Department of Clinical & Translational Research, University of Rochester Medical Center, Rochester, NY, USA.
Department of Computer Science, University of Rochester, Rochester, NY, USA.
Nicotine Tob Res. 2024 Feb 15;26(Supplement_1):S43-S48. doi: 10.1093/ntr/ntad189.
Instagram is a popular social networking platform for sharing photos with a large proportion of youth and young adult users. We aim to identify key features in anti-vaping Instagram image posts associated with high social media user engagement by artificial intelligence.
We collected 8972 anti-vaping Instagram image posts and hand-coded 2200 Instagram images to identify nine image features such as warning signs and person-shown vaping. We utilized a deep-learning model, the OpenAI: contrastive language-image pre-training with ViT-B/32 as the backbone and a 5-fold cross-validation model evaluation, to extract similar features from the Instagram image and further trained logistic regression models for multilabel classification. Latent Dirichlet Allocation model and Valence Aware Dictionary and sEntiment Reasoner were used to extract the topics and sentiment from the captions. Negative binomial regression models were applied to identify features associated with the likes and comments count of posts.
Several features identified in anti-vaping Instagram image posts were significantly associated with high social media user engagement (likes or comments), such as educational warnings and warning signs. Instagram posts with captions about health risks associated with vaping received significantly more likes or comments than those about help quitting smoking or vaping. Compared to the model based on 2200 hand-coded Instagram image posts, more significant features have been identified from 8972 AI-labeled Instagram image posts.
Features identified from anti-vaping Instagram image posts will provide a potentially effective way to communicate with the public about the health effects of e-cigarette use.
Considering the increasing popularity of social media and the current vaping epidemic, especially among youth and young adults, it becomes necessary to understand e-cigarette-related content on social media. Although pro-vaping messages dominate social media, anti-vaping messages are limited and often have low user engagement. Using advanced deep-learning and statistical models, we identified several features in anti-vaping Instagram image posts significantly associated with high user engagement. Our findings provide a potential approach to effectively communicate with the public about the health risks of vaping to protect public health.
Instagram 是一个流行的社交网络平台,用于分享照片,其用户中很大一部分是青少年和年轻成年人。我们旨在通过人工智能识别与社交媒体用户高参与度相关的反电子烟 Instagram 图像帖子的关键特征。
我们收集了 8972 个反电子烟 Instagram 图像帖子,并对手动编码的 2200 个 Instagram 图像进行了编码,以确定九种图像特征,例如警告标志和显示有人使用电子烟的图像。我们利用深度学习模型,即 OpenAI:基于 ViT-B/32 的对比语言图像预训练模型,并采用 5 折交叉验证模型评估,从 Instagram 图像中提取相似特征,进一步训练逻辑回归多标签分类模型。Latent Dirichlet Allocation 模型和 Valence Aware Dictionary and sEntiment Reasoner 用于从标题中提取主题和情感。应用负二项式回归模型识别与帖子点赞和评论数相关的特征。
在反电子烟 Instagram 图像帖子中确定的几个特征与社交媒体用户高参与度(点赞或评论)显著相关,例如教育性警告和警告标志。与那些关于帮助戒烟或电子烟的帖子相比,关于与电子烟使用相关的健康风险的帖子获得了更多的点赞或评论。与基于 2200 个手动编码的 Instagram 图像帖子的模型相比,从 8972 个人工智能标记的 Instagram 图像帖子中确定了更多显著的特征。
从反电子烟 Instagram 图像帖子中确定的特征将为与公众就电子烟使用的健康影响进行沟通提供一种潜在有效的方法。
考虑到社交媒体的日益普及和当前电子烟的流行,尤其是在青少年和年轻成年人中,了解社交媒体上与电子烟相关的内容变得很有必要。尽管支持电子烟的信息在社交媒体上占据主导地位,但反电子烟的信息却很有限,而且往往用户参与度较低。我们使用先进的深度学习和统计模型,确定了与高用户参与度显著相关的反电子烟 Instagram 图像帖子的几个特征。我们的研究结果为有效与公众就电子烟的健康风险进行沟通提供了一种潜在方法,以保护公众健康。