a few loose ends
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Information Management for the Life Sciences
M. Scott MarshallMarco Roos
Adaptive Information DisclosureUniversity of Amsterdam
• Practice: OWL modeling of a statement• COI demo: Bridging CDISC and HL7 with query
federation• Terminology and SKOS• Demonstration• Toward Query Federation – putting it all together
A few loose ends
Towards RDF/OWL(1)
ALL instances of PeptideHormone are an instance of Peptide that has_role SOME instance of HormoneActivity
Source: Alan Ruttenberg
Towards RDF/OWL(3)
ALL instances of PeptideHormone are an instance of Peptide that has_role SOME instance of HormoneActivity
Source: Alan Ruttenberg
Towards RDF/OWL(3) - Instances
Source: Alan Ruttenberg
Towards RDF/OWL(4) URIs
chebi:25905 = <http://purl.org/obo/owl/CHEBI#CHEBI_25905>
Source: Alan Ruttenberg
Towards OWL(5) : triples
chebi:25905 rdfs:subClassOf chebi:16670.
chebi:25905 rdfs:subClassOf _:1.
:_1 owl:onProperty ro:hasRole.
:_1 owl:someValuesFrom go:GO_00179.…
Source: Alan Ruttenberg
SPARQLing: Put ?variables where you are looking for matches
chebi:25905 rdfs:subClassOf chebi:16670.
chebi:25905 rdfs:subClassOf _:1.
:_1 owl:onProperty ro:hasRole.
:_1 owl:someValuesFrom go:GO_00179.
select ?moleculeClasswhere {
?moleculeClass rdfs:subClassOf chebi:16670.
?moleculeClass rdfs:subClassOf ?res.
?res owl:onProperty ro:hasRole.
?res owl:someValuesFrom go:GO_00179.}
?moleculeClass = chebi:25905 Source: Alan Ruttenberg
Current Task Forces
• BioRDF – integrated neuroscience knowledge base– Kei Cheung (Yale University)
• Clinical Observations Interoperability – patient recruitment in trials– Vipul Kashyap (Cigna Healthcare)
• Linking Open Drug Data – aggregation of Web-based drug data – Chris Bizer (Free University Berlin)
• Pharma Ontology – high level patient-centric ontology– Christi Denney (Eli Lilly)
• Scientific Discourse – building communities through networking– Tim Clark (Harvard University)
• Terminology – Semantic Web representation of existing resources– John Madden (Duke University)
Background of the HCLS IG
• Originally chartered in 2005– Chairs: Eric Neumann and Tonya Hongsermeier
• Re-chartered in 2008– Chairs: Scott Marshall and Susie Stephens– Team contact: Eric Prud’hommeaux
• Broad industry participation– Over 100 members – Mailing list of over 600
• Background Information– http://www.w3.org/2001/sw/hcls/– http://esw.w3.org/topic/HCLSIG
COI Task Force
•Task Lead: Vipul Kashap•Participants: Eric Prud’hommeaux, Helen Chen, Jyotishman Pathak, Rachel Richesson, Holger Stenzhorn
COI: Bridging Bench to Bedside
• How can existing Electronic Health Records (EHR) formats be reused for patient recruitment?
• Quasi standard formats for clinical data:– HL7/RIM/DCM – healthcare delivery systems – CDISC/SDTM – clinical trial systems
• How can we map across these formats?– Can we ask questions in one format when the
data is represented in another format?
Source: Holger Stenzhorn
COI: Use Case
Pharmaceutical companies pay a lot to test drugs
Pharmaceutical companies express protocol in CDISC
-- precipitous gap –Hospitals exchange information in HL7/RIMHospitals have relational databases
Source: Eric Prud’hommeaux
• Type 2 diabetes on diet and exercise therapy or• monotherapy with metformin, insulin• secretagogue, or alpha-glucosidase inhibitors, or• a low-dose combination of these at 50%• maximal dose. Dosing is stable for 8 weeks prior• to randomization. • …
• ?patient takes meformin .
Inclusion Criteria
Source: Holger Stenzhorn
Exclusion Criteria
Use of warfarin (Coumadin), clopidogrel(Plavix) or other anticoagulants.…
?patient doesNotTake anticoagulant .
Source: Holger Stenzhorn
?medication1 sdtm:subject ?patient ;spl:activeIngredient ?ingredient1 .
?ingredient1 spl:classCode 6809 . #metformin
OPTIONAL {
?medication2 sdtm:subject ?patient ; spl:activeIngredient ?ingredient2 .?ingredient2 spl:classCode 11289 . #anticoagulant
} FILTER (!BOUND(?medication2))
Criteria in SPARQL
Source: Holger Stenzhorn
Terminology Task Force
•Task Lead: John Madden•Participants: Chimezie Ogbuji, M. Scott Marshall, Helen Chen, Holger Stenzhorn, Mary Kennedy, Xiashu Wang, Rob Frost, Jonathan Borden, Guoqian Jiang
Features: the “bridge” to meaning
Concepts Features Data
Ontology Keyword Vectors Literature
Ontology Image Features Image(s)
Ontology Gene Expression Profile
Microarray
Ontology Detected Features
Sensor Array
Terminology: Overview
• Goal is to identify use cases and methods for extracting Semantic Web representations from existing, standard medical record terminologies, e.g. UMLS • Methods should be reproducible and, to the extent possible, not lossy• Identify and document issues along the way related to identification schemes, expressiveness of the relevant languages• Initial effort will start with SNOMED-CT and UMLS Semantic Networks and focus on a particular sub-domain (e.g. pharmacological classification)
Source: John Madden
Medical terminologies: today
Moderate number of large, evolved terminologies
Adapted for specific business-process contexts
Each separately, centrally curated
Typically hierarchical, various expressivities
Uncommon to mix vocabularies
Outpatient billing - CPT
Inpatient billing - CD
Laboratory results - LOINC
Clinical findings - SNOMED
Journal indexing - MEDLARS
Pharmacy - MEDRA
Process - HL7
Clinical trials - CDISC
Others...
Source: John Madden
SKOS & the 80/20 principle: map “down”
• Minimal assumptions about expressiveness of source terminology• No assumed formal semantics (no model theory)• Treat it as a knowledge “map”• Extract 80% of the utility without risk of falsifying intent
21
Source: John MaddenSource: John Madden
The AIDA toolbox for knowledge extraction and knowledge management
in a Virtual Laboratory for e-Science
23
SNOMED CT/SKOS under AIDA: retrieve
Putting it all together
• Choosing valid terms for use in the SPARQL query by browsing/searching the knowledge base.
• Create single SPARQL endpoint for a federation of knowledge bases (SWObjects)
• Apply bridging technique to bridge MeSH terms and terms in HCLS Knowledge Base.
• Use terms from Terminology Server in Scientific Discourse
Task Force Resources to federate
• BioRDF – knowledge base, aTags (stored in KB)• Clinical Observations Interoperability – drug ontology• Linking Open Drug Data – LOD data• Pharma Ontology – ontology• Scientific Discourse – SWAN ontology, SWAN SKOS, myexperiment ontology • Terminology – SNOMED-CT, MeSH, UMLS
Someday, we should be able to find this as evidence for a fact in a Knowledge Base
Getting Involved
• Benefits to getting involved include:– Early access to use cases and best practice– Influence standard recommendations– Cost effective exploration of new technology through
collaboration– Network with others working on the Semantic Web
• Get involvedEmail chairs and team contact
• team-hcls-chairs@w3.org
– Participate in the next F2F (last one was here):• http://esw.w3.org/topic/HCLSIG/Meetings/2009-04-30_F2F
A Few Announcements
• Still unofficial but almost set: Semantic Web Applications and Tools for the Life Sciences Workshop (SWAT4LS) in Amsterdam 2009 (tentative date: Nov 20)
• Possibly W3C Semantic Web Health Care and Life Sciences Interest Group (HCLSIG) F2F in Fall in Amsterdam
• Shared Names http://sharednames.org workshop likely in the Fall, location unknown
• Protégé Conference in Amsterdam June 23 - 26
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