Identifying Misinformation About Unproven Cancer Treatments on Social Media Using User-Friendly Linguistic Characteristics: Content Analysis.

IF 3.5 Q1 HEALTH CARE SCIENCES & SERVICES
JMIR infodemiology Pub Date : 2025-02-12 DOI:10.2196/62703
Ilona Fridman, Dahlia Boyles, Ria Chheda, Carrie Baldwin-SoRelle, Angela B Smith, Jennifer Elston Lafata
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引用次数: 0

Abstract

Background: Health misinformation, prevalent in social media, poses a significant threat to individuals, particularly those dealing with serious illnesses such as cancer. The current recommendations for users on how to avoid cancer misinformation are challenging because they require users to have research skills.

Objective: This study addresses this problem by identifying user-friendly characteristics of misinformation that could be easily observed by users to help them flag misinformation on social media.

Methods: Using a structured review of the literature on algorithmic misinformation detection across political, social, and computer science, we assembled linguistic characteristics associated with misinformation. We then collected datasets by mining X (previously known as Twitter) posts using keywords related to unproven cancer therapies and cancer center usernames. This search, coupled with manual labeling, allowed us to create a dataset with misinformation and 2 control datasets. We used natural language processing to model linguistic characteristics within these datasets. Two experiments with 2 control datasets used predictive modeling and Lasso regression to evaluate the effectiveness of linguistic characteristics in identifying misinformation.

Results: User-friendly linguistic characteristics were extracted from 88 papers. The short-listed characteristics did not yield optimal results in the first experiment but predicted misinformation with an accuracy of 73% in the second experiment, in which posts with misinformation were compared with posts from health care systems. The linguistic characteristics that consistently negatively predicted misinformation included tentative language, location, URLs, and hashtags, while numbers, absolute language, and certainty expressions consistently predicted misinformation positively.

Conclusions: This analysis resulted in user-friendly recommendations, such as exercising caution when encountering social media posts featuring unwavering assurances or specific numbers lacking references. Future studies should test the efficacy of the recommendations among information users.

使用用户友好的语言特征识别社交媒体上未经证实的癌症治疗的错误信息:内容分析。
背景:社交媒体上普遍存在的健康错误信息对个人,特别是那些患有癌症等严重疾病的人构成了重大威胁。目前关于如何避免癌症错误信息的建议是具有挑战性的,因为它们要求用户具有研究技能。目的:本研究通过识别用户容易观察到的错误信息的用户友好特征来解决这一问题,以帮助他们标记社交媒体上的错误信息。方法:通过对政治、社会和计算机科学领域的算法错误信息检测文献的结构化回顾,我们收集了与错误信息相关的语言特征。然后,我们通过使用与未经证实的癌症疗法和癌症中心用户名相关的关键字挖掘X(以前称为Twitter)帖子来收集数据集。这种搜索,加上手动标记,使我们能够创建一个包含错误信息的数据集和2个控制数据集。我们使用自然语言处理来模拟这些数据集中的语言特征。在两个控制数据集上进行了两个实验,使用预测建模和Lasso回归来评估语言特征识别错误信息的有效性。结果:从88篇论文中提取了用户友好型语言特征。在第一个实验中,短名单特征并没有产生最佳结果,但在第二个实验中,预测错误信息的准确率为73%,在第二个实验中,将含有错误信息的帖子与来自医疗保健系统的帖子进行比较。预测错误信息的语言特征包括试探性语言、位置、url和标签,而数字、绝对语言和确定性表达始终如一地预测错误信息。结论:这一分析得出了用户友好的建议,比如在遇到社交媒体上那些坚定不移的保证或缺乏参考的具体数字时要谨慎。未来的研究应该测试这些建议在信息使用者中的有效性。
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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