Syntactic parsing is one of the fundamental tasks of Natural Language Processing (NLP). However, few studies have explored syntactic parsing in the medical domain. This dissertation systematically investigated different methods to improve the performance of syntactic parsing of clinical text, including (1) Constructing two clinical treebanks of discharge summaries and progress notes by developing annotation guidelines that handle missing elements in clinical sentences; (2) Retraining four state-of-the-art parsers, including the Stanford parser, Berkeley parser, Charniak parser, and Bikel parser, using clinical treebanks, and comparing their performance to identify better parsing approaches; and (3) Developing new methods to reduce syntactic...
Biomedical research is currently facing a new type of challenge: an excess of information, both in t...
NLP systems will be more portable among medical domains if acquisition of semantic lexicons can be f...
AbstractIn this paper, we describe the construction of a semantically annotated corpus of clinical t...
AbstractBackgroundFull syntactic parsing of clinical text as a part of clinical natural language pro...
Background: Parsing, which generates a syntactic structure of a sentence (a parse tree), is a critic...
AbstractSemantic-based sublanguage grammars have been shown to be an efficient method for medical la...
ObjectiveTo create annotated clinical narratives with layers of syntactic and semantic labels to fac...
AbstractThis paper introduces a state-of-the-art, linguistically motivated statistical parser to the...
Abstract Background: : Syntactic analysis, or parsing, is a key task in natural language processing...
Information access from clinical text is a research area which has gained a large amount of interest...
Abstract: Background: Recent advances in representation learning have enabled large strides in natur...
Proceedings of the 18th Nordic Conference of Computational Linguistics NODALIDA 2011. Editors: Bol...
In this paper, we describe the construction of a semantically annotated corpus of clinical texts for...
OBJECTIVE: To evaluate the effectiveness of a lexico-syntactic pattern (LSP) matching method for ont...
Objective: To evaluate the effectiveness of a lexico-syntactic pattern (LSP) matching method for ont...
Biomedical research is currently facing a new type of challenge: an excess of information, both in t...
NLP systems will be more portable among medical domains if acquisition of semantic lexicons can be f...
AbstractIn this paper, we describe the construction of a semantically annotated corpus of clinical t...
AbstractBackgroundFull syntactic parsing of clinical text as a part of clinical natural language pro...
Background: Parsing, which generates a syntactic structure of a sentence (a parse tree), is a critic...
AbstractSemantic-based sublanguage grammars have been shown to be an efficient method for medical la...
ObjectiveTo create annotated clinical narratives with layers of syntactic and semantic labels to fac...
AbstractThis paper introduces a state-of-the-art, linguistically motivated statistical parser to the...
Abstract Background: : Syntactic analysis, or parsing, is a key task in natural language processing...
Information access from clinical text is a research area which has gained a large amount of interest...
Abstract: Background: Recent advances in representation learning have enabled large strides in natur...
Proceedings of the 18th Nordic Conference of Computational Linguistics NODALIDA 2011. Editors: Bol...
In this paper, we describe the construction of a semantically annotated corpus of clinical texts for...
OBJECTIVE: To evaluate the effectiveness of a lexico-syntactic pattern (LSP) matching method for ont...
Objective: To evaluate the effectiveness of a lexico-syntactic pattern (LSP) matching method for ont...
Biomedical research is currently facing a new type of challenge: an excess of information, both in t...
NLP systems will be more portable among medical domains if acquisition of semantic lexicons can be f...
AbstractIn this paper, we describe the construction of a semantically annotated corpus of clinical t...