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Pharmacovigilance from social media: mining adverse drug reaction mentions using sequence labeling with word embedding cluster features

Authors :
Azadeh Nikfarjam
Graciela Gonzalez
Karen O'Connor
Rachel Ginn
Abeed Sarker
Source :
Journal of the American Medical Informatics Association : JAMIA
Publication Year :
2015
Publisher :
Oxford University Press, 2015.

Abstract

Objective Social media is becoming increasingly popular as a platform for sharing personal health-related information. This information can be utilized for public health monitoring tasks, particularly for pharmacovigilance, via the use of natural language processing (NLP) techniques. However, the language in social media is highly informal, and user-expressed medical concepts are often nontechnical, descriptive, and challenging to extract. There has been limited progress in addressing these challenges, and thus far, advanced machine learning-based NLP techniques have been underutilized. Our objective is to design a machine learning-based approach to extract mentions of adverse drug reactions (ADRs) from highly informal text in social media.Methods We introduce ADRMine, a machine learning-based concept extraction system that uses conditional random fields (CRFs). ADRMine utilizes a variety of features, including a novel feature for modeling words’ semantic similarities. The similarities are modeled by clustering words based on unsupervised, pretrained word representation vectors (embeddings) generated from unlabeled user posts in social media using a deep learning technique.Results ADRMine outperforms several strong baseline systems in the ADR extraction task by achieving an F-measure of 0.82. Feature analysis demonstrates that the proposed word cluster features significantly improve extraction performance.Conclusion It is possible to extract complex medical concepts, with relatively high performance, from informal, user-generated content. Our approach is particularly scalable, suitable for social media mining, as it relies on large volumes of unlabeled data, thus diminishing the need for large, annotated training data sets.

Details

Language :
English
ISSN :
1527974X and 10675027
Volume :
22
Issue :
3
Database :
OpenAIRE
Journal :
Journal of the American Medical Informatics Association : JAMIA
Accession number :
edsair.doi.dedup.....1bf80238de4a3ae281c7d5392dfba5de