about
Utilizing social media data for pharmacovigilance: A reviewRecent Advances and Emerging Applications in Text and Data Mining for Biomedical DiscoveryKnowledge-driven geospatial location resolution for phylogeographic models of virus migrationPharmacovigilance from social media: mining adverse drug reaction mentions using sequence labeling with word embedding cluster featuresThe Protein-Protein Interaction tasks of BioCreative III: classification/ranking of articles and linking bio-ontology concepts to full text.Efficient extraction of protein-protein interactions from full-text articles.The GNAT library for local and remote gene mention normalizationOverview of the gene ontology task at BioCreative IVUnsupervised gene function extraction using semantic vectors.Portable automatic text classification for adverse drug reaction detection via multi-corpus training.Enhancing phylogeography by improving geographical information from GenBankEnhancing clinical concept extraction with distributional semantics.Social Media Mining for Toxicovigilance: Automatic Monitoring of Prescription Medication Abuse from Twitter.Analysis of the effect of sentiment analysis on extracting adverse drug reactions from tweets and forum postsTowards generating a patient's timeline: extracting temporal relationships from clinical notesDiscovering Cohorts of Pregnant Women From Social Media for Safety Surveillance and Analysis.Pharmacoepidemiologic Evaluation of Birth Defects from Health-Related Postings in Social Media During PregnancyPromoting Reproducible Research for Characterizing Nonmedical Use of Medications Through Data Annotation: Description of a Twitter Corpus and Guidelines
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description
hulumtuese
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onderzoeker
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հետազոտող
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name
Graciela Gonzalez
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Graciela Gonzalez
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Graciela Gonzalez
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Graciela Gonzalez
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Graciela Gonzalez
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Graciela Gonzalez
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Graciela Gonzalez
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Graciela Gonzalez
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Graciela Gonzalez
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Graciela Gonzalez
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0000-0002-6416-9556