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Automatic vs. manual curation of a multi-source chemical dictionary: the impact on text miningThe Implicitome: A Resource for Rationalizing Gene-Disease AssociationsStructuring research methods and data with the research object model: genomics workflows as a case studyAutomated workflow-based exploitation of pathway databases provides new insights into genetic associations of metabolite profilesNanopublications for exposing experimental data in the life-sciences: a Huntington's Disease case studyChemical entity recognition in patents by combining dictionary-based and statistical approachesOxytocin signalingNext-generation text-mining mediated generation of chemical response-specific gene sets for interpretation of gene expression dataChemical and biological profiling of an annotated compound library directed to the nuclear receptor family.Connecting small molecules to nuclear receptor pathways.Literature-aided interpretation of gene expression data with the weighted global test.Rewriting and suppressing UMLS terms for improved biomedical term identification.Training multidisciplinary biomedical informatics students: three years of experience.Applied information retrieval and multidisciplinary research: new mechanistic hypotheses in complex regional pain syndromeAutomatic mining of the literature to generate new hypotheses for the possible link between periodontitis and atherosclerosis: lipopolysaccharide as a case study.Integration of targeted metabolomics and transcriptomics identifies deregulation of phosphatidylcholine metabolism in Huntington's disease peripheral blood samplesCommon disease signatures from gene expression analysis in Huntington's disease human blood and brainA dictionary to identify small molecules and drugs in free text.Recognition of chemical entities: combining dictionary-based and grammar-based approaches.Automatic vs. manual curation of a multi-source chemical dictionary: the impact on text miningEarly career researchers want Open Science.Cross-sectional serum metabolomic study of multiple forms of muscular dystrophy.Brain Transcriptomic Analysis of Hereditary Cerebral Hemorrhage With Amyloidosis-Dutch Type.Transcriptional profiling and biomarker identification reveal tissue specific effects of expanded ataxin-3 in a spinocerebellar ataxia type 3 mouse model.Explain your data by Concept Profile Analysis Web ServicesWorkflow forever: semantic web semantic models and tools for preserving and digitally publishing computational experimentsWhy workflows break — Understanding and combating decay in Taverna workflowsA putative role for genome-wide epigenetic regulatory mechanisms in Huntington’s disease: A computational assessmentUsing a suite of ontologies for preserving workflow-centric research objectsSelective glucocorticoid receptor modulation prevents and reverses non-alcoholic fatty liver disease in male miceTracking disease progression non-invasively in Duchenne and Becker muscular dystrophiesKnowledge.Bio: A Web application for exploring, building and sharing webs of biomedical relationships mined from PubMedEdge: a framework for developing collective understanding [project]Bioinformatics Methods for Interpreting Toxicogenomics DataSemantic Knowledge Graph Network Features for Drug RepurposingFinding Novel Associations Across Domains Using Linked Data: a Case Study on Genetic Variants Disrupting Transcription Start SitesNanopublications for Exposing Experimental Data in the Life-sciences: A Huntington's Disease Case StudyBest Practices for Workflow Design: How to Prevent Workflow DecayDrug prioritization using the semantic properties of a knowledge graphFAIR Principles: Interpretations and Implementation Considerations
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P50
description
hulumtuese
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researcher
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wetenschapper
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հետազոտող
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name
Kristina Hettne
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Kristina M Hettne
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Kristina M Hettne
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Kristina M. Hettne
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type
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Kristina Hettne
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Kristina M Hettne
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Kristina M Hettne
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Kristina M. Hettne
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Kristina Hettne
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Kristina Hettne
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Kristina Maria Hettne
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prefLabel
Kristina Hettne
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Kristina M Hettne
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Kristina M Hettne
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Kristina M. Hettne
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P1053
J-6252-2014
P106
P21
P2456
P31
P3829
P496
0000-0002-4182-7560