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信任、风险感知与新冠病毒感染:来自中国综合原始数据集的多层分析证据。

Trust, risk perception, and COVID-19 infections: Evidence from multilevel analyses of combined original dataset in China.

机构信息

Department of Sociology, School of Humanities, Southeast University, 2 Southeast University Road, Jiangning District, Nanjing 211189, P.R. China.

Graduate School of Arts and Letters, Tohoku University, 27-1 Kawauchi, Aoba-ku, Sendai, 980-8576, Japan.

出版信息

Soc Sci Med. 2020 Nov;265:113517. doi: 10.1016/j.socscimed.2020.113517. Epub 2020 Nov 10.

Abstract

Previous studies have revealed medical, democratic, and political factors altering responses to unexpected infectious diseases. However, few studies have attempted to explore the factors affecting disease infection from a social perspective. Here, we argue that trust, which plays an important role in shaping people' s risk perception toward hazards, can also affect risk perception toward infections from a social perspective. Drawing on the indication that risk perception of diseases helps prevent people from being infected by promoting responsible behaviors, it can be further asserted that trust may alter the infection rate of diseases as a result of risk perception toward infectious diseases. This is an essential point for preventing the spread of infectious diseases and should be demonstrated. To empirically test this prediction, this study uses the COVID-19 outbreak in China as an example and applies an original dataset combining real-time big data, official data, and social survey data from 317 cities in 31 Chinese provinces to demonstrate whether trust influences the infection rate of diseases. Multilevel regression analyses reveal three main results: (1) trust in local government and media helps to reduce the infection rate of diseases; (2) generalized trust promotes a higher rather than lower infection rate; and (3) the effects of different types of trust are either completely or partly mediated by risk perception toward diseases. The theoretical and practical implications of this study provide suggestions for improving the public health system in response to possible infectious diseases.

摘要

先前的研究揭示了医疗、民主和政治因素会改变人们对突发传染病的反应。然而,很少有研究试图从社会角度探讨影响疾病感染的因素。在这里,我们认为信任在塑造人们对危险的风险感知方面起着重要作用,也可以从社会角度影响对感染的风险感知。鉴于对疾病的风险感知有助于通过促进负责任的行为来防止人们被感染,因此可以进一步断言,信任可能会改变对传染病的风险感知,从而改变疾病的感染率。这是预防传染病传播的一个重要环节,应该加以证明。为了实证检验这一预测,本研究以中国的 COVID-19 疫情为例,利用结合了实时大数据、官方数据和来自中国 31 个省份 317 个城市的社会调查数据的原始数据集,来验证信任是否会影响疾病的感染率。多层次回归分析揭示了三个主要结果:(1)对地方政府和媒体的信任有助于降低疾病的感染率;(2)普遍信任会提高而不是降低感染率;(3)不同类型的信任的影响要么完全要么部分通过对疾病的风险感知来介导。本研究的理论和实际意义为改善公共卫生系统以应对可能的传染病提供了建议。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/98ba/7654228/7efbc04e37cc/gr1_lrg.jpg

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