Title: How Ontologies Create Research Communities
1How Ontologies Create Research Communities
- Barry Smith
- University at Buffalo
- http//ontology.buffalo.edu/smith
2Who am I?
- NCBO National Center for Biomedical Ontology
(NIH Roadmap Center)
- Stanford Medical Informatics
- University of San Francisco Medical Center
- Berkeley Drosophila Genome Project
- Cambridge University Department of Genetics
- The Mayo Clinic
- University at Buffalo Department of Philosophy
3Who am I?
- NYS Center of Excellence in Bioinformatics and
Life Sciences Ontology Research Group - Buffalo Clinical and Translational Science
Institute (CTSI) - Duke/Dallas/Houston CTSA Ontology Consortium
4Who am I?
- Cleveland Clinic Semantic Database
- Gene Ontology
- Ontology for Biomedical Investigations
- Open Biomedical Ontologies Consortium
- Institute for Formal Ontology and Medical
Information Science - BIRN Ontology Task Force
- ...
5Multiple kinds of data in multiple kinds of silos
- Lab / pathology data
- Electronic Health Record data
- Clinical trial data
- Patient histories
- Medical imaging
- Microarray data
- Protein chip data
- Flow cytometry
- Mass spec
- Genotype / SNP data
6How to find your data?
- How to find other peoples data?
- How to reason with data when you find it?
- How to work out what data does not yet exist?
7Multiple kinds of standardization for data
- Terminologies (SNOMED, UMLS)
- CDEs (Clinical research)
- Information Exchange Standards (HL7 RIM)
- LIMS (LOINC)
- MGED standards for microarray data, etc.
8how solve the problem of making such data
queryable and re-usable by others to address NIH
mandates?
part of the solution must involve standardized
terminologies and coding schemes
9 most successful, thus far UMLS
- collection of separate terminologies built by
trained experts - massively useful for information retrieval and
information integration - UMLS Metathesaurus a system of post hoc mappings
between overlapping source vocabularies
10for UMLS
- local usage respected
- regimentation frowned upon
- cross-framework consistency not important
- no concern to establish consistency with basic
science - different grades of formal rigor, different
degrees of completeness, different update policies
11caBIG approach BRIDG (top-down imposition)
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13for science
- where do you find scientifically validated
information linking gene products and other
entities represented in biochemical databases to
semantically meaningful terms pertaining to
disease, anatomy, development in different model
organisms?
A new approach
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15where in the body ? where in the cell ?
16where in the body ? where in the cell ?
what kind of organism ?
17where in the body ? where in the cell ?
what kind of organism ?
what kind of disease process ?
18we need semantic annotation of data
we need ontologies
19 natural language labels designed for use
in annotations
to make the data cognitively accessible to human
beings
and algorithmically tractable to computers
20compare legends for maps
compare legends for maps
21compare legends for maps
common legends allow (cross-border) integration
22ontologies are legends for data
23ontologies high quality controlled structured
vocabularies for the annotation (description) of
data
24compare legends for diagrams
25or chemistry diagrams
legends for chemistry diagrams
Prasanna, et al. Chemical Compound Navigator A
Web-Based Chem-BLAST, Chemical Taxonomy-Based
Search Engine for Browsing Compounds PROTEINS
Structure, Function, and Bioinformatics
63907917 (2006)
26Ramirez et al. Linking of Digital Images to
Phylogenetic Data Matrices Using a Morphological
Ontology Syst. Biol. 56(2)283294, 2007
27computationally tractable legends
- help integrate complex representations of
reality - help human beings find things in complex
representations of reality - help computers reason with complex
representations of reality
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30 The Gene Ontology
31what cellular component?
what molecular function?
what biological process?
32The Idea of Common Controlled Vocabularies
GlyProt
MouseEcotope
sphingolipid transporter activity
DiabetInGene
GluChem
33The Network Effects of Synchronization
GlyProt
MouseEcotope
Holliday junction helicase complex
DiabetInGene
GluChem
34Five bangs for your GO buck
- Five bangs for your GO buck
- based in biological science
- incremental approach (evidence-based evolutionary
pathway) - cross-species data comparability (human, mouse,
yeast, fly ...) - cross-granularity data integration (molecule,
cell, organ, organism) - cumulation of scientific knowledge in
algorithmically tractable form, links people to
software
35- Model organism databases employ scientific
curators who use the experimental observations
reported in the biomedical literature to
associate GO terms with entries in gene product
and other molecular biology databases - (4 mill. p.a. NIH funding)
The methodology of annotations
36what cellular component?
what molecular function?
what biological process?
37How to extend the GO methodology to other domains
of clinical and translational medicine?
38the problem
existing clinical vocabularies are of variable
quality and low mutual consistency current
proliferation of tiny ontologies by different
groups with urgent annotation needs
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40the solution
- establish common rules governing best practices
for creating ontologies in coordinated fashion,
with an evidence-based pathway to incremental
improvement
41First step (2003)
- a shared portal for (so far) 58 ontologies
- (low regimentation)
- http//obo.sourceforge.net ? NCBO BioPortal
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43OBO now the principal entry point for creation of
web-accessible biomedical data
- OBO and OBOEdit low-tech to encourage users
- Simple (web-service-based) tools created to
support the work of biologists in creating
annotations (data entry) - OBO ? OWL DL converters make OBO Foundry
annotated data immediately accessible to Semantic
Web data integration projects
44Second step (2004)reform efforts initiated,
e.g. linking GO formally to other ontologies and
data sources
GO
Cell type
Osteoblast differentiation Processes whereby an
osteoprogenitor cell or a cranial neural crest
cell acquires the specialized features of an
osteoblast, a bone-forming cell which secretes
extracellular matrix.
New Definition
45Third step (2006)
The OBO Foundryhttp//obofoundry.org/
46Ontology Scope URL Custodians
Cell Ontology (CL) cell types from prokaryotes to mammals obo.sourceforge.net/cgi- bin/detail.cgi?cell Jonathan Bard, Michael Ashburner, Oliver Hofman
Chemical Entities of Bio- logical Interest (ChEBI) molecular entities ebi.ac.uk/chebi Paula Dematos, Rafael Alcantara
Common Anatomy Refer- ence Ontology (CARO) anatomical structures in human and model organisms (under development) Melissa Haendel, Terry Hayamizu, Cornelius Rosse, David Sutherland,
Foundational Model of Anatomy (FMA) structure of the human body fma.biostr.washington. edu JLV Mejino Jr., Cornelius Rosse
Functional Genomics Investigation Ontology (FuGO) design, protocol, data instrumentation, and analysis fugo.sf.net FuGO Working Group
Gene Ontology (GO) cellular components, molecular functions, biological processes www.geneontology.org Gene Ontology Consortium
Phenotypic Quality Ontology (PaTO) qualities of anatomical structures obo.sourceforge.net/cgi -bin/ detail.cgi? attribute_and_value Michael Ashburner, Suzanna Lewis, Georgios Gkoutos
Protein Ontology (PrO) protein types and modifications (under development) Protein Ontology Consortium
Relation Ontology (RO) relations obo.sf.net/relationship Barry Smith, Chris Mungall
RNA Ontology (RnaO) three-dimensional RNA structures (under development) RNA Ontology Consortium
Sequence Ontology (SO) properties and features of nucleic sequences song.sf.net Karen Eilbeck
47 RELATION TO TIME GRANULARITY CONTINUANT CONTINUANT CONTINUANT CONTINUANT OCCURRENT
RELATION TO TIME GRANULARITY INDEPENDENT INDEPENDENT DEPENDENT DEPENDENT
ORGAN AND ORGANISM Organism (NCBI Taxonomy) Anatomical Entity (FMA, CARO) Organ Function (FMP, CPRO) Phenotypic Quality(PaTO) Biological Process (GO)
CELL AND CELLULAR COMPONENT Cell (CL) Cellular Component (FMA, GO) Cellular Function (GO) Phenotypic Quality(PaTO) Biological Process (GO)
MOLECULE Molecule (ChEBI, SO, RnaO, PrO) Molecule (ChEBI, SO, RnaO, PrO) Molecular Function (GO) Molecular Function (GO) Molecular Process (GO)
Building out from the original GO
48 CONTINUANT CONTINUANT CONTINUANT CONTINUANT OCCURRENT
INDEPENDENT INDEPENDENT DEPENDENT DEPENDENT
ORGAN AND ORGANISM Organism (NCBI Taxonomy) Anatomical Entity (FMA, CARO) Organ Function (FMP, CPRO) Phenotypic Quality(PaTO) Organism-Level Process (GO)
CELL AND CELLULAR COMPONENT Cell (CL) Cellular Component (FMA, GO) Cellular Function (GO) Phenotypic Quality(PaTO) Cellular Process (GO)
MOLECULE Molecule (ChEBI, SO, RnaO, PrO) Molecule (ChEBI, SO, RnaO, PrO) Molecular Function (GO) Molecular Function (GO) Molecular Process (GO)
initial OBO Foundry coverage
49CRITERIA
- The ontology is open and available to be used by
all. - The ontology is in, or can be instantiated in, a
common formal language. - The developers of the ontology agree in advance
to collaborate with developers of other OBO
Foundry ontology where domains overlap.
CRITERIA
50- UPDATE The developers of each ontology commit to
its maintenance in light of scientific advance,
and to soliciting community feedback for its
improvement. - ORTHOGONALITY They commit to working with other
Foundry members to ensure that, for any
particular domain, there is community convergence
on a single controlled vocabulary.
CRITERIA
51for science
- communities must work together to ensure
consistency ? orthogonality ? modular development
plus additivity of annotations - if we annotate a database or body of literature
with one OBO Foundry ontology, we should be able
to add annotations from a second such ontology
without conflicts - ontologies do not need to create tiny theories of
anatomy or chemistry within themselves
ORTHOGONALITY
52CRITERIA
- IDENTIFIERS The ontology possesses a unique
identifier space within OBO. - VERSIONING The ontology provider has procedures
for identifying distinct successive versions. - The ontology includes textual definitions for all
terms.
CRITERIA
53- CLEARLY BOUNDED The ontology has a clearly
specified and clearly delineated content. - DOCUMENTATION The ontology is well-documented.
- USERS The ontology has a plurality of
independent users.
CRITERIA
54- COMMON ARCHITECTURE The ontology uses relations
which are unambiguously defined following the
pattern of definitions laid down in the OBO
Relation Ontology -
CRITERIA
55- OBO Foundry is serving as a benchmark for
improvements in discipline-focused terminology
resources - yielding callibration of existing terminologies
and data resources and alignment of different
views
Consequences
56Foundry ontologies all work in the same way
- all are built to represent the types existing in
a pre-existing domain and the relations between
these types in a way which can support reasoning - we have data
- we need to make this data available for semantic
search and algorithmic processing - we create a consensus-based ontology for
annotating the data - and ensure that it can interoperate with Foundry
ontologies for neighboring domains
57Mature OBO Foundry ontologies (now undergoing
reform)
- Cell Ontology (CL)
- Chemical Entities of Biological Interest (ChEBI)
- Foundational Model of Anatomy (FMA)
- Gene Ontology (GO)
- Phenotypic Quality Ontology (PaTO)
- Relation Ontology (RO)
- Sequence Ontology (SO)
58Ontologies being built to satisfy Foundry
principles ab initio
- Ontology for Clinical Investigations (OCI)
- Common Anatomy Reference Ontology (CARO)
- Ontology for Biomedical Investigations (OBI)
- Protein Ontology (PRO)
- RNA Ontology (RnaO)
- Subcellular Anatomy Ontology (SAO)
59Ontologies in planning phase
- Biobank/Biorepository Ontology (BrO, part of OBI)
- Environment Ontology (EnvO)
- Immunology Ontology (ImmunO)
- Infectious Disease Ontology (IDO)
- Mouse Adult Neurogenesis Ontology (MANGO)
60OBO Foundry Success Story
- Model organism research seeks results valuable
for the understanding of human disease. - This requires the ability to make reliable
cross-species comparisons, and for this anatomy
is crucial. - But different MOD communities have developed
their anatomy ontologies in uncoordinated
fashion.
61Ontologies facilitate grouping of annotations
brain 20 hindbrain 15
rhombomere 10
Query brain without ontology 20 Query brain
with ontology 45
62CARO Common Anatomy Reference Ontology
- for the first time provides guidelines for model
organism researchers who wish to achieve
comparability of annotations - for the first time provides guidelines for those
new to ontology work - See Haendel et al., CARO The Common Anatomy
Reference Ontology, in Burger (ed.), Anatomy
Ontologies for Bioinformatics Springer, in press.
63CARO-conformant ontologies already in development
- Fish Multi-Species Anatomy Ontology (NSF funding
received) - Ixodidae and Argasidae (Tick) Anatomy Ontology
- Mosquito Anatomy Ontology (MAO)
- Spider Anatomy Ontology
- Xenopus Anatomy Ontology (XAO)
- undergoing reform Drosophila and Zebrafish
Anatomy Ontologies
64-
- June 2006 establishment of MICheck
- reflects growing need for prescriptive
checklists specifying the key information to
include when reporting experimental results
(concerning methods, data, analyses and results).
Minimal Information Checklists
65- MIBBI a common resource for minimum information
checklists analogous to OBO / NCBO BioPortal - MIBBI Foundry will create a suite of
self-consistent, clearly bounded, orthogonal,
integrable checklist modules - Taylor CF, et al. Nature Biotech, in press
The vision is spreading
66- Transcriptomics (MIAME Working Group / MGED)
- Proteomics (Proteomics Standards Initiative)
- Metabolomics (Metabolomics Standards Initiative)
- Genomics and Metagenomics (Genomic Standards
Consortium) - In Situ Hybridization and Immunohistochemistry
(MISFISHIE Working Group) - Phylogenetics (Phylogenetics Community)
- RNA Interference (RNAi Community)
- Toxicogenomics (Toxicogenomics WG)
- Environmental Genomics (Environmental Genomics
WG) - Nutrigenomics (Nutrigenomics WG)
- Flow Cytometry (Flow Cytometry Community)
MIBBI Foundry communities
67OBI / OCI
- Ontology for Biological Investigations
- overarching terminology resource for MIBBI
Foundry - Ontology for Clinical Investigations
- collaboration with EPOCH ontology for clinical
trial management - and with CDISC (FDA mandated vocabulary for
clinical trial reports)
68INDEPENDENT CONTINUANTS
organism
system
organ
organ part
tissue
cell
acellular anatomical structure
biological molecule
genome
DEPENDENT CONTINUANTS DEPENDENT CONTINUANTS DEPENDENT CONTINUANTS DEPENDENT CONTINUANTS
physiology (functions) pathology pathology pathology
physiology (functions) acute stage progressive stage resolution stage
next step repertoire of disease ontologiesbuilt
out of OBO Foundry elements
69Draft Ontology for Multiple Sclerosis
to apprehend what is unknown requires a complete
demarcation of the relevant space of alternatives
70CTSA Ontology Consortium
- Duke Clinical Research Institute (DCRI)
- Dallas University of Texas Southwestern Medical
Center Clinical and Translational Science
Initiative Division of Biomedical Informatics - University of Texas Health Science Center at
Houston Center for Clinical and Translational
Sciences
71Multiple kinds of standardization for data
- Terminologies (SNOMED, UMLS)
- CDEs (Clinical research)
- Ontologies (Biology, Disease Models)
- Information Exchange Standards (HL7 RIM)
- LIMS (LOINC)
- Duke DCRI project to deal with 3 of these
72Houston CTSA Biomedical Informatics
- Specific aim 1 To design and implement the
biological data interface ... based on existing
biological ontologies, specifically those
included in the NIH Roadmap funded Open
Biomedical Ontologies (OBO) project, and to
leverage previous informatics research in
ontology management.
73Houston CTSA proposal
- providing a coherent and integrated framework
for CTSI investigators to integrate disparate
sources of data, improve the communication among
researchers, and establish better contact between
researchers and the community. Of critical
importance, by combining isolated data clusters
the biomedical informatics component will empower
investigators to redefine human disease and the
response to diagnostic and therapeutic strategies
through the use of combined clinical and
molecular profiling.
74PAR-07-425 Data Ontologies for Biomedical
Research (R01)
- Adoption of ontologies also depends on the
ontology being in a format that is broadly
supported, fully machine interpretable and not
subject to intellectual property restrictions.
... Another determinate of ontology acceptance is
the degree to which the ontology conforms to best
practices governing ontology design and
construction. Criteria have been developed, and
are undergoing empirical validation, by the
Vocabulary and Common Data Element Work Group of
caBIG. Other criteria have been specified by the
OBO Foundry (http//obofoundry.org).
75Top-down (master-model-based) Bottom-up (evidence-based)
prospective standardization caBIG SNOMED HL7 OBO Foundry
retrospective mapping UMLS (multiple authorities) NLP / data text-mining
76- SNOMED
- Ultimately as data become attached to the
samples (e.g., pathology data, genotypes) these
will be linked to the patient records.