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FAIRPORT
Domain-Specific Metadata
Using W3C DCAT & SKOS
with Ontology Views
9 April 2014
Tim Clark
Massachusetts General Hospital
Harvard Medical School
© 2014 Massachusetts General Hospital
Fairport Metadata:
Use Case 1
UC1 - Dataset discovery
Without knowing the dataset’s UID, find it on the web using
a Google-like search, or a faceted search .
• Example 1.1: Find datasets relevant to these terms:
<Mus musculus> <C57/Bl6J> <LT-HSC> <Flk2>
<CD34> <Mouse Genome 430 2.0 Array>
• Example 1.2: Find datasets by [all / someOf ] these
authors: <Rossi, Derrick J> <Bryder, David> <Zahn,
Jacob M>
UC 1 Requirements
• UC 1 only requires us to be able to search across
well-known sets of structures defining datasets, and
linked to commonly agreed terms and fields.
• In the next example, the repository has its own local
vocabularies set up for each facet.
• These vocabularies are subsets of terms from
various relevant ontologies.
UC 2 Requirements
• UC 2 requires us to be able to let users specify
commonly agreed terms and fields that characterize
their datasets, that are drawn from NCBO
ontologies.
• But without requiring them to choose from the too-
large comprehensive sets of terms in NCBO
Bioportal
• There is also the case of repositories like FigShare,
that support only folksonomic tagging.
Fairport Metadata:
Use Cases 2 & 3
UC2 - Core metadata characterization
• Example 2.1: User attaches metadata to indicate
the name of the study, the authors, the date and
version.
UC3 - Domain-specific metadata characterization:
• Example 3.1: Indicate the organism species &
strain, cell type, associated gene names, and
technology platform used to produce the dataset
Faceted search/browse example
Ontology Views
• The repository as a whole implements a “view” on the terms from
OBI, EFO, NCI & NCBI Taxon, relevant to its users - its “domain” -
by implementing Drupal taxonomies containing the terms & URIs.
• There is a much more elegant way to define ontology views, using
SKOS and OWL2 punning, outlined in
S. Jupp et al.“Taking a view on bio-ontologies”, Proceedings of
ICBO 2012, Graz, Austria.
• Download PDF: http://ceur-ws.org/Vol-897/session4-paper22.pdf
Advantages of Ontology
Views
• They allow useful term sets from multiple ontologies
to be combined.
• They allow you to restrict the terms only to those
needed in your domain or specific repository.
• Avoiding user confusion …
• …while preserving generality provided by the
underlying ontologies.
Domain-specific metadata
template in SKOS
• Create a domain-specific metadata “template” as a
SKOS Concept Scheme, which defines the view your
repository takes over a set of ontology terms.
• The Concept Scheme has a tree structure.
• Top node -> facet -> facetTerm
• Facet example: StudyDesignType
• facetTerm example:
<http://purl.obolibrary.org/obo/OBI_0000951> (OBI,
“compound treatement design”)
W3C DCAT + SKOS
Ontology Views
• W3C DCAT already provides a standard dataset
description.
• It already references SKOS.
• DCAT assumes the SKOS Concept Scheme will
apply at the whole-repository level.
• This may not be the case for multi-domain
repositories such as Dryad, Dataverse, Figshare.
W3C DCAT Model
Each dataset also has a DCAT theme described by
terms from a SKOS vocabulary or “concept scheme”.
Each dataset and distribution
has a set of standard DCMI terms
Core Dataverse metadata terms
Domain specific metadata terms
Fairport domain specific metadata using w3 c dcat & skos w ontology views

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Fairport domain specific metadata using w3 c dcat & skos w ontology views

  • 1. FAIRPORT Domain-Specific Metadata Using W3C DCAT & SKOS with Ontology Views 9 April 2014 Tim Clark Massachusetts General Hospital Harvard Medical School © 2014 Massachusetts General Hospital
  • 2. Fairport Metadata: Use Case 1 UC1 - Dataset discovery Without knowing the dataset’s UID, find it on the web using a Google-like search, or a faceted search . • Example 1.1: Find datasets relevant to these terms: <Mus musculus> <C57/Bl6J> <LT-HSC> <Flk2> <CD34> <Mouse Genome 430 2.0 Array> • Example 1.2: Find datasets by [all / someOf ] these authors: <Rossi, Derrick J> <Bryder, David> <Zahn, Jacob M>
  • 3. UC 1 Requirements • UC 1 only requires us to be able to search across well-known sets of structures defining datasets, and linked to commonly agreed terms and fields. • In the next example, the repository has its own local vocabularies set up for each facet. • These vocabularies are subsets of terms from various relevant ontologies.
  • 4. UC 2 Requirements • UC 2 requires us to be able to let users specify commonly agreed terms and fields that characterize their datasets, that are drawn from NCBO ontologies. • But without requiring them to choose from the too- large comprehensive sets of terms in NCBO Bioportal • There is also the case of repositories like FigShare, that support only folksonomic tagging.
  • 5. Fairport Metadata: Use Cases 2 & 3 UC2 - Core metadata characterization • Example 2.1: User attaches metadata to indicate the name of the study, the authors, the date and version. UC3 - Domain-specific metadata characterization: • Example 3.1: Indicate the organism species & strain, cell type, associated gene names, and technology platform used to produce the dataset
  • 7. Ontology Views • The repository as a whole implements a “view” on the terms from OBI, EFO, NCI & NCBI Taxon, relevant to its users - its “domain” - by implementing Drupal taxonomies containing the terms & URIs. • There is a much more elegant way to define ontology views, using SKOS and OWL2 punning, outlined in S. Jupp et al.“Taking a view on bio-ontologies”, Proceedings of ICBO 2012, Graz, Austria. • Download PDF: http://ceur-ws.org/Vol-897/session4-paper22.pdf
  • 8. Advantages of Ontology Views • They allow useful term sets from multiple ontologies to be combined. • They allow you to restrict the terms only to those needed in your domain or specific repository. • Avoiding user confusion … • …while preserving generality provided by the underlying ontologies.
  • 9.
  • 10. Domain-specific metadata template in SKOS • Create a domain-specific metadata “template” as a SKOS Concept Scheme, which defines the view your repository takes over a set of ontology terms. • The Concept Scheme has a tree structure. • Top node -> facet -> facetTerm • Facet example: StudyDesignType • facetTerm example: <http://purl.obolibrary.org/obo/OBI_0000951> (OBI, “compound treatement design”)
  • 11. W3C DCAT + SKOS Ontology Views • W3C DCAT already provides a standard dataset description. • It already references SKOS. • DCAT assumes the SKOS Concept Scheme will apply at the whole-repository level. • This may not be the case for multi-domain repositories such as Dryad, Dataverse, Figshare.
  • 12. W3C DCAT Model Each dataset also has a DCAT theme described by terms from a SKOS vocabulary or “concept scheme”. Each dataset and distribution has a set of standard DCMI terms
  • 13. Core Dataverse metadata terms Domain specific metadata terms