bias risk perceptions and avoid content of greater value. Therefore, a deeper understanding of public information behaviour, particularly how and why relevant information is circumvented, places a demand on researchers.

METHODS

A meta-ethnographic qualitative research methodology was used, and the seven steps of the methodology were strictly followed, including identifying integration themes, defining the connotations of integration themes, reading original studies, identifying relationships between studies, inter-translation between studies, synthetic translation, and presenting integration results. 26 original studies were integrated in a unified research framework, with a macro perspective that integrates consistent as well as complex and even contradictory findings and identifies dominant factors.

CONCLUSIONS

Identify demographic factors, information literacy, risk perception, cognitive structure, information quality, information sources, external characteristics of information, and environmental characteristics sub-dimensions around the dimensions of 'individual', 'information' and 'environment'. The study also explored the factors under each sub-dimension. The study finally identified three dimensions, nine sub-dimensions and 26 factors, and obtained a more complete theoretical framework to construct a "model of factors influencing public information avoidance behaviour in major infectious disease epidemics", with a view to providing a theoretical basis and practical reference for relevant departments in guiding public information behaviour and health practices in major infectious disease epidemics.

摘要

目的

重大传染病疫情因其突发性和更广泛的传播特性,极易引发扩散性爆发。与以往诸如西班牙流感和中国的非典疫情相比,新冠疫情极大地影响了全球公民的健康和各国的经济发展,在诸多方面堪称重大传染病疫情的典型代表。信息回避作为重大传染病疫情期间常见的信息行为,作为一种减轻因信息过载而产生的压力、减少负面情绪并保持乐观的策略,能够起到一定作用。然而,它也可能导致风险认知出现偏差,回避更具价值的内容。因此,深入了解公众的信息行为,尤其是相关信息被规避的方式和原因,对研究人员提出了要求。

方法

采用元民族志定性研究方法,严格遵循该方法的七个步骤,包括确定整合主题、界定整合主题的内涵、阅读原始研究、确定研究之间的关系、研究间互译、综合翻译以及呈现整合结果。将26项原始研究整合到一个统一的研究框架中,从宏观角度整合一致的、复杂甚至相互矛盾的研究结果,并确定主导因素。

结论

围绕“个体”“信息”和“环境”维度,确定了人口统计学因素、信息素养、风险认知、认知结构、信息质量、信息来源、信息外部特征和环境特征等子维度。该研究还探究了每个子维度下的因素。该研究最终确定了三个维度、九个子维度和26个因素,获得了一个更完整的理论框架,用以构建“重大传染病疫情中影响公众信息回避行为的因素模型”,以期为相关部门在重大传染病疫情中引导公众信息行为和健康实践提供理论依据和实践参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/270e/10560013/7070306cad29/gr1.jpg

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