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Main Authors: Duan, Zhijie, Wei, Kai, Xue, Zhaoqian, Zhou, Jiayan, Yang, Shu, Ma, Siyuan, Jin, Jin, li, Lingyao
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.04346
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author Duan, Zhijie
Wei, Kai
Xue, Zhaoqian
Zhou, Jiayan
Yang, Shu
Ma, Siyuan
Jin, Jin
li, Lingyao
author_facet Duan, Zhijie
Wei, Kai
Xue, Zhaoqian
Zhou, Jiayan
Yang, Shu
Ma, Siyuan
Jin, Jin
li, Lingyao
contents Social media is a rich source of real-world data that captures valuable patient experience information for pharmacovigilance. However, mining data from unstructured and noisy social media content remains a challenging task. We present a systematic framework that leverages large language models (LLMs) to extract medication side effects from social media and organize them into a knowledge graph (KG). We apply this framework to semaglutide for weight loss using data from Reddit. Using the constructed knowledge graph, we perform comprehensive analyses to investigate reported side effects across different semaglutide brands over time. These findings are further validated through comparison with adverse events reported in the FAERS database, providing important patient-centered insights into semaglutide's side effects that complement its safety profile and current knowledge base of semaglutide for both healthcare professionals and patients. Our work demonstrates the feasibility of using LLMs to transform social media data into structured KGs for pharmacovigilance.
format Preprint
id arxiv_https___arxiv_org_abs_2504_04346
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Crowdsourcing-Based Knowledge Graph Construction for Drug Side Effects Using Large Language Models with an Application on Semaglutide
Duan, Zhijie
Wei, Kai
Xue, Zhaoqian
Zhou, Jiayan
Yang, Shu
Ma, Siyuan
Jin, Jin
li, Lingyao
Artificial Intelligence
Social and Information Networks
J.4
Social media is a rich source of real-world data that captures valuable patient experience information for pharmacovigilance. However, mining data from unstructured and noisy social media content remains a challenging task. We present a systematic framework that leverages large language models (LLMs) to extract medication side effects from social media and organize them into a knowledge graph (KG). We apply this framework to semaglutide for weight loss using data from Reddit. Using the constructed knowledge graph, we perform comprehensive analyses to investigate reported side effects across different semaglutide brands over time. These findings are further validated through comparison with adverse events reported in the FAERS database, providing important patient-centered insights into semaglutide's side effects that complement its safety profile and current knowledge base of semaglutide for both healthcare professionals and patients. Our work demonstrates the feasibility of using LLMs to transform social media data into structured KGs for pharmacovigilance.
title Crowdsourcing-Based Knowledge Graph Construction for Drug Side Effects Using Large Language Models with an Application on Semaglutide
topic Artificial Intelligence
Social and Information Networks
J.4
url https://arxiv.org/abs/2504.04346