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Improving medical term embeddings using UMLS Metathesaurus
by
Vucetic, Slobodan
, Chanda, Ashis Kumar
, Bai, Tian
, Yang, Ziyu
in
Algorithms
/ Analysis
/ Computational linguistics
/ Controlled vocabularies
/ EHR
/ Electronic Health Records
/ Electronic medical records
/ Electronic records
/ Embedding
/ Embeddings
/ Health Informatics
/ Humans
/ Informatics
/ Information Systems and Communication Service
/ Language processing
/ Machine Learning
/ Management of Computing and Information Systems
/ Medical informatics
/ Medical terminology
/ Medical terms
/ Medicine
/ Medicine & Public Health
/ Methods
/ Natural language interfaces
/ Natural language processing
/ Neural networks
/ Parkinson's disease
/ Qualitative analysis
/ Research Article
/ Terminology
/ UMLS
/ Unified Medical Language System
2022
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Improving medical term embeddings using UMLS Metathesaurus
by
Vucetic, Slobodan
, Chanda, Ashis Kumar
, Bai, Tian
, Yang, Ziyu
in
Algorithms
/ Analysis
/ Computational linguistics
/ Controlled vocabularies
/ EHR
/ Electronic Health Records
/ Electronic medical records
/ Electronic records
/ Embedding
/ Embeddings
/ Health Informatics
/ Humans
/ Informatics
/ Information Systems and Communication Service
/ Language processing
/ Machine Learning
/ Management of Computing and Information Systems
/ Medical informatics
/ Medical terminology
/ Medical terms
/ Medicine
/ Medicine & Public Health
/ Methods
/ Natural language interfaces
/ Natural language processing
/ Neural networks
/ Parkinson's disease
/ Qualitative analysis
/ Research Article
/ Terminology
/ UMLS
/ Unified Medical Language System
2022
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Do you wish to request the book?
Improving medical term embeddings using UMLS Metathesaurus
by
Vucetic, Slobodan
, Chanda, Ashis Kumar
, Bai, Tian
, Yang, Ziyu
in
Algorithms
/ Analysis
/ Computational linguistics
/ Controlled vocabularies
/ EHR
/ Electronic Health Records
/ Electronic medical records
/ Electronic records
/ Embedding
/ Embeddings
/ Health Informatics
/ Humans
/ Informatics
/ Information Systems and Communication Service
/ Language processing
/ Machine Learning
/ Management of Computing and Information Systems
/ Medical informatics
/ Medical terminology
/ Medical terms
/ Medicine
/ Medicine & Public Health
/ Methods
/ Natural language interfaces
/ Natural language processing
/ Neural networks
/ Parkinson's disease
/ Qualitative analysis
/ Research Article
/ Terminology
/ UMLS
/ Unified Medical Language System
2022
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Improving medical term embeddings using UMLS Metathesaurus
Journal Article
Improving medical term embeddings using UMLS Metathesaurus
2022
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Overview
Background
Health providers create Electronic Health Records (EHRs) to describe the conditions and procedures used to treat their patients. Medical notes entered by medical staff in the form of free text are a particularly insightful component of EHRs. There is a great interest in applying machine learning tools on medical notes in numerous medical informatics applications. Learning vector representations, or embeddings, of terms in the notes, is an important pre-processing step in such applications. However, learning good embeddings is challenging because medical notes are rich in specialized terminology, and the number of available EHRs in practical applications is often very small.
Methods
In this paper, we propose a novel algorithm to learn embeddings of medical terms from a limited set of medical notes. The algorithm, called
definition2vec
, exploits external information in the form of medical term definitions. It is an extension of a skip-gram algorithm that incorporates textual definitions of medical terms provided by the Unified Medical Language System (UMLS) Metathesaurus.
Results
To evaluate the proposed approach, we used a publicly available Medical Information Mart for Intensive Care (MIMIC-III) EHR data set. We performed quantitative and qualitative experiments to measure the usefulness of the learned embeddings. The experimental results show that
definition2vec
keeps the semantically similar medical terms together in the embedding vector space even when they are rare or unobserved in the corpus. We also demonstrate that learned vector embeddings are helpful in downstream medical informatics applications.
Conclusion
This paper shows that medical term definitions can be helpful when learning embeddings of rare or previously unseen medical terms from a small corpus of specialized documents such as medical notes.
Publisher
BioMed Central,BioMed Central Ltd,Springer Nature B.V,BMC
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