| Literature DB >> 29123330 |
Sriraam Natarajan1, Vishal Bangera1, Tushar Khot1, Jose Picado2, Anurag Wazalwar1, Vitor Santos Costa3, David Page1, Michael Caldwell4.
Abstract
Adverse drug events (ADEs) are a major concern and point of emphasis for the medical profession, government, and society. A diverse set of techniques from epidemiology, statistics, and computer science are being proposed and studied for ADE discovery from observational health data (e.g., EHR and claims data), social network data (e.g., Google and Twitter posts), and other information sources. Methodologies are needed for evaluating, quantitatively measuring, and comparing the ability of these various approaches to accurately discover ADEs. This work is motivated by the observation that text sources such as the Medline/Medinfo library provide a wealth of information on human health. Unfortunately, ADEs often result from unexpected interactions, and the connection between conditions and drugs is not explicit in these sources. Thus, in this work we address the question of whether we can quantitatively estimate relationships between drugs and conditions from the medical literature. This paper proposes and studies a state-of-the-art NLP-based extraction of ADEs from text.Entities:
Keywords: Adverse Drug Event Extraction; Markov Logic Networks; Natural Language Processing; Statistical Relational Learning
Year: 2016 PMID: 29123330 PMCID: PMC5673137 DOI: 10.1007/s10115-016-0980-6
Source DB: PubMed Journal: Knowl Inf Syst ISSN: 0219-3116 Impact factor: 2.822