| Literature DB >> 24973735 |
Licong Cui1, Satya S Sahoo2, Samden D Lhatoo3, Gaurav Garg3, Prashant Rai3, Alireza Bozorgi3, Guo-Qiang Zhang4.
Abstract
Epilepsy is a common serious neurological disorder with a complex set of possible phenotypes ranging from pathologic abnormalities to variations in electroencephalogram. This paper presents a system called Phenotype Exaction in Epilepsy (PEEP) for extracting complex epilepsy phenotypes and their correlated anatomical locations from clinical discharge summaries, a primary data source for this purpose. PEEP generates candidate phenotype and anatomical location pairs by embedding a named entity recognition method, based on the Epilepsy and Seizure Ontology, into the National Library of Medicine's MetaMap program. Such candidate pairs are further processed using a correlation algorithm. The derived phenotypes and correlated locations have been used for cohort identification with an integrated ontology-driven visual query interface. To evaluate the performance of PEEP, 400 de-identified discharge summaries were used for development and an additional 262 were used as test data. PEEP achieved a micro-averaged precision of 0.924, recall of 0.931, and F1-measure of 0.927 for extracting epilepsy phenotypes. The performance on the extraction of correlated phenotypes and anatomical locations shows a micro-averaged F1-measure of 0.856 (Precision: 0.852, Recall: 0.859). The evaluation demonstrates that PEEP is an effective approach to extracting complex epilepsy phenotypes for cohort identification.Entities:
Keywords: Cohort identification; Epilepsy; Information extraction
Mesh:
Year: 2014 PMID: 24973735 PMCID: PMC4464795 DOI: 10.1016/j.jbi.2014.06.006
Source DB: PubMed Journal: J Biomed Inform ISSN: 1532-0464 Impact factor: 6.317