Anatomical entity recognition with a hierarchical framework augmented by external resources.

References to anatomical entities in medical records consist not only of explicit references to anatomical locations, but also other diverse types of expressions, such as specific diseases, clinical tests, clinical treatments, which constitute implicit references to anatomical entities. In order to...

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Main Authors: Yan Xu, Ji Hua, Zhaoheng Ni, Qinlang Chen, Yubo Fan, Sophia Ananiadou, Eric I-Chao Chang, Junichi Tsujii
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0108396
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spelling doaj-975b50d13a40431eb61ed4a8d98c312c2021-03-03T20:11:49ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-01910e10839610.1371/journal.pone.0108396Anatomical entity recognition with a hierarchical framework augmented by external resources.Yan XuJi HuaZhaoheng NiQinlang ChenYubo FanSophia AnaniadouEric I-Chao ChangJunichi TsujiiReferences to anatomical entities in medical records consist not only of explicit references to anatomical locations, but also other diverse types of expressions, such as specific diseases, clinical tests, clinical treatments, which constitute implicit references to anatomical entities. In order to identify these implicit anatomical entities, we propose a hierarchical framework, in which two layers of named entity recognizers (NERs) work in a cooperative manner. Each of the NERs is implemented using the Conditional Random Fields (CRF) model, which use a range of external resources to generate features. We constructed a dictionary of anatomical entity expressions by exploiting four existing resources, i.e., UMLS, MeSH, RadLex and BodyPart3D, and supplemented information from two external knowledge bases, i.e., Wikipedia and WordNet, to improve inference of anatomical entities from implicit expressions. Experiments conducted on 300 discharge summaries showed a micro-averaged performance of 0.8509 Precision, 0.7796 Recall and 0.8137 F1 for explicit anatomical entity recognition, and 0.8695 Precision, 0.6893 Recall and 0.7690 F1 for implicit anatomical entity recognition. The use of the hierarchical framework, which combines the recognition of named entities of various types (diseases, clinical tests, treatments) with information embedded in external knowledge bases, resulted in a 5.08% increment in F1. The resources constructed for this research will be made publicly available.https://doi.org/10.1371/journal.pone.0108396
collection DOAJ
language English
format Article
sources DOAJ
author Yan Xu
Ji Hua
Zhaoheng Ni
Qinlang Chen
Yubo Fan
Sophia Ananiadou
Eric I-Chao Chang
Junichi Tsujii
spellingShingle Yan Xu
Ji Hua
Zhaoheng Ni
Qinlang Chen
Yubo Fan
Sophia Ananiadou
Eric I-Chao Chang
Junichi Tsujii
Anatomical entity recognition with a hierarchical framework augmented by external resources.
PLoS ONE
author_facet Yan Xu
Ji Hua
Zhaoheng Ni
Qinlang Chen
Yubo Fan
Sophia Ananiadou
Eric I-Chao Chang
Junichi Tsujii
author_sort Yan Xu
title Anatomical entity recognition with a hierarchical framework augmented by external resources.
title_short Anatomical entity recognition with a hierarchical framework augmented by external resources.
title_full Anatomical entity recognition with a hierarchical framework augmented by external resources.
title_fullStr Anatomical entity recognition with a hierarchical framework augmented by external resources.
title_full_unstemmed Anatomical entity recognition with a hierarchical framework augmented by external resources.
title_sort anatomical entity recognition with a hierarchical framework augmented by external resources.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description References to anatomical entities in medical records consist not only of explicit references to anatomical locations, but also other diverse types of expressions, such as specific diseases, clinical tests, clinical treatments, which constitute implicit references to anatomical entities. In order to identify these implicit anatomical entities, we propose a hierarchical framework, in which two layers of named entity recognizers (NERs) work in a cooperative manner. Each of the NERs is implemented using the Conditional Random Fields (CRF) model, which use a range of external resources to generate features. We constructed a dictionary of anatomical entity expressions by exploiting four existing resources, i.e., UMLS, MeSH, RadLex and BodyPart3D, and supplemented information from two external knowledge bases, i.e., Wikipedia and WordNet, to improve inference of anatomical entities from implicit expressions. Experiments conducted on 300 discharge summaries showed a micro-averaged performance of 0.8509 Precision, 0.7796 Recall and 0.8137 F1 for explicit anatomical entity recognition, and 0.8695 Precision, 0.6893 Recall and 0.7690 F1 for implicit anatomical entity recognition. The use of the hierarchical framework, which combines the recognition of named entities of various types (diseases, clinical tests, treatments) with information embedded in external knowledge bases, resulted in a 5.08% increment in F1. The resources constructed for this research will be made publicly available.
url https://doi.org/10.1371/journal.pone.0108396
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