about
The CHEMDNER corpus of chemicals and drugs and its annotation principlesOverview of the interactive task in BioCreative VGimli: open source and high-performance biomedical name recognitionTwitter: a good place to detect health conditions.Concept-based query expansion for retrieving gene related publications from MEDLINE.Analysing Twitter and web queries for flu trend prediction.Harmonization of gene/protein annotations: towards a gold standard MEDLINE.A modular framework for biomedical concept recognitionA document processing pipeline for annotating chemical entities in scientific documentsComputational prediction of the human-microbial oral interactome.BioCreative V BioC track overview: collaborative biocurator assistant task for BioGRID.TrigNER: automatically optimized biomedical event trigger recognition on scientific documents.Mining clinical attributes of genomic variants through assisted literature curation in Egas.An Intelligent Cloud Storage Gateway for Medical Imaging.An Overview of Biomolecular Event Extraction from Scientific Documents.A longitudinal assessment of acute cough.Cough frequency, cough sensitivity and health status in patients with chronic cough.Detection of cough signals in continuous audio recordings using hidden Markov models.Pattern recognition for cache management in distributed medical imaging environments.Sound: a non-invasive measure of cough intensity.Obstructive sleep apnoea: a cause of chronic cough.The Objective Assessment of Cough Frequency in BronchiectasisBeCAS: biomedical concept recognition services and visualization.Cough frequency in health and disease.An automated system for 24-h monitoring of cough frequency: the leicester cough monitor.The Leicester Cough Monitor: preliminary validation of an automated cough detection system in chronic coughAnn2RDFExtracting Sentences Describing Biomolecular Events from the Biomedical LiteratureStructuring and Exploring the Biomedical Literature Using Latent SemanticsPrioritizing Literature Search Results Using a Training Set of Classified DocumentsExpanding Gene-Based PubMed QueriesImproving Cross Mapping in Biomedical DatabasesSyntactic Parsing for Bio-molecular Event Detection from Scientific LiteratureNeural network classification of cerebral embolic signalsBiomedical Word Sense Disambiguation with Word EmbeddingsImproving Document Prioritization for Protein-Protein Interaction Extraction Using Shallow Linguistics and Word EmbeddingsS144 Acute cough: a longitudinal observational studyS140 Predictors of 24-h cough frequency in acute coughS117 4 h cough frequency monitoring with the Leicester Cough MonitorFrom the authors
P50
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P50
description
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հետազոտող
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Sérgio Matos
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Sérgio Matos
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Sérgio Matos
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Sérgio Matos
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Sérgio Matos
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Sérgio Matos
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Sérgio Matos
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Sérgio Matos
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Sérgio Matos
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Sérgio Matos
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Sérgio Matos
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Sérgio Matos
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P1053
G-4941-2010
P106
P1153
26031510200
P21
P31
P3829
P4012
P496
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