Constituents' Inferences of Local Governments' Goals and the Relationship Between Political Party and Belief in COVID-19 Misinformation: Cross-sectional Survey of Twitter Followers of State Public Health Departments.

IF 3.5 Q1 HEALTH CARE SCIENCES & SERVICES JMIR infodemiology Pub Date : 2022-01-01 DOI:10.2196/29246
Hannah Stevens, Nicholas A Palomares
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引用次数: 4

Abstract

Background: Amid the COVID-19 pandemic, social media have influenced the circulation of health information. Public health agencies often use Twitter to disseminate and amplify the propagation of such information. Still, exposure to local government-endorsed COVID-19 public health information does not make one immune to believing misinformation. Moreover, not all health information on Twitter is accurate, and some users may believe misinformation and disinformation just as much as those who endorse more accurate information. This situation is complicated, given that elected officials may pursue a political agenda of re-election by downplaying the need for COVID-19 restrictions. The politically polarized nature of information and misinformation on social media in the United States has fueled a COVID-19 infodemic. Because pre-existing political beliefs can both facilitate and hinder persuasion, Twitter users' belief in COVID-19 misinformation is likely a function of their goal inferences about their local government agencies' motives for addressing the COVID-19 pandemic.

Objective: We shed light on the cognitive processes of goal understanding that underlie the relationship between partisanship and belief in health misinformation. We investigate how the valence of Twitter users' goal inferences of local governments' COVID-19 efforts predicts their belief in COVID-19 misinformation as a function of their political party affiliation.

Methods: We conducted a web-based cross-sectional survey of US Twitter users who followed their state's official Department of Public Health Twitter account (n=258) between August 10 and December 23, 2020. Inferences about local governments' goals, demographics, and belief in COVID-19 misinformation were measured. State political affiliation was controlled.

Results: Participants from all 50 states were included in the sample. An interaction emerged between political party affiliation and goal inference valence for belief in COVID-19 misinformation (∆R 2=0.04; F 8,249=4.78; P<.001); positive goal inference valence predicted increased belief in COVID-19 misinformation among Republicans (β=.47; t 249=2.59; P=.01) but not among Democrats (β=.07; t 249=0.84; P=.40).

Conclusions: Our results reveal that favorable inferences about local governments' COVID-19 efforts can accelerate belief in misinformation among Republican-identifying constituents. In other words, accurate COVID-19 transmission knowledge is a function of constituents' sentiment toward politicians rather than science, which has significant implications on public health efforts for minimizing the spread of the disease, as convincing misinformed constituents to practice safety measures might be a political issue just as much as it is a health one. Our work suggests that goal understanding processes matter for misinformation about COVID-19 among Republicans. Those responsible for future COVID-19 public health messaging aimed at increasing belief in valid information about COVID-19 should recognize the need to test persuasive appeals that address partisans' pre-existing political views in order to prevent individuals' goal inferences from interfering with public health messaging.

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选民对地方政府目标的推断以及政党与COVID-19错误信息信念的关系:对州公共卫生部门Twitter关注者的横断面调查
背景:在2019冠状病毒病大流行期间,社交媒体影响了卫生信息的传播。公共卫生机构经常使用Twitter来传播和扩大这类信息的传播。尽管如此,接触当地政府批准的COVID-19公共卫生信息并不能使人们免于相信错误信息。此外,并不是Twitter上所有的健康信息都是准确的,一些用户可能会相信错误信息和虚假信息,就像那些认可更准确信息的人一样。鉴于当选官员可能通过淡化COVID-19限制的必要性来追求连任的政治议程,这种情况很复杂。美国社交媒体上信息的政治两极化和错误信息助长了新冠肺炎的信息大流行。由于预先存在的政治信仰既可以促进也可以阻碍说服,推特用户对COVID-19错误信息的信念可能是他们对当地政府机构应对COVID-19大流行动机的目标推断的功能。目的:我们揭示了目标理解的认知过程,这是党派关系与健康错误信息信念之间关系的基础。我们调查了推特用户对地方政府COVID-19努力的目标推断的效价如何预测他们对COVID-19错误信息的信念,作为其政党关系的函数。方法:我们对2020年8月10日至12月23日期间关注其州公共卫生部官方Twitter账户的美国Twitter用户(n=258)进行了一项基于网络的横断面调查。对地方政府的目标、人口统计数据和对COVID-19错误信息的信念进行了衡量。国家政治派别受到控制。结果:来自所有50个州的参与者都包括在样本中。政党归属与新冠肺炎错误信息信念的目标推断效价之间存在交互作用(∆r2 =0.04;F 8249 = 4.78;Pt 249 = 2.59;P=.01),但民主党人中没有(β=.07;t 249 = 0.84;P = .40)。结论:我们的研究结果表明,对地方政府COVID-19工作的有利推断可以加速共和党识别选民对错误信息的信念。换句话说,准确的COVID-19传播知识是选民对政治家的情绪而不是科学的功能,这对最大限度地减少疾病传播的公共卫生努力具有重大影响,因为说服被误导的选民采取安全措施可能是一个政治问题,就像它是一个健康问题一样。我们的工作表明,目标理解过程对于共和党人关于COVID-19的错误信息很重要。那些负责未来COVID-19公共卫生信息传递的人,旨在提高对COVID-19有效信息的信任,应认识到有必要测试针对党派先前存在的政治观点的有说服力的呼吁,以防止个人的目标推断干扰公共卫生信息传递。
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