about
Extraction of relations between genes and diseases from text and large-scale data analysis: implications for translational researchA review on computational systems biology of pathogen-host interactionsGNormPlus: An Integrative Approach for Tagging Genes, Gene Families, and Protein DomainstmChem: a high performance approach for chemical named entity recognition and normalizationEnhancement of chemical entity identification in text using semantic similarity validationA framework for ontology-based question answering with application to parasite immunologyThe CHEMDNER corpus of chemicals and drugs and its annotation principlesProcessing biological literature with customizable Web services supporting interoperable formatsLiverCancerMarkerRIF: a liver cancer biomarker interactive curation system combining text mining and expert annotationsA multistage gene normalization system integrating multiple effective methodsCollective instance-level gene normalization on the IGN corpusLearning to recognize phenotype candidates in the auto-immune literature using SVM re-rankingBiocuration workflows and text mining: overview of the BioCreative 2012 Workshop Track IIIntegrating various resources for gene name normalizationThe gene normalization task in BioCreative IIIProtein interaction sentence detection using multiple semantic kernelsAutomatic extraction of angiogenesis bioprocess from textOntoGene in BioCreative IIThe Markyt visualisation, prediction and benchmark platform for chemical and gene entity recognition at BioCreative/CHEMDNER challengeAnatomical entity mention recognition at literature scaleA robust data-driven approach for gene ontology annotation.Self-training in significance space of support vectors for imbalanced biomedical event dataGimli: open source and high-performance biomedical name recognitionMoara: a Java library for extracting and normalizing gene and protein mentions.Evaluating gold standard corpora against gene/protein tagging solutions and lexical resourcesSemi-automatic semantic annotation of PubMed queries: a study on quality, efficiency, satisfaction.BELMiner: adapting a rule-based relation extraction system to extract biological expression language statements from bio-medical literature evidence sentences.A rule-based named-entity recognition method for knowledge extraction of evidence-based dietary recommendationsComplex event extraction at PubMed scaleUsing machine learning for concept extraction on clinical documents from multiple data sources.BC4GO: a full-text corpus for the BioCreative IV GO task.Multi-stage gene normalization for full-text articles with context-based species filtering for dynamic dictionary entry selection.Soft tagging of overlapping high confidence gene mention variants for cross-species full-text gene normalization.Combining active learning and semi-supervised learning techniques to extract protein interaction sentencesTraining text chunkers on a silver standard corpus: can silver replace gold?Hybrid curation of gene-mutation relations combining automated extraction and crowdsourcingContext-specific protein network miner--an online system for exploring context-specific protein interaction networks from the literature.A corpus of full-text journal articles is a robust evaluation tool for revealing differences in performance of biomedical natural language processing tools.Recent progress in automatically extracting information from the pharmacogenomic literature.Application of text-mining for updating protein post-translational modification annotation in UniProtKB
P2860
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P2860
description
2008 nî lūn-bûn
@nan
2008年の論文
@ja
2008年論文
@yue
2008年論文
@zh-hant
2008年論文
@zh-hk
2008年論文
@zh-mo
2008年論文
@zh-tw
2008年论文
@wuu
2008年论文
@zh
2008年论文
@zh-cn
name
Overview of BioCreative II gene mention recognition
@en
type
label
Overview of BioCreative II gene mention recognition
@en
prefLabel
Overview of BioCreative II gene mention recognition
@en
P2093
P2860
P50
P356
P1433
P1476
Overview of BioCreative II gene mention recognition
@en
P2093
Anna Divoli
Barry Haddow
Bob Carpenter
Cheng-Ju Kuo
Chengjie Sun
Christian Blaschke
Chun-Nan Hsu
Craig A Struble
Hong-Jie Dai
P2860
P2888
P356
10.1186/GB-2008-9-S2-S2
P478
P50
P577
2008-09-01T00:00:00Z
P5875
P6179
1041411233