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关于 COVID-19 的错误信息:不同潜在特征的证据,以及与对科学的信任之间的强关联。

Misinformation about COVID-19: evidence for differential latent profiles and a strong association with trust in science.

机构信息

Prevention Insights, School of Public Health, Indiana University Bloomington, 809 E. 9th St., Bloomington, IN, 47405, USA.

Department of Applied Health Science, School of Public Health, Indiana University Bloomington, 809 E. 9th St., Bloomington, IN, 47405, USA.

出版信息

BMC Public Health. 2021 Jan 7;21(1):89. doi: 10.1186/s12889-020-10103-x.

Abstract

BACKGROUND

The global spread of coronavirus disease 2019 (COVID-19) has been mirrored by diffusion of misinformation and conspiracy theories about its origins (such as 5G cellular networks) and the motivations of preventive measures like vaccination, social distancing, and face masks (for example, as a political ploy). These beliefs have resulted in substantive, negative real-world outcomes but remain largely unstudied.

METHODS

This was a cross-sectional, online survey (n=660). Participants were asked about the believability of five selected COVID-19 narratives, their political orientation, their religious commitment, and their trust in science (a 21-item scale), along with sociodemographic items. Data were assessed descriptively, then latent profile analysis was used to identify subgroups with similar believability profiles. Bivariate (ANOVA) analyses were run, then multivariable, multivariate logistic regression was used to identify factors associated with membership in specific COVID-19 narrative believability profiles.

RESULTS

For the full sample, believability of the narratives varied, from a low of 1.94 (SD=1.72) for the 5G narrative to a high of 5.56 (SD=1.64) for the zoonotic (scientific consensus) narrative. Four distinct belief profiles emerged, with the preponderance (70%) of the sample falling into Profile 1, which believed the scientifically accepted narrative (zoonotic origin) but not the misinformed or conspiratorial narratives. Other profiles did not disbelieve the zoonotic explanation, but rather believed additional misinformation to varying degrees. Controlling for sociodemographics, political orientation and religious commitment were marginally, and typically non-significantly, associated with COVID-19 belief profile membership. However, trust in science was a strong, significant predictor of profile membership, with lower trust being substantively associated with belonging to Profiles 2 through 4.

CONCLUSIONS

Belief in misinformation or conspiratorial narratives may not be mutually exclusive from belief in the narrative reflecting scientific consensus; that is, profiles were distinguished not by belief in the zoonotic narrative, but rather by concomitant belief or disbelief in additional narratives. Additional, renewed dissemination of scientifically accepted narratives may not attenuate belief in misinformation. However, prophylaxis of COVID-19 misinformation might be achieved by taking concrete steps to improve trust in science and scientists, such as building understanding of the scientific process and supporting open science initiatives.

摘要

背景

2019 年冠状病毒病(COVID-19)在全球范围内的传播,反映出有关其起源(如 5G 蜂窝网络)和预防措施(如疫苗接种、社交距离和口罩)动机的错误信息和阴谋论的扩散。这些信念产生了实质性的、负面的现实后果,但仍在很大程度上未得到研究。

方法

这是一项横断面、在线调查(n=660)。参与者被要求对五个选定的 COVID-19 叙述的可信度进行评估,他们的政治倾向、宗教信仰和对科学的信任(一个 21 项的量表),以及社会人口学项目。数据进行描述性评估,然后使用潜在剖面分析来识别具有相似可信度特征的亚组。进行了双变量(方差分析)分析,然后使用多变量、多变量逻辑回归来确定与特定 COVID-19 叙述可信度特征成员资格相关的因素。

结果

对于整个样本,叙述的可信度从 5G 叙述的 1.94(SD=1.72)到动物源(科学共识)叙述的 5.56(SD=1.64)不等。出现了四个不同的信仰特征,大多数(70%)样本属于特征 1,该特征相信科学上被接受的叙述(动物源起源),但不相信错误信息或阴谋论叙述。其他特征并不不相信动物源解释,而是在不同程度上相信其他错误信息。控制社会人口统计学、政治倾向和宗教信仰,与 COVID-19 信仰特征成员资格的关联微弱,且通常不显著。然而,对科学的信任是特征成员资格的一个强有力的、显著的预测因素,信任度越低,与特征 2 至 4 的隶属关系越密切。

结论

对错误信息或阴谋论叙述的信仰可能与对反映科学共识的叙述的信仰并不相互排斥;也就是说,特征不是通过对动物源叙述的信仰来区分的,而是通过对其他叙述的同时信仰或不信仰来区分的。进一步传播科学上被接受的叙述可能不会削弱对错误信息的信仰。然而,通过采取具体措施提高对科学和科学家的信任,可以预防 COVID-19 错误信息,例如,建立对科学过程的理解和支持开放科学倡议。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/980a/7792305/170847c7eafd/12889_2020_10103_Fig1_HTML.jpg

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