Concept attribute labeling and context-aware named entity recognition in electronic health records

Extracting valuable knowledge from Electronic Health Records (EHR) represents a challenging task due to the presence of both structured and unstructured data, including codified fields, images and test results. Narrative text in particular contains a variety of notes which are diverse in language an...

Full description

Autores:
Pomares-Quimbaya, Alexandra
González, Rafael A.
Muñoz, Óscar
Garcia-Pena, A.A.
Daza Rodríguez, Julián Camilo
Sierra Múnera, Alejandro
Labbé, Cyril
Tipo de recurso:
Part of book
Fecha de publicación:
2020
Institución:
Pontificia Universidad Javeriana
Repositorio:
Repositorio Universidad Javeriana
Idioma:
N/A
OAI Identifier:
oai:repository.javeriana.edu.co:10554/57112
Acceso en línea:
http://hdl.handle.net/10554/57112
http://dx.doi.org/10.4018/978-1-7998-1204-3.ch017
Palabra clave:
Rights
License
Atribución-NoComercial 4.0 Internacional
Description
Summary:Extracting valuable knowledge from Electronic Health Records (EHR) represents a challenging task due to the presence of both structured and unstructured data, including codified fields, images and test results. Narrative text in particular contains a variety of notes which are diverse in language and detail, as well as being full of ad hoc terminology, including acronyms and jargon, which is especially challenging in non-English EHR, where there is a dearth of annotated corpora or trained case sets. This paper proposes an approach for NER and concept attribute labeling for EHR that takes into consideration the contextual words around the entity of interest to determine its sense. The approach proposes a composition method of three different NER methods, together with the analysis of the context (neighboring words) using an ensemble classification model. This contributes to disambiguate NER, as well as labeling the concept as confirmed, negated, speculative, pending or antecedent. Results show an improvement of the recall and a limited impact on precision for the NER process.