Automatic resolution of ambiguous terms based on machine learning and conceptual relations in the UMLS.
about
A review of auditing methods applied to the content of controlled biomedical terminologiesBuilding a high-quality sense inventory for improved abbreviation disambiguationThesaurus-based disambiguation of gene symbols.CoPub Mapper: mining MEDLINE based on search term co-publicationContextual weighting for Support Vector Machines in literature mining: an application to gene versus protein name disambiguationA sense inventory for clinical abbreviations and acronyms created using clinical notes and medical dictionary resourcesExploiting MeSH indexing in MEDLINE to generate a data set for word sense disambiguationGene and protein nomenclature in public databasesAn examination of PubMed's ability to disambiguate subject queries and journal title queries.Machine learning and word sense disambiguation in the biomedical domain: design and evaluation issues.Biomedical word sense disambiguation with ontologies and metadata: automation meets accuracyWord Sense Disambiguation by Selecting the Best Semantic Type Based on Journal Descriptor Indexing: Preliminary ExperimentUsing a statistical natural language Parser augmented with the UMLS specialist lexicon to assign SNOMED CT codes to anatomic sites and pathologic diagnoses in full text pathology reports.Generating quality word sense disambiguation test sets based on MeSH indexing.Tailoring vocabularies for NLP in sub-domains: a method to detect unused word senseDisclosing ambiguous gene aliases by automatic literature profilingAuditing the multiply-related concepts within the UMLS.MachineProse: an ontological framework for scientific assertions.Using ontology network structure in text mining.Quantitative assessment of dictionary-based protein named entity tagging.Discovering biomedical semantic relations in PubMed queries for information retrieval and database curationUsing PharmGKB to train text mining approaches for identifying potential gene targets for pharmacogenomic studies.Hyperdimensional computing approach to word sense disambiguationWord sense disambiguation via semantic type classification.Applying active learning to supervised word sense disambiguation in MEDLINEClinical Word Sense Disambiguation with Interactive Search and ClassificationA cascaded approach to normalising gene mentions in biomedical literature.A long journey to short abbreviations: developing an open-source framework for clinical abbreviation recognition and disambiguation (CARD).Automated encoding of clinical documents based on natural language processingA multi-aspect comparison study of supervised word sense disambiguationAbbreviation and acronym disambiguation in clinical discourse.Ambiguity of human gene symbols in LocusLink and MEDLINE: creating an inventory and a disambiguation test collection.Gene symbol disambiguation using knowledge-based profiles.Resolving abbreviations to their senses in Medline.Suregene, a scalable system for automated term disambiguation of gene and protein names.Biomedical Text Mining: State-of-the-Art, Open Problems and Future Challenges
P2860
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P2860
Automatic resolution of ambiguous terms based on machine learning and conceptual relations in the UMLS.
description
2002 nî lūn-bûn
@nan
2002年の論文
@ja
2002年学术文章
@wuu
2002年学术文章
@zh-cn
2002年学术文章
@zh-hans
2002年学术文章
@zh-my
2002年学术文章
@zh-sg
2002年學術文章
@yue
2002年學術文章
@zh
2002年學術文章
@zh-hant
name
Automatic resolution of ambigu ...... ceptual relations in the UMLS.
@ast
Automatic resolution of ambigu ...... ceptual relations in the UMLS.
@en
type
label
Automatic resolution of ambigu ...... ceptual relations in the UMLS.
@ast
Automatic resolution of ambigu ...... ceptual relations in the UMLS.
@en
prefLabel
Automatic resolution of ambigu ...... ceptual relations in the UMLS.
@ast
Automatic resolution of ambigu ...... ceptual relations in the UMLS.
@en
P2860
P356
P1476
Automatic resolution of ambigu ...... ceptual relations in the UMLS.
@en
P2093
Hongfang Liu
Stephen B Johnson
P2860
P304
P356
10.1197/JAMIA.M1101
P577
2002-11-01T00:00:00Z