about
PubMed related articles: a probabilistic topic-based model for content similarityDatabase resources of the National Center for Biotechnology InformationDatabase resources of the National Center for Biotechnology InformationDatabase resources of the National Center for Biotechnology InformationAutomatic MeSH term assignment and quality assessmentAuthor name disambiguation for PubMedRetro: concept-based clustering of biomedical topical sets.Rapid similarity searches of nucleic acid and protein data banksImproving links between literature and biological data with text mining: a case study with GEO, PDB and MEDLINEMeshable: searching PubMed abstracts by utilizing MeSH and MeSH-derived topical termsThe gene normalization task in BioCreative IIIStructural footprinting in protein structure comparison: the impact of structural fragments.Identifying related journals through log analysisThe Protein-Protein Interaction tasks of BioCreative III: classification/ranking of articles and linking bio-ontology concepts to full text.A thematic analysis of the AIDS literature.A theory of information with special application to search problems.Tagging gene and protein names in biomedical text.Evaluating relevance ranking strategies for MEDLINE retrieval.DNA splice site detection: a comparison of specific and general methods.GeneWays: a system for extracting, analyzing, visualizing, and integrating molecular pathway data.The NLM Indexing Initiative.Extraction of data deposition statements from the literature: a method for automatically tracking research results.The dimensions of indexing.Boosting naïve Bayesian learning on a large subset of MEDLINE.Identification of related gene/protein names based on an HMM of name variations.GENETAG: a tagged corpus for gene/protein named entity recognition.A strategy for assigning new concepts in the MEDLINE database.New directions in biomedical text annotation: definitions, guidelines and corpus constructionFeatures generated for computational splice-site prediction correspond to functional elements.SPELLING CORRECTION IN THE PUBMED SEARCH ENGINEOptimal training sets for Bayesian prediction of MeSH assignment.Abbreviation definition identification based on automatic precision estimates.Improving accuracy for identifying related PubMed queries by an integrated approach.How to get the most out of your curation effortEvaluation of Query Expansion Using MeSH in PubMed.The Ineffectiveness of Within - Document Term Frequency in Text Classification.Finding query suggestions for PubMed.Finding abbreviations in biomedical literature: three BioC-compatible modules and four BioC-formatted corpora.Natural language processing pipelines to annotate BioC collections with an application to the NCBI disease corpus.BioC implementations in Go, Perl, Python and Ruby
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researcher, NIH
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P106
P1960
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