Paper Type

Complete

Abstract

The rising incidence of drug overdoses (DOD) has become a global public health crisis, marked by unprecedented opioid fatalities and substance abuse deaths. Traditional surveillance systems rely on official records and healthcare data, but their inherent delays and underreporting hinder timely interventions and obscure evolving trends. In contrast, social media platforms generate vast real-time user content on DOD, reflecting genuine experiences, sentiments, and behaviors linked to substance use. To harness this wealth of information, we propose a multi-task deep learning framework, Masera, for detecting DOD-related content on social media. Masera utilizes a model-level multi-task classification approach, leveraging Mamba, a state-space model, to analyze multiple facets of DOD-related information (e.g., sentiment, lexicon). Experiments demonstrate that Masera outperforms existing detection methods in both effectiveness and robustness. This study advances public health surveillance, social media monitoring, and intervention strategies, offering a novel application of AI in addressing societal issues.

Paper Number

1411

Author Connect URL

https://authorconnect.aisnet.org/conferences/AMCIS2025/papers/1411

Comments

SIGDSA

Author Connect Link

Share

COinS
 
Aug 15th, 12:00 AM

Detecting Drug Overdose on Social Media Using a Multi-Task Deep Learning Framework

The rising incidence of drug overdoses (DOD) has become a global public health crisis, marked by unprecedented opioid fatalities and substance abuse deaths. Traditional surveillance systems rely on official records and healthcare data, but their inherent delays and underreporting hinder timely interventions and obscure evolving trends. In contrast, social media platforms generate vast real-time user content on DOD, reflecting genuine experiences, sentiments, and behaviors linked to substance use. To harness this wealth of information, we propose a multi-task deep learning framework, Masera, for detecting DOD-related content on social media. Masera utilizes a model-level multi-task classification approach, leveraging Mamba, a state-space model, to analyze multiple facets of DOD-related information (e.g., sentiment, lexicon). Experiments demonstrate that Masera outperforms existing detection methods in both effectiveness and robustness. This study advances public health surveillance, social media monitoring, and intervention strategies, offering a novel application of AI in addressing societal issues.

When commenting on articles, please be friendly, welcoming, respectful and abide by the AIS eLibrary Discussion Thread Code of Conduct posted here.