Large language models can disambiguate opioid slang on social media
Kristy A. Carpenter, Issah A. Samori, Mathew V. Kiang, Keith Humphreys, Anna Lembke, Johannes C. Eichstaedt, Russ B. Altman

TL;DR
Large language models effectively disambiguate opioid slang on social media, outperforming traditional lexicon methods across multiple tasks, thus improving monitoring of opioid-related trends.
Contribution
This study demonstrates the superior performance of state-of-the-art LLMs in identifying opioid-related social media posts, including new slang, surpassing traditional lexicon-based approaches.
Findings
LLMs achieved high F1 scores, exceeding lexicon methods.
LLMs demonstrated higher recall and accuracy in all tasks.
Effective identification of emergent slang terms was shown.
Abstract
Social media text shows promise for monitoring trends in the opioid overdose crisis; however, the overwhelming majority of social media text is unrelated to opioids. When leveraging social media text to monitor trends in the ongoing opioid overdose crisis, a common strategy for identifying relevant content is to use a lexicon of opioid-related terms as inclusion criteria. However, many slang terms for opioids, such as "smack" or "blues," have common non-opioid meanings, making them ambiguous. The advanced textual reasoning capability of large language models (LLMs) presents an opportunity to disambiguate these slang terms at scale. We present three tasks on which to evaluate four state-of-the-art LLMs (GPT-4, GPT-5, Gemini 2.5 Pro, and Claude Sonnet 4.5): a lexicon-based setting, in which the LLM must disambiguate a specific term within the context of a given post; a lexicon-free…
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Taxonomy
TopicsOpioid Use Disorder Treatment · Mental Health via Writing · HIV, Drug Use, Sexual Risk
