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MythTriage: Scalable Detection of Opioid Use Disorder Myths on a Video-Sharing Platform

MythTriage: Scalable Detection of Opioid Use Disorder Myths on a Video-Sharing Platform

来源:Arxiv_logoArxiv
英文摘要

Understanding the prevalence of misinformation in health topics online can inform public health policies and interventions. However, measuring such misinformation at scale remains a challenge, particularly for high-stakes but understudied topics like opioid-use disorder (OUD)--a leading cause of death in the U.S. We present the first large-scale study of OUD-related myths on YouTube, a widely-used platform for health information. With clinical experts, we validate 8 pervasive myths and release an expert-labeled video dataset. To scale labeling, we introduce MythTriage, an efficient triage pipeline that uses a lightweight model for routine cases and defers harder ones to a high-performing, but costlier, large language model (LLM). MythTriage achieves up to 0.86 macro F1-score while estimated to reduce annotation time and financial cost by over 76% compared to experts and full LLM labeling. We analyze 2.9K search results and 343K recommendations, uncovering how myths persist on YouTube and offering actionable insights for public health and platform moderation.

Hayoung Jung、Shravika Mittal、Ananya Aatreya、Navreet Kaur、Munmun De Choudhury、Tanushree Mitra

医药卫生理论医学研究方法

Hayoung Jung,Shravika Mittal,Ananya Aatreya,Navreet Kaur,Munmun De Choudhury,Tanushree Mitra.MythTriage: Scalable Detection of Opioid Use Disorder Myths on a Video-Sharing Platform[EB/OL].(2025-05-30)[2025-07-16].https://arxiv.org/abs/2506.00308.点此复制

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