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1.
Nicotine Tob Res ; 2023 Nov 08.
Article in English | MEDLINE | ID: mdl-37947283

ABSTRACT

INTRODUCTION: Instagram and TikTok, video-based social media platforms popular among adolescents, contain tobacco-related content despite the platforms' policies prohibiting substance-related posts. Prior research identified themes in e-cigarette-related social media posts using qualitative or text-based machine learning methods. We developed an image-based computer vision model to identify e-cigarette products in social media images and videos. METHODS: We created a dataset of 6,999 Instagram images labeled for 8 object classes: mod or pod devices, e-juice containers, packaging boxes, nicotine warning labels, e-juice flavors, e-cigarette brand names, and smoke clouds. We trained a DyHead object detection model using a Swin-Large backbone, evaluated the model's performance on 20 Instagram and TikTok videos, and applied the model to 14,072 e-cigarette-related promotional TikTok videos (2019-2022; 10,276,485 frames). RESULTS: The model achieved the following mean average precision scores on the image test set: e-juice container: 0.89; pod device: 0.67; mod device: 0.54; packaging box: 0.84; nicotine warning label: 0.86; e-cigarette brand name: 0.71; e-juice flavor name: 0.89; and smoke cloud: 0.46. The largest number of TikTok videos - 9,091 (65%) - contained smoke clouds, followed by mod and pod devices detected in 6,667 (47%) and 5,949 (42%) videos respectively. Prevalence of nicotine warning labels was the lowest, detected in 980 videos (7%). CONCLUSIONS: Deep learning-based object detection technology enables automated analysis of visual posts on social media. Our computer vision model can detect the presence of e-cigarettes products in images and videos, providing valuable surveillance data for tobacco regulatory science. IMPLICATIONS: Prior research identified themes in e-cigarette-related social media posts using qualitative or text-based machine learning methods. We developed an image-based computer vision model to identify e-cigarette products in social media images and videos.We trained a DyHead object detection model using a Swin-Large backbone, evaluated the model's performance on 20 Instagram and TikTok videos featuring at least two e-cigarette objects, and applied the model to 14,072 e-cigarette-related promotional TikTok videos (2019-2022; 10,276,485 frames).The deep learning model can be used for automated, scalable surveillance of image- and video-based e-cigarette-related promotional content on social media, providing valuable data for tobacco regulatory science. Social media platforms could use computer vision to identify tobacco-related imagery and remove it promptly, which could reduce adolescents' exposure to tobacco content online.

2.
Clin Pediatr (Phila) ; 52(6): 534-9, 2013 Jun.
Article in English | MEDLINE | ID: mdl-23539689

ABSTRACT

OBJECTIVE: To characterize the use and delivery of cough and cold medicines in children younger than 6 presenting to an inner-city pediatric emergency department (PED) following 2007 FDA warnings. METHODS: A cross-sectional observational study was performed using a convenience sampling of PED patients during the fall of 2010. Caregivers were presented with 6 commonly used cough medicine preparations and were asked to demonstrate if and how they would administer these to their children. RESULTS: In all, 65 patients and their caregivers consented and participated in the study. During the demonstration, 82% (53/65) stated that they would treat with cough or cold medicines, and 72% (38/53) incorrectly dosed the medication they desired to give. CONCLUSIONS: Despite current recommendations, cough and cold medicines are still used in children younger than 6 years of age. A significant portion of caregivers report that they are still unaware of public warnings, potential side effects, and interactions with other medications.


Subject(s)
Antitussive Agents/adverse effects , Caregivers/psychology , Common Cold/drug therapy , Cough/drug therapy , Nasal Decongestants/adverse effects , Nonprescription Drugs/adverse effects , Antitussive Agents/therapeutic use , Child , Child, Preschool , Cross-Sectional Studies , Drug Packaging , Female , Humans , Infant , Infant, Newborn , Male , Nasal Decongestants/therapeutic use , Nonprescription Drugs/therapeutic use , United States , United States Food and Drug Administration
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