Identification and Classification of Images in e-Cigarette-Related Content on TikTok: Unsupervised Machine Learning Image Clustering Approach.

IF 1.7 4区 医学 Q3 PSYCHIATRY
Substance Use & Misuse Pub Date : 2025-01-01 Epub Date: 2024-12-30 DOI:10.1080/10826084.2024.2447415
Juhan Lee, Dhiraj Murthy, Rachel Ouellette, Tanvi Anand, Grace Kong
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引用次数: 0

Abstract

Background: Previous studies identified e-cigarette content on popular video and image-based social media platforms such as TikTok. While machine learning approaches have been increasingly used with text-based social media data, image-based analysis such as image-clustering has been rarely used on TikTok. Image clustering can identify underlying patterns and structures across large sets of images, enabling more streamlined distillation and analysis of visual data on TikTok. This study used image-clustering approaches to examine e-cigarette-related images on TikTok.

Methods: We searched for 13 hashtags related to e-cigarettes in November 2021 (e.g., vape, vapelife). We scraped up to 1000 posts per hashtag depending on the number of available posts, for 12,599 posts in total. After randomly selecting 13% of posts and excluding non-English (N = 278), non-e-cigarette-related (N = 88), and unavailable posts (i.e., posts that the uploader deleted) (N = 286), N = 838 e-cigarette TikTok images were included in our image clustering model. Using quantitative (e.g., silhouette scores) and qualitative evaluations, we categorized clusters into overarching themes based on the types of e-cigarette content depicted within each cluster.

Results: We identified N = 20 clusters, forming four overarching themes: (1) vapor clouds (e.g., vape tricks, vaping and exhaling vapor clouds, being captured as clouds from the mouth or nose or around the face); (2) devices (e.g., content presenting e-cigarette devices or individuals demonstrating use or modification of devices); (3) text (e.g., e-cigarette-related text inserted within images such as jokes); (4) other (i.e., e-cigarette-related images clustered based on other image characteristics such as color tones).

Conclusions: This study using the state-of-the-art image-clustering method successfully identified various e-cigarette-related images on TikTok. This study suggests that novel methodologies can be helpful to tobacco regulatory agencies looking to conduct rapid surveillance of e-cigarette content on social media.

TikTok上电子烟相关内容图像的识别和分类:无监督机器学习图像聚类方法。
背景:之前的研究发现了流行的视频和图像社交媒体平台上的电子烟内容,如TikTok。虽然机器学习方法越来越多地用于基于文本的社交媒体数据,但基于图像的分析(如图像聚类)很少在TikTok上使用。图像聚类可以识别大型图像集的潜在模式和结构,从而对TikTok上的视觉数据进行更精简的提炼和分析。这项研究使用图像聚类方法来检查TikTok上与电子烟相关的图像。方法:我们在2021年11月搜索了13个与电子烟相关的标签(例如,vape, vapelife)。根据可用帖子的数量,我们最多为每个标签抓取1000个帖子,总共有12599个帖子。随机抽取13%的帖子,排除非英语(N = 278)、非电子烟相关(N = 88)和不可用的帖子(即上传者删除的帖子)(N = 286)后,将N = 838张电子烟TikTok图像纳入我们的图像聚类模型。使用定量(例如,轮廓分数)和定性评估,我们根据每个集群中描述的电子烟内容类型将集群分类为总体主题。结果:我们确定了N = 20个集群,形成了四个总体主题:(1)蒸汽云(例如,电子烟技巧,雾化和呼出蒸汽云,被捕获为从嘴或鼻子或面部周围的云);(2)设备(例如,展示电子烟设备的内容或演示设备使用或修改的个人);(3)文字(例如,在笑话等图像中插入与电子烟相关的文字);(4)其他(即基于其他图像特征(如色调)聚类的电子烟相关图像)。结论:本研究使用最先进的图像聚类方法成功识别了抖音上各种与电子烟相关的图像。这项研究表明,新的方法可以帮助烟草监管机构对社交媒体上的电子烟内容进行快速监控。
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来源期刊
Substance Use & Misuse
Substance Use & Misuse 医学-精神病学
CiteScore
3.20
自引率
5.00%
发文量
200
审稿时长
3 months
期刊介绍: For over 50 years, Substance Use & Misuse (formerly The International Journal of the Addictions) has provided a unique international multidisciplinary venue for the exchange of original research, theories, policy analyses, and unresolved issues concerning substance use and misuse (licit and illicit drugs, alcohol, nicotine, and eating disorders). Guest editors for special issues devoted to single topics of current concern are invited. Topics covered include: Clinical trials and clinical research (treatment and prevention of substance misuse and related infectious diseases) Epidemiology of substance misuse and related infectious diseases Social pharmacology Meta-analyses and systematic reviews Translation of scientific findings to real world clinical and other settings Adolescent and student-focused research State of the art quantitative and qualitative research Policy analyses Negative results and intervention failures that are instructive Validity studies of instruments, scales, and tests that are generalizable Critiques and essays on unresolved issues Authors can choose to publish gold open access in this journal.
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