about
A power law global error model for the identification of differentially expressed genes in microarray dataBioHackathon series in 2011 and 2012: penetration of ontology and linked data in life science domainsThe 3rd DBCLS BioHackathon: improving life science data integration with Semantic Web technologiesSemantic Web applications and tools for the life sciences: SWAT4LS 2010The BioPAX community standard for pathway data sharingGauging triple stores with actual biological data.Towards linked open gene mutations dataKnowledge sharing and collaboration in translational research, and the DC-THERA DirectoryBiomedical semantics in the Semantic WebThe genopolis microarray database.RDFScape: Semantic Web meets systems biology.Gene Regulation Ontology (GRO): design principles and use cases.Semantic Web Applications and Tools for Life Sciences, 2008--preface.DC-ATLAS: a systems biology resource to dissect receptor specific signal transduction in dendritic cells.Matching disease and phenotype ontologies in the ontology alignment evaluation initiative.YummyData: providing high-quality open life science data.Corrigendum: The BioPAX community standard for pathway data sharingAnalysis and visualisation of RDF resources in OndexA Framework for Mining Life Sciences Data on the Semantic Web in an Interactive, Graph-Based EnvironmentErratum: Corrigendum: The BioPAX community standard for pathway data sharingImplementation and relevance of FAIR data principles in biopharmaceutical R&DOntology mapping for semantically enabled applications
P50
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P50
description
Italiaans onderzoeker
@nl
Semantic Web expert
@en
name
Andrea Splendiani
@ast
Andrea Splendiani
@ca
Andrea Splendiani
@en
Andrea Splendiani
@es
Andrea Splendiani
@fr
Andrea Splendiani
@ga
Andrea Splendiani
@nl
Andrea Splendiani
@sl
Andrea Splendiani
@sq
type
label
Andrea Splendiani
@ast
Andrea Splendiani
@ca
Andrea Splendiani
@en
Andrea Splendiani
@es
Andrea Splendiani
@fr
Andrea Splendiani
@ga
Andrea Splendiani
@nl
Andrea Splendiani
@sl
Andrea Splendiani
@sq
prefLabel
Andrea Splendiani
@ast
Andrea Splendiani
@ca
Andrea Splendiani
@en
Andrea Splendiani
@es
Andrea Splendiani
@fr
Andrea Splendiani
@ga
Andrea Splendiani
@nl
Andrea Splendiani
@sl
Andrea Splendiani
@sq
P106
P21
P27
P31
P496
0000-0002-3201-9617