Holbrook E, Wiskur B, Nagykaldi Z
Department of Family Medicine, OU College of Medicine, University of Oklahoma Health Sciences Center, Japan.
Drug Alcohol Depend Rep. 2024 Nov 19;13:100302. doi: 10.1016/j.dadr.2024.100302. eCollection 2024 Dec.
The CDC reported that the overdose of prescription or illicit opioids was responsible for the deaths of over 80,000 Americans in 2021. Social media is a valuable source of insight into problematic patterns of substance misuse. The way people converse with illicit drugs in online forums is highly variable, and slang terms are frequently used. Manually identifying names of specific drugs can be difficult in both time and labor.
The study utilized the Gensim Python library and its Word2Vec neural network model to develop an auto-encoding neural network, enabling the innovative analysis of drug-related discourse downloaded from the Reddit website. The slang terms were then used to qualitatively analyze the topics and categories of drugs discussed on the forum.
The inclusion of slang terms facilitated the introduction of 200,000 specific mentions of opioid drugs and that stimulant drugs share a substantial semantic similarity with opioids, a 200 % increase in the number of drug-related terms as compared to using existing datasets.
This study advances the academic field with an extended collection of drug-related terms, offering a useful methodology and resource for tackling the opioid crisis with innovative, reduced-time detection and surveillance methods.
美国疾病控制与预防中心报告称,2021年有超过8万美国人死于处方或非法阿片类药物过量。社交媒体是洞察药物滥用问题模式的宝贵来源。人们在在线论坛中谈论非法药物的方式千差万别,且经常使用俚语。手动识别特定药物的名称既耗时又费力。
该研究利用Gensim Python库及其Word2Vec神经网络模型开发了一个自动编码神经网络,用于对从Reddit网站下载的与药物相关的论述进行创新性分析。然后使用这些俚语对论坛上讨论的药物主题和类别进行定性分析。
纳入俚语使得阿片类药物的特定提及增加了20万次,且兴奋剂药物与阿片类药物在语义上有很大相似性,与使用现有数据集相比,与药物相关的术语数量增加了200%。
本研究通过扩展与药物相关的术语集推进了学术领域,为采用创新的、缩短时间的检测和监测方法应对阿片类药物危机提供了有用的方法和资源。