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Learning Signals of Adverse Drug-Drug Interactions from the Unstructured Text of Electronic Health Records

Drug-drug interactions (DDI) account for 30% of all adverse drug reactions, which are the fourth leading cause of death in the US. Current methods for post marketing surveillance primarily use spontaneous reporting systems for learning DDI signals and validate their signals using the structured port...

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Autores principales: Iyer, Srinivasan V, LePendu, Paea, Harpaz, Rave, Bauer-Mehren, Anna, Shah, Nigam H
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Informatics Association 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3814491/
https://www.ncbi.nlm.nih.gov/pubmed/24303305
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author Iyer, Srinivasan V
LePendu, Paea
Harpaz, Rave
Bauer-Mehren, Anna
Shah, Nigam H
author_facet Iyer, Srinivasan V
LePendu, Paea
Harpaz, Rave
Bauer-Mehren, Anna
Shah, Nigam H
author_sort Iyer, Srinivasan V
collection PubMed
description Drug-drug interactions (DDI) account for 30% of all adverse drug reactions, which are the fourth leading cause of death in the US. Current methods for post marketing surveillance primarily use spontaneous reporting systems for learning DDI signals and validate their signals using the structured portions of Electronic Health Records (EHRs). We demonstrate a fast, annotation-based approach, which uses standard odds ratios for identifying signals of DDIs from the textual portion of EHRs directly and which, to our knowledge, is the first effort of its kind. We developed a gold standard of 1,120 DDIs spanning 14 adverse events and 1,164 drugs. Our evaluations on this gold standard using millions of clinical notes from the Stanford Hospital confirm that identifying DDI signals from clinical text is feasible (AUROC=81.5%). We conclude that the text in EHRs contain valuable information for learning DDI signals and has enormous utility in drug surveillance and clinical decision support.
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spelling pubmed-38144912013-12-03 Learning Signals of Adverse Drug-Drug Interactions from the Unstructured Text of Electronic Health Records Iyer, Srinivasan V LePendu, Paea Harpaz, Rave Bauer-Mehren, Anna Shah, Nigam H AMIA Jt Summits Transl Sci Proc Articles Drug-drug interactions (DDI) account for 30% of all adverse drug reactions, which are the fourth leading cause of death in the US. Current methods for post marketing surveillance primarily use spontaneous reporting systems for learning DDI signals and validate their signals using the structured portions of Electronic Health Records (EHRs). We demonstrate a fast, annotation-based approach, which uses standard odds ratios for identifying signals of DDIs from the textual portion of EHRs directly and which, to our knowledge, is the first effort of its kind. We developed a gold standard of 1,120 DDIs spanning 14 adverse events and 1,164 drugs. Our evaluations on this gold standard using millions of clinical notes from the Stanford Hospital confirm that identifying DDI signals from clinical text is feasible (AUROC=81.5%). We conclude that the text in EHRs contain valuable information for learning DDI signals and has enormous utility in drug surveillance and clinical decision support. American Medical Informatics Association 2013-03-18 /pmc/articles/PMC3814491/ /pubmed/24303305 Text en ©2013 AMIA - All rights reserved.
spellingShingle Articles
Iyer, Srinivasan V
LePendu, Paea
Harpaz, Rave
Bauer-Mehren, Anna
Shah, Nigam H
Learning Signals of Adverse Drug-Drug Interactions from the Unstructured Text of Electronic Health Records
title Learning Signals of Adverse Drug-Drug Interactions from the Unstructured Text of Electronic Health Records
title_full Learning Signals of Adverse Drug-Drug Interactions from the Unstructured Text of Electronic Health Records
title_fullStr Learning Signals of Adverse Drug-Drug Interactions from the Unstructured Text of Electronic Health Records
title_full_unstemmed Learning Signals of Adverse Drug-Drug Interactions from the Unstructured Text of Electronic Health Records
title_short Learning Signals of Adverse Drug-Drug Interactions from the Unstructured Text of Electronic Health Records
title_sort learning signals of adverse drug-drug interactions from the unstructured text of electronic health records
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3814491/
https://www.ncbi.nlm.nih.gov/pubmed/24303305
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