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Randi Vita, M.D. Better living through ontologies at the Immune Epitope Database La Jolla Institute for Allergy & Immunology Division of Vaccine Discovery La Jolla, California
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The Immune Epitope Database
Free online resource of experimentally-derived epitope information IEDB has >99% of all published epitope data Allergy, Infectious diseases, Autoimmune diseases, Transplant/alloantigens New data is added every week 18,300 references >1,000,000 experimental assays 275,000 peptidic epitopes 2,400 nonpeptidic epitopes
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What is an epitope? APC T cell
The portion of a pathogen, allergen, or autoantigen that the immune system recognizes is the epitope Antibodies and T cells bind to epitopes to trigger an immune response Antibodies typically bind to discontinuous residues of proteins T cells recognize epitopes (typically peptides) presented by MHC molecules APC T cell
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Why do epitopes matter? Vaccine development Allergy immunotherapy
Immunogenicity Transplantation
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Collaborations with existing resources and ontologies (OBO)
Ensures consistency and accuracy Provides standardized nomenclature Provides definitions, synonyms, and hierarchical relationships for database terms Makes curation easier Enhances user experience Facilitates interoperability
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Embedded Finders driven by external resources and ontologies (OBO)
Structure Source Molecule Organism source Epitope Immunization Process(es) Host Immunogen Disease Assay Assay Type T cells MHC restriction MRO
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UniProt Molecule Finder
Amino acid sequence Protein source Organism source Peptidic Epitope Users can see all proteins expressed by an organism as well as processed fragments
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NCBI Organism Finder Amino acid sequence Peptidic Epitope
Protein source Organism source Peptidic Epitope
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Organism example in IEDB
NCBI hierarchy
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Organism example in IEDB
Immunologist friendly hierarchy
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Disease Ontology Finder
Immunization Process(es) Host Immunogen Disease
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Model, Reason and Infer We use logical reasoning to create validation rules that can identify errors within the data, enforce accurate curation, and infer data fields. For example, Timothy grass allergy is logically defined as has_allergic_trigger (pollen produced_by Phleum pratense) Timothy grass allergy should not be curated as being caused by a chicken egg. Using the logical definitions to drive validation, such existing data is flagged as an error, the curation interface will not allow new entries with this type of error, and the allergen can be inferred Curation Fields Logical Definition invalid
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Gained Knowledge The curator only has to only specify ‘Occurrence of allergy’ and the allergen as benzylpenicillin CHEBI:18208 benzylpenicillin allergy is inferred as the disease drug allergy, antibacterial drug, beta-lactam antibiotic, etc are gained knowledge
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OBI Assay Finder Assay Assay Type T cells MHC restriction Users can search on all T cell assays, all cytokine assays, or selectively on IL-2 assays.
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Interoperability As more resources represent information utilizing formal ontologies (especially OBO foundry) Interoperability between data sources is facilitated Queries across resources become possible. Example: What are shared features of chemicals causing allergic responses
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Thanks James Overton ChEBI, DO, OBI, Gaz – PRO, MGI, IPTM
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