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Susanna-Assunta Sansone (Toxicogenomics project coordinator) Microarray Informatics Team EMBL- EBI (European Bioinformatics Institute) Transcriptome Symposium,

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Presentation on theme: "Susanna-Assunta Sansone (Toxicogenomics project coordinator) Microarray Informatics Team EMBL- EBI (European Bioinformatics Institute) Transcriptome Symposium,"— Presentation transcript:

1 Susanna-Assunta Sansone (Toxicogenomics project coordinator) Microarray Informatics Team EMBL- EBI (European Bioinformatics Institute) Transcriptome Symposium, April 2002 CHU Pitié-Salpêtrière, Université Paris VI MIAME and ArrayExpress – a standard for microarray gene expression data and the public database at EBI

2  EMBL- EBI centre for research and services in bioinformatics that makes and maintains public db: EMBL Nucleotide Sequence, SWISS-PROT, Ensembl, MSD, etc.  Practical reasons: Easy data access Resolves local storage issues Common data exchange formats can be developed  Scientific reasons: Curation can be applied Annotation can be controlled Additional info can be stored that is missing in publications Improve data comparison !  Public standard can be applied Why have a public database?

3  MIAME standard  MIAME annotation challenge: MGED BioMaterial Ontology  Uses of MIAME concepts: ArrayExpress: a public repository for gene expression data MIAMExpress submission and annotation tool Talk structure

4  MIAME standard

5 Standard for microarray data - Why?  Size of dataset  Different platforms - nylon, glass  Different technologies - oligos, spotted  References to external db not stable!  Array annotation  Sample annotation  Data sharing needs standardized way to annotate and record the information!

6  Microarray Gene Expression Data Group: EBI + world’s largest microarray labs and companies (Sanger, Stanford, TIGR, Universite D'Aix-Marseille II, Affymetrics, Agilent, NCBI, DDBJ, etc.)  MGED Group aims to Facilitate adoption of standards for: –Experiment annotation –Data representation Introduce standard for: –Experimental controls –Data normalization methods Standard for microarray data - MGED Group

7  Minimum information about a microarray experiment  NOT a formal specification BUT a set of guidelines  Sufficient information must be recorded to: Correctly interpret and verify the results Replicate the experiments  Structured information must be recorded to: Query and correctly retrieve the data Analyse the data  MIAME- Brazma et al., Nature Genetics, 2001 General MIAME principles

8 ArraySample Sample source Sample treatments Extraction protocol Labeling protocol Array design information Location of each element Description of each element Hybridization protocol Quantification matrix Analysis protocol Software specifications Image Scanning protocol Software specifications Hybridisation MIAME 6 parts of a microarray experiment MIAME

9 Strategy Algorithm Control array elements Final data Normalisation 3 data processing levels Lack of gene expression measurement units ! ArraySampleHybridisationArraySampleHybridisationArraySampleHybridisationArraySampleHybridisationExperiment MIAME 6 parts of a microarray experiment

10  Annotation implementations are required ! Avoid/reduce free text descriptions Use of controlled terms Definitions and sources for each term Remove of synonyms, or use of synonym mappings Data curation at source (LIMS) Integration of controlled terms in query interfaces  Facilitate data queries-analysis……. MIAME – Annotation challenge

11 Samples Gene expression matrix A gene expression database from the data analyst’s point of view Gene expression levels ? Genes and transcription units

12 Samples Genes and transcription units Gene expression matrix A gene expression database from the data analyst’s point of view Array description: - Gene annotations Sample annotations: - Source - Treatment Gene expression levels

13 MIAME - Gene annotation  Unambiguous identification  Synonyms ! Community approved names Alternative to gene names  Usable external sources e.g.: EMBL-GenBank - sequence accession n. Jackson Lab - approved mouse gene names HUGO - approved human gene names GO categories - function, process, location

14 MIAME - Sample annotation  Gene expression data only have a meaning in the context of detailed sample descriptions !  Usable external sources e.g.: NCBI Taxonomy - organisms Jackson Lab - mouse strains names Mouse Anatomical Dictionary – mouse anatomy ChemID – compounds ICD-9 – diseases classification  More is needed…..

15 Annotation – implementations required!  Need an ontology to describe the sample: Defining controlled vocabularies and…… ….Using existing external ontologies  Integrate the ontology in LIMS and databases: Develop browser or interface for the ontology Develop internal editing tools for the ontology  However some free text description is unavoidable

16 Talk structure  MIAME standard  MIAME annotation challenge: MGED BioMaterial Ontology

17 What CV and ontology are?  Controlled Vocabulary (CV): Set of restrictive terms used to describe something, in the simplest case it could be a list  Ontology is more then a CV: Describes the relationship between the terms in a structured way, provides semantics and constraints Capture knowledge and make it machine processable

18 Sample annotation – MGED BioMaterial Ontology  Under construction by Chris Stoeckert (Univ. of Penn.) and MGED members  Use OILed (rdf, daml and html files available)  Motivated by MIAME and guided by ‘case scenarios’  Defines terms, provides constraints, develops CVs for sample annotation  Links also to external CVs and ontologies  Will be extended to other part of a microarray experiment that need to be described

19 Sample annotation – MGED BioMaterial Ontology an example Sample source and treatment description, and its correct annotation using the MGED BioMaterial Ontology classes and correspondent external references: “Seven week old C57BL/6N mice were treated with fenofibrate. Liver was dissected out, RNA prepared………”

20 ©-BioMaterialDescription ©-Biosource Property ©-Organism ©-Age ©-DevelopmentStage ©-Sex ©-StrainOrLine ©-BiosourceProvider ©-OrganismPart ©-BioMaterialManipulation ©-EnvironmentalHistory ©-CultureCondition ©-Temperature ©-Humidity ©-Light ©-PathogenTests ©-Water ©-Nutrients ©-Treatment ©-CompoundBasedTreatment (Compound) (Treatment_application) (Measurement) MGED BioMaterial Ontology Instances 7 weeks after birth Female Charles River, Japan 22  2  C 55  5% 12 hours light/dark cycle Specified pathogen free conditions ad libitum MF, Oriental Yeast, Tokyo, Japan in vivo, oral gavage 100mg/kg body weight External References NCBI Taxonomy Mouse Anatomical Dictionary International Committee on Standardized Genetic Nomenclature for Mice International Committee on Standardized Genetic Nomenclature for Mice Mouse Anatomical Dictionary ChemIDplus Mus musculus musculus id: 39442 Stage 28 C57BL/6 Liver Fenofibrate, CAS 49562-28-9

21  MIAME standard  Sample annotation: MGED BioMaterial Ontology Talk structure  Uses of MIAME concepts: ArrayExpress a public repository for gene expression data MIAMEpress submission and annotation tool

22  Specifies the content of the information: Sufficient Structured Uses of MIAME concepts  Uses: Creation of MIAME-compliant LIMS or databases e.g: ArrayExpress Development of submission/annotation tool for generating MIAME-compliant information e.g.: MIAMExpress

23 Users EBI Web server Browse-Query Central database Data warehouse ArrayExpress Curation database Image server Update MAGE-ML Output Loader MIAMExpress Submission LIMS Submission MIAMExpress ArrayExpress – data flow

24 Central database Data warehouse ArrayExpress  Implementation in ORACLE of the MAGE-OM model: Microarray gene expression - Object Model OMG approved standard (MGED and Rosetta, 2001) Model developed in UML  Object model-based query mechanism: Automatic mapping to SQL  Independent of: Experimental platform Image analysis method Normalization method  MAGE-ML data loader: Microarray gene expression - Mark-up Language generated from model ArrayExpress - details

25 Final data Normalisation ArraySampleHybridisationArraySampleHybridisationArraySampleHybridisationArraySampleHybridisationExperiment MIAME 6 parts of a microarray experiment ArrayExpress – conceptual model

26 ArrayExpress – simplified model Classes are represented by boxes Classes describe objects Related classes are grouped together in packages MAGE-OM has 16 packages, ~ 150 tables

27 Human data - EMBL (ironchip) Yeast data - EMBL S. pombe - Sanger Institute Available as example annotated and curated data sets Array descriptions - TIGR Array description - Affymetrix Mouse data - TIGR and HGMP Anopheles data - EMBL Direct pipeline - Sanger Institute LIMS Data - DESPRAD partners Toxicogenomics data- ILSI HESI Near future:Currently: ArrayExpress - data (via MAGE-ML)

28 ArrayExpress – query interface First release 12 Januray 2002

29 SEQLOGO EPCLUST Expression data GENOMES sequence, function, annotation SPEXS discover patterns URLMAP provide links External data, tools pathways, function, etc. PATMATCH visualise patterns EP:GO GeneOntology EP:PPI Prot-Prot ia. ArrayExpress – link to Expression Profiler Expression data

30  User support and help documentation: Ontologies and CV’s Minimize free text, removal of synonyms Help on MAGE-ML format and MAGE-OM  MIAME compliance-check  Curation at source (LIMS)  To provide high-quality, well-annotated data and allow automated data analysis ArrayExpress – curation effort

31 MIAMExpress  Submission and annotation tool: Curators will monitor the submissions  Based on MIAME concepts: Experiment, Array and Protocol submissions Generates MIAME-compliant information  Uses MGED BioMaterial Ontology terms: Terms and required fields are explained  Allows user driven ontology development: User can provide new terms and their sources  Allows browsing: Array descriptions Protocols MIAMExpress - details

32 MIAMExpress  Version 1 launch in December 2002  Expected users: Limited local bioinformatic support No LIMS on site Small scale users with custom made arrays  Can be installed as local version: As a lab-book to annotate your experiment As part of a LIMS  Interfaces: Version 1 is general Future versions, application specific interfaces - Species specific - Toxicogenomics specific (ILSI- HESI) MIAMExpress - details

33

34  Load public data into ArrayExpress: TIGR, EMBL, ILSI HESI, DESPRAD partners  Improve query interfaces  Launch MIAMExpress v.1 (Dec.2002)  MIAMExpress v.2: Extended according to the user needs Integrated MGED ontology Increased usability, flexibility and scalability  Develop curation tools ArrayExpress - future

35 Acknowledgments  Microarray Informatics Team at EBI (19 members) : Alvis Brazma (Team Leader and MGED President) Helen Parkinson (Curation Coordinator) Mohammad Shojatalab (MIAMExpress Database Programmer) Ugis Sarkans (ArrayExpress Database development coordinator) Jaak Vilo (Expression Profiler) Curators and Programmers.  MGED members and working groups: Alvis Brazma (MGED President, MIAME) Chris Stoeckert, U. Penn. (MGED Ontology Working Group)

36  Open sources resources: ArrayExpress and MIAMExpress schema-access to code MIAME document and glossary MAGE-ML dtd and annotation examples MGED Ontology and other resources……… www.mged.org / www.ebi.ac.uk/microarray sansone@ebi.ac.uk  Be aware of MIAME ! Nature, Lancet and have already expressed their interest Founding agencies  Join MGED meetings, tutorials and mailing lists: MGED-5 meeting in Japan (Sept. 2002) Ontology for BioSample description, EBI (Nov. 2002) Resources and ….messages


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