Medical Language Processing (MLP), especially in specific domains, requires fine-grained semantic lexica. We examine whether robust natural language processing tools used on a representative corpus of a domain help in building and refining a semantic categorization. We test this hypothesis with ZELLIG, a corpus analysis tool. The first clusters we obtain are consistent with a model of the domain, as found in the SNOMED nomenclature. They correspond to coarse-grained semantic categories, but isolate as well lexical idiosyncrasies belonging to the clinical sub-language. Moreover, they help categorize additional words
Knowledge of morphologically derived words, as pro-vided for medical English by the UMLS Specialist ...
AbstractMedical terminologies are important for unambiguous encoding and exchange of clinical inform...
The aim of this paper is to present a multilingual method for the structuration of biomedical lexico...
specific domains, requires fine-grained semantic lex-ica. We examine whether robust natural language...
There is a constant need to extend and tune medical vo-cabularies to account for new words and new w...
Background: There are several humanly defined ontologies relevant to Medline. However, Medline is a ...
Lexical classes, when tailored to the application and domain in question, can provide an effective m...
The automatic processing of medical language represents a clue for computational linguists due to in...
Motivation: The sheer volume of textually described biomedical knowledge exerts the need for natural...
This paper explores the use of the resources in the National Library of Medicine's Unified Medical L...
Most existing corpus-based approaches to semantic representation suffer from inaccurate modeling of ...
Natural language processing (NLP) is the branch of computer science focused on developing systems th...
Medical language processing has focused until recently on a few types of textual documents. However,...
Semantic knowledge can be a great asset to natural language processing systems, but it is usually ha...
Due to the importance of the information it conveys, Medical Entity Recognition is one of the most i...
Knowledge of morphologically derived words, as pro-vided for medical English by the UMLS Specialist ...
AbstractMedical terminologies are important for unambiguous encoding and exchange of clinical inform...
The aim of this paper is to present a multilingual method for the structuration of biomedical lexico...
specific domains, requires fine-grained semantic lex-ica. We examine whether robust natural language...
There is a constant need to extend and tune medical vo-cabularies to account for new words and new w...
Background: There are several humanly defined ontologies relevant to Medline. However, Medline is a ...
Lexical classes, when tailored to the application and domain in question, can provide an effective m...
The automatic processing of medical language represents a clue for computational linguists due to in...
Motivation: The sheer volume of textually described biomedical knowledge exerts the need for natural...
This paper explores the use of the resources in the National Library of Medicine's Unified Medical L...
Most existing corpus-based approaches to semantic representation suffer from inaccurate modeling of ...
Natural language processing (NLP) is the branch of computer science focused on developing systems th...
Medical language processing has focused until recently on a few types of textual documents. However,...
Semantic knowledge can be a great asset to natural language processing systems, but it is usually ha...
Due to the importance of the information it conveys, Medical Entity Recognition is one of the most i...
Knowledge of morphologically derived words, as pro-vided for medical English by the UMLS Specialist ...
AbstractMedical terminologies are important for unambiguous encoding and exchange of clinical inform...
The aim of this paper is to present a multilingual method for the structuration of biomedical lexico...