The Impact of Comment Slant and Comment Tone on Digital Health Communication Among Polarized Publics: A Web-Based Survey Experiment.

IF 5.8 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Journal of Medical Internet Research Pub Date : 2024-11-15 DOI:10.2196/57967
Fangcao Lu, Caixie Tu
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Abstract

Background: Public attitudes toward health issues are becoming increasingly polarized, as seen in social media comments, which vary from supportive to oppositional and frequently include uncivil language. The combined effects of comment slant and comment tone on health behavior among a polarized public need further examination.

Objective: This study aims to examine how social media users' prior attitudes toward mask wearing and their exposure to a mask-wearing-promoting post, synchronized with polarized and hostile discussions, affect their compliance with mask wearing.

Methods: The study was a web-based survey experiment with participants recruited from Amazon Mechanical Turk. A total of 522 participants provided consent and completed the study. Participants were assigned to read a fictitious mask-wearing-promoting social media post with either civil anti-mask-wearing comments (130/522, 24.9%), civil pro-mask-wearing comments (129/522, 24.7%), uncivil anti-mask-wearing comments (131/522, 25.1%), or uncivil pro-mask-wearing comments (132/522, 25.3%). Following this, the participants were asked to complete self-assessed questionnaires. The PROCESS macro in SPSS (model 12; IBM Corp) was used to test the 3-way interaction effects between comment slant, comment tone, and prior attitudes on participants' presumed influence from the post and their behavioral intention to comply with mask-wearing.

Results: Anti-mask-wearing comments led social media users to presume less influence about others' acceptance of masks (B=1.49; P<.001; 95% CI 0.98-2.00) and resulted in decreased mask-wearing intention (B=0.07; P=.03; 95% CI 0.01-0.13). Comment tone with incivility also reduced compliance with mask-wearing (B=-0.44; P=.02; 95% CI -0.81 to -0.07). Furthermore, polarized attitudes had a direct impact (B=0.86; P<.001; 95% CI 0.45-1.26) and also interacted with both the slant and tone of comments, influencing mask-wearing intention.

Conclusions: Pro-mask-wearing comments enhanced presumed influence and compliance of mask-wearing, but incivility in the comments hindered this positive impact. Antimaskers showed increased compliance when they were unable to find civil support for their opinion in the social media environment. The findings suggest the need to correct and moderate uncivil language and misleading information in online comment sections while encouraging the posting of supportive and civil comments. In addition, information literacy programs are needed to prevent the public from being misled by polarized comments.

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评论倾向和评论语气对两极化公众中数字健康传播的影响:基于网络的调查实验
背景:公众对健康问题的态度正变得越来越两极分化,这一点从社交媒体的评论中就可以看出来,这些评论从支持到反对不一而足,而且经常使用不文明的语言。在两极分化的公众中,评论倾向和评论语气对健康行为的综合影响需要进一步研究:本研究旨在探讨社交媒体用户之前对佩戴口罩的态度,以及他们在两极分化和充满敌意的讨论中接触到宣传佩戴口罩的帖子,会如何影响他们佩戴口罩的依从性:这项研究是一项基于网络的调查实验,参与者是从亚马逊机械特勤公司招募的。共有 522 名参与者同意并完成了研究。参与者被分配阅读一篇虚构的宣传戴口罩的社交媒体帖子,帖子中包含反戴口罩的文明评论(130/522,24.9%)、支持戴口罩的文明评论(129/522,24.7%)、反戴口罩的不文明评论(131/522,25.1%)或支持戴口罩的不文明评论(132/522,25.3%)。随后,参与者被要求填写自我评估问卷。我们使用 SPSS 的 PROCESS 宏(模型 12;IBM 公司)检验了评论倾向、评论语气和先前态度对参与者推测的帖子影响及其遵守戴面具规定的行为意向的三方交互效应:结果:反对戴口罩的评论导致社交媒体用户推测他人接受口罩的影响较小(B=1.49;PC 结论:支持戴口罩的评论增强了社交媒体用户对戴口罩的推测(B=1.49;PC 结论:支持戴口罩的评论增强了社交媒体用户对戴口罩的推测(B=1.49):支持戴口罩的评论增强了对戴口罩的假定影响和遵守情况,但评论中的不文明行为阻碍了这种积极影响。当反面具者无法在社交媒体环境中找到对其观点的民间支持时,他们的遵从度就会提高。研究结果表明,在鼓励发表支持性文明评论的同时,有必要纠正和缓和网络评论区中的不文明语言和误导性信息。此外,还需要开展信息扫盲计划,防止公众被两极分化的评论误导。
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来源期刊
CiteScore
14.40
自引率
5.40%
发文量
654
审稿时长
1 months
期刊介绍: The Journal of Medical Internet Research (JMIR) is a highly respected publication in the field of health informatics and health services. With a founding date in 1999, JMIR has been a pioneer in the field for over two decades. As a leader in the industry, the journal focuses on digital health, data science, health informatics, and emerging technologies for health, medicine, and biomedical research. It is recognized as a top publication in these disciplines, ranking in the first quartile (Q1) by Impact Factor. Notably, JMIR holds the prestigious position of being ranked #1 on Google Scholar within the "Medical Informatics" discipline.
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