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Extracting UMLS Concepts from Medical Text Using General and Domain-Specific Deep Learning Models

2019-10-03 01:51:17
Kathleen C. Fraser, Isar Nejadgholi, Berry De Bruijn, Muqun Li, Astha LaPlante, Khaldoun Zine El Abidine

Abstract

Entity recognition is a critical first step to a number of clinical NLP applications, such as entity linking and relation extraction. We present the first attempt to apply state-of-the-art entity recognition approaches on a newly released dataset, MedMentions. This dataset contains over 4000 biomedical abstracts, annotated for UMLS semantic types. In comparison to existing datasets, MedMentions contains a far greater number of entity types, and thus represents a more challenging but realistic scenario in a real-world setting. We explore a number of relevant dimensions, including the use of contextual versus non-contextual word embeddings, general versus domain-specific unsupervised pre-training, and different deep learning architectures. We contrast our results against the well-known i2b2 2010 entity recognition dataset, and propose a new method to combine general and domain-specific information. While producing a state-of-the-art result for the i2b2 2010 task (F1 = 0.90), our results on MedMentions are significantly lower (F1 = 0.63), suggesting there is still plenty of opportunity for improvement on this new data.

Abstract (translated)

URL

https://arxiv.org/abs/1910.01274

PDF

https://arxiv.org/pdf/1910.01274.pdf


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