Lessons Learned From Interdisciplinary Efforts to Combat COVID-19 Misinformation: Development of Agile Integrative Methods From Behavioral Science, Data Science, and Implementation Science.

IF 3.5 Q1 HEALTH CARE SCIENCES & SERVICES
JMIR infodemiology Pub Date : 2023-02-03 eCollection Date: 2023-01-01 DOI:10.2196/40156
Sahiti Myneni, Paula Cuccaro, Sarah Montgomery, Vivek Pakanati, Jinni Tang, Tavleen Singh, Olivia Dominguez, Trevor Cohen, Belinda Reininger, Lara S Savas, Maria E Fernandez
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引用次数: 0

Abstract

Background: Despite increasing awareness about and advances in addressing social media misinformation, the free flow of false COVID-19 information has continued, affecting individuals' preventive behaviors, including masking, testing, and vaccine uptake.

Objective: In this paper, we describe our multidisciplinary efforts with a specific focus on methods to (1) gather community needs, (2) develop interventions, and (3) conduct large-scale agile and rapid community assessments to examine and combat COVID-19 misinformation.

Methods: We used the Intervention Mapping framework to perform community needs assessment and develop theory-informed interventions. To supplement these rapid and responsive efforts through large-scale online social listening, we developed a novel methodological framework, comprising qualitative inquiry, computational methods, and quantitative network models to analyze publicly available social media data sets to model content-specific misinformation dynamics and guide content tailoring efforts. As part of community needs assessment, we conducted 11 semistructured interviews, 4 listening sessions, and 3 focus groups with community scientists. Further, we used our data repository with 416,927 COVID-19 social media posts to gather information diffusion patterns through digital channels.

Results: Our results from community needs assessment revealed the complex intertwining of personal, cultural, and social influences of misinformation on individual behaviors and engagement. Our social media interventions resulted in limited community engagement and indicated the need for consumer advocacy and influencer recruitment. The linking of theoretical constructs underlying health behaviors to COVID-19-related social media interactions through semantic and syntactic features using our computational models has revealed frequent interaction typologies in factual and misleading COVID-19 posts and indicated significant differences in network metrics such as degree. The performance of our deep learning classifiers was reasonable, with an F-measure of 0.80 for speech acts and 0.81 for behavior constructs.

Conclusions: Our study highlights the strengths of community-based field studies and emphasizes the utility of large-scale social media data sets in enabling rapid intervention tailoring to adapt grassroots community interventions to thwart misinformation seeding and spread among minority communities. Implications for consumer advocacy, data governance, and industry incentives are discussed for the sustainable role of social media solutions in public health.

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从对抗COVID-19错误信息的跨学科努力中吸取的教训:从行为科学、数据科学和实现科学中开发敏捷综合方法。
背景:尽管人们对社交媒体错误信息的认识不断提高,在处理社交媒体错误信息方面也取得了进展,但COVID-19虚假信息的自由流动仍在继续,影响了个人的预防行为,包括掩蔽、检测和疫苗接种。目的:在本文中,我们描述了我们的多学科努力,特别关注以下方法:(1)收集社区需求,(2)制定干预措施,以及(3)开展大规模敏捷和快速社区评估,以检查和打击COVID-19错误信息。方法:我们使用干预绘图框架进行社区需求评估,并制定理论知情的干预措施。为了通过大规模在线社交倾听来补充这些快速响应的努力,我们开发了一种新的方法框架,包括定性调查、计算方法和定量网络模型,用于分析公开可用的社交媒体数据集,以模拟特定内容的错误信息动态,并指导内容裁剪工作。作为社区需求评估的一部分,我们与社区科学家进行了11次半结构化访谈,4次倾听会议和3次焦点小组讨论。此外,我们利用我们的数据库(包含416,927条COVID-19社交媒体帖子),通过数字渠道收集信息传播模式。结果:我们的社区需求评估结果揭示了错误信息对个人行为和参与的个人、文化和社会影响的复杂交织。我们的社交媒体干预导致有限的社区参与,并表明需要消费者倡导和招募有影响力的人。利用我们的计算模型,通过语义和句法特征将健康行为的理论构建与COVID-19相关的社交媒体互动联系起来,揭示了事实性和误导性COVID-19帖子中频繁的互动类型,并表明网络指标(如程度)存在显著差异。我们的深度学习分类器的性能是合理的,语音行为的f值为0.80,行为结构的f值为0.81。结论:我们的研究突出了基于社区的实地研究的优势,并强调了大规模社交媒体数据集在实现快速干预定制以适应基层社区干预以阻止错误信息在少数民族社区中的播种和传播方面的效用。讨论了社会媒体解决方案在公共卫生中的可持续作用对消费者倡导、数据治理和行业激励的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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