推特上关于戴口罩和接种疫苗的COVID-19健康信念:深度学习方法。

IF 3.5 Q1 HEALTH CARE SCIENCES & SERVICES
JMIR infodemiology Pub Date : 2022-10-31 eCollection Date: 2022-07-01 DOI:10.2196/37861
Si Yang Ke, E Shannon Neeley-Tass, Michael Barnes, Carl L Hanson, Christophe Giraud-Carrier, Quinn Snell
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引用次数: 0

摘要

背景:在新冠肺炎全球大流行期间,也出现了一场全球性的信息大流行,与新冠肺炎相关的大量信息和错误信息通过社交媒体渠道传播。包括世界卫生组织(WHO)和美国疾病控制与预防中心(CDC)在内的多家机构以及其他知名人士就预防COVID-19的进一步传播发表了高调的建议。目的:本研究的目的是利用大流行时期的机器学习和Twitter数据,探索有关戴口罩和接种疫苗的健康观念,以及高调提示对行动的影响。方法:对646,885,238条与covid -19相关的英文推文进行过滤,创建戴口罩数据集和疫苗数据集。研究人员根据每个数据集与健康信念模型(HBM)结构的相关性,手动对3500条推文的训练样本进行分类,并使用编码推文来训练机器学习模型,以便对数据集中的每条推文进行分类。结果:使用XLNet转换模型对口罩相关和疫苗相关数据集总共训练了5个模型,每个模型的分类准确率至少达到81%。戴口罩和接种疫苗对健康的益处和障碍的看法最为明显;然而,这些信念的强度似乎随着高调的行动暗示而有所不同。结论:在2019冠状病毒病大流行和信息大流行期间,通过Twitter使用大数据机器学习方法观察到的与感知利益和障碍相关的健康信念随着时间的推移而变化,并响应知名组织和个人的高调行动暗示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

COVID-19 Health Beliefs Regarding Mask Wearing and Vaccinations on Twitter: Deep Learning Approach.

COVID-19 Health Beliefs Regarding Mask Wearing and Vaccinations on Twitter: Deep Learning Approach.

COVID-19 Health Beliefs Regarding Mask Wearing and Vaccinations on Twitter: Deep Learning Approach.

COVID-19 Health Beliefs Regarding Mask Wearing and Vaccinations on Twitter: Deep Learning Approach.

Background: Amid the global COVID-19 pandemic, a worldwide infodemic also emerged with large amounts of COVID-19-related information and misinformation spreading through social media channels. Various organizations, including the World Health Organization (WHO) and the Centers for Disease Control and Prevention (CDC), and other prominent individuals issued high-profile advice on preventing the further spread of COVID-19.

Objective: The purpose of this study is to leverage machine learning and Twitter data from the pandemic period to explore health beliefs regarding mask wearing and vaccines and the influence of high-profile cues to action.

Methods: A total of 646,885,238 COVID-19-related English tweets were filtered, creating a mask-wearing data set and a vaccine data set. Researchers manually categorized a training sample of 3500 tweets for each data set according to their relevance to Health Belief Model (HBM) constructs and used coded tweets to train machine learning models for classifying each tweet in the data sets.

Results: In total, 5 models were trained for both the mask-related and vaccine-related data sets using the XLNet transformer model, with each model achieving at least 81% classification accuracy. Health beliefs regarding perceived benefits and barriers were most pronounced for both mask wearing and immunization; however, the strength of those beliefs appeared to vary in response to high-profile cues to action.

Conclusions: During both the COVID-19 pandemic and the infodemic, health beliefs related to perceived benefits and barriers observed through Twitter using a big data machine learning approach varied over time and in response to high-profile cues to action from prominent organizations and individuals.

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