Public Figure Vaccination Rhetoric and Vaccine Hesitancy: Retrospective Twitter Analysis.

IF 3.5 Q1 HEALTH CARE SCIENCES & SERVICES JMIR infodemiology Pub Date : 2023-03-10 eCollection Date: 2023-01-01 DOI:10.2196/40575
Vlad Honcharov, Jiawei Li, Maribel Sierra, Natalie A Rivadeneira, Kristan Olazo, Thu T Nguyen, Tim K Mackey, Urmimala Sarkar
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Abstract

Background: Social media has emerged as a critical mass communication tool, with both health information and misinformation now spread widely on the web. Prior to the COVID-19 pandemic, some public figures promulgated anti-vaccine attitudes, which spread widely on social media platforms. Although anti-vaccine sentiment has pervaded social media throughout the COVID-19 pandemic, it is unclear to what extent interest in public figures is generating anti-vaccine discourse.

Objective: We examined Twitter messages that included anti-vaccination hashtags and mentions of public figures to assess the connection between interest in these individuals and the possible spread of anti-vaccine messages.

Methods: We used a data set of COVID-19-related Twitter posts collected from the public streaming application programming interface from March to October 2020 and filtered it for anti-vaccination hashtags "antivaxxing," "antivaxx," "antivaxxers," "antivax," "anti-vaxxer," "discredit," "undermine," "confidence," and "immune." Next, we applied the Biterm Topic model (BTM) to output topic clusters associated with the entire corpus. Topic clusters were manually screened by examining the top 10 posts most highly correlated in each of the 20 clusters, from which we identified 5 clusters most relevant to public figures and vaccination attitudes. We extracted all messages from these clusters and conducted inductive content analysis to characterize the discourse.

Results: Our keyword search yielded 118,971 Twitter posts after duplicates were removed, and subsequently, we applied BTM to parse these data into 20 clusters. After removing retweets, we manually screened the top 10 tweets associated with each cluster (200 messages) to identify clusters associated with public figures. Extraction of these clusters yielded 768 posts for inductive analysis. Most messages were either pro-vaccination (n=329, 43%) or neutral about vaccination (n=425, 55%), with only 2% (14/768) including anti-vaccination messages. Three main themes emerged: (1) anti-vaccination accusation, in which the message accused the public figure of holding anti-vaccination beliefs; (2) using "anti-vax" as an epithet; and (3) stating or implying the negative public health impact of anti-vaccination discourse.

Conclusions: Most discussions surrounding public figures in common hashtags labelled as "anti-vax" did not reflect anti-vaccination beliefs. We observed that public figures with known anti-vaccination beliefs face scorn and ridicule on Twitter. Accusing public figures of anti-vaccination attitudes is a means of insulting and discrediting the public figure rather than discrediting vaccines. The majority of posts in our sample condemned public figures expressing anti-vax beliefs by undermining their influence, insulting them, or expressing concerns over public health ramifications. This points to a complex information ecosystem, where anti-vax sentiment may not reside in common anti-vax-related keywords or hashtags, necessitating further assessment of the influence that public figures have on this discourse.

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公众人物的疫苗接种言论与疫苗犹豫不决:推特回顾性分析
背景:社交媒体已成为一种重要的大众传播工具,健康信息和错误信息现在都在网络上广泛传播。在 COVID-19 大流行之前,一些公众人物发表了反疫苗态度,并在社交媒体平台上广泛传播。尽管在 COVID-19 大流行期间社交媒体上充斥着反疫苗情绪,但目前尚不清楚对公众人物的关注在多大程度上引发了反疫苗言论:我们研究了包含反疫苗标签和提及公众人物的 Twitter 消息,以评估对这些人的兴趣与反疫苗信息可能传播之间的联系:我们使用了 2020 年 3 月至 10 月期间从公共流媒体应用程序接口收集的 COVID-19 相关 Twitter 帖子数据集,并过滤了反疫苗接种标签 "antivaxxing"、"antivaxx"、"antivaxxers"、"antivax"、"anti-vaxxer"、"discredit"、"undermine"、"confidence "和 "immune"。接下来,我们应用比特主题模型(Biterm Topic Model,BTM)来输出与整个语料库相关的主题集群。通过检查 20 个集群中每个集群中关联度最高的前 10 条帖子,我们从中找出了与公众人物和疫苗接种态度最相关的 5 个集群,并对这些集群进行了人工筛选。我们从这些集群中提取了所有信息,并进行了归纳内容分析,以确定话语的特征:在去除重复内容后,我们通过关键词搜索获得了 118,971 条 Twitter 帖子,随后我们应用 BTM 将这些数据解析为 20 个聚类。去除转发后,我们人工筛选了与每个聚类相关的前 10 条推文(200 条信息),以确定与公众人物相关的聚类。从这些聚类中提取出 768 条帖子进行归纳分析。大多数信息要么是支持疫苗接种的(329 条,43%),要么是对疫苗接种持中立态度的(425 条,55%),只有 2%(14/768)的信息是反对疫苗接种的。出现了三大主题:(1) 反疫苗接种指责,即信息指责公众人物持有反疫苗接种信仰;(2) 使用 "反疫苗 "作为形容词;(3) 说明或暗示反疫苗接种言论对公共健康的负面影响:在标有 "反疫苗 "的常见标签中,围绕公众人物的大多数讨论并未反映出反疫苗接种的理念。我们观察到,在 Twitter 上,已知有反疫苗接种信仰的公众人物会受到蔑视和嘲笑。指责公众人物的反疫苗接种态度是侮辱和诋毁公众人物的一种手段,而不是诋毁疫苗。在我们的样本中,大多数帖子通过削弱公众人物的影响力、侮辱他们或表达对公共卫生后果的担忧来谴责表达反疫苗观点的公众人物。这表明信息生态系统非常复杂,反疫苗情绪可能并不存在于常见的反疫苗相关关键词或标签中,因此有必要进一步评估公众人物对这一言论的影响。
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