Golos Aleksandra M, Guntuku Sharath-Chandra, Buttenheim Alison M
Department of Family and Community Health, School of Nursing, University of Pennsylvania, Philadelphia, PA 19104, United States.
Department of Computer and Information Science, School of Engineering and Applied Sciences, University of Pennsylvania, Philadelphia, PA 19104, United States.
Health Aff Sch. 2024 Jul 8;2(7):qxae082. doi: 10.1093/haschl/qxae082. eCollection 2024 Jul.
Designing effective childhood vaccination counseling guidelines, public health campaigns, and school-entry mandates requires a nuanced understanding of the information ecology in which parents make vaccination decisions. However, evidence is lacking on how best to "catch the signal" about the public's attitudes, beliefs, and misperceptions. In this study, we characterize public sentiment and discourse about vaccinating children against SARS-CoV-2 with mRNA vaccines to identify prevalent concerns about the vaccine and to understand anti-vaccine rhetorical strategies. We applied computational topic modeling to 149 897 comments submitted to regulations.gov in October 2021 and February 2022 regarding the Food and Drug Administration's Vaccines and Related Biological Products Advisory Committee's emergency use authorization of the COVID-19 vaccines for children. We used a latent Dirichlet allocation topic modeling algorithm to generate topics and then used iterative thematic and discursive analysis to identify relevant domains, themes, and rhetorical strategies. Three domains emerged: (1) specific concerns about the COVID-19 vaccines; (2) foundational beliefs shaping vaccine attitudes; and (3) rhetorical strategies deployed in anti-vaccine arguments. Computational social listening approaches can contribute to misinformation surveillance and evidence-based guidelines for vaccine counseling and public health promotion campaigns.
设计有效的儿童疫苗接种咨询指南、公共卫生运动和入学强制要求,需要对父母做出疫苗接种决定所处的信息生态有细致入微的理解。然而,关于如何最好地“捕捉”公众态度、信念和误解方面的信号,目前还缺乏相关证据。在本研究中,我们对公众针对儿童接种新冠病毒mRNA疫苗的情绪和言论进行了特征分析,以确定对该疫苗普遍存在的担忧,并了解反疫苗的修辞策略。我们将计算主题模型应用于2021年10月和2022年2月提交至regulations.gov的149897条评论,这些评论是关于美国食品药品监督管理局疫苗及相关生物制品咨询委员会对新冠疫苗用于儿童的紧急使用授权。我们使用潜在狄利克雷分配主题建模算法生成主题,然后通过迭代的主题和话语分析来识别相关领域、主题和修辞策略。出现了三个领域:(1)对新冠疫苗的具体担忧;(2)塑造疫苗态度的基本信念;(3)反疫苗论点中所采用的修辞策略。计算社会倾听方法有助于进行错误信息监测,并为疫苗咨询和公共卫生促进运动提供循证指南。