Litcius/Paper detail

Unveiling the Hidden Truth of Drug Addiction: A Social Media Approach Using Similarity Network-Based Deep Learning

Jiaheng Xie, Zhu Zhang, Xiao Liu, Daniel Zeng

2021Journal of Management Information Systems29 citationsDOI

Abstract

Opioid use disorder (OUD) is an epidemic that costs the U.S. healthcare systems $504 billion annually and poses grave mortality risks. Existing studies investigated OUD treatment barriers via surveys as a means to mitigate this opioid crisis. However, the response rate of these surveys is low due to social stigma around opioids. We explore user-generated content in social media as a new data source to study OUD. We design a novel IT system, SImilarity Network-based DEep Learning (SINDEL), to discover OUD treatment barriers from patient narratives and address the challenge of morphs. SINDEL significantly outperforms state-of-the-art NLP models, reaching an F1 score of 76.79 percent. Thirteen types of treatment barriers were identified and verified by domain experts. This work contributes to information systems with a novel deep-learning-based approach for text analytics and generalized design principles for social media analytics methods. We also unveil the hurdles patients endure during the opioid epidemic.

Topics & Concepts

Opioid use disorderSocial mediaSimilarity (geometry)AddictionArtificial intelligenceComputer scienceMachine learningHealth careAnalyticsInternet privacyData scienceNarrativePsychologyMedicinePsychiatryOpioidWorld Wide WebPolitical scienceLawImage (mathematics)Internal medicinePhilosophyLinguisticsReceptorSentiment Analysis and Opinion MiningMental Health via WritingHIV, Drug Use, Sexual Risk