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ArrayExpress and Expression Atlas: Mining Functional Genomics data. Gabriella Rustici, PhD Functional Genomics Team EBI-EMBL gabry@ebi.ac.uk. What is functional genomics (FG)?. The aim of FG is to understand the function of genes and other parts of the genome
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ArrayExpress and Expression Atlas: Mining Functional Genomics data Gabriella Rustici, PhD Functional Genomics TeamEBI-EMBL gabry@ebi.ac.uk
ArrayExpress What is functional genomics (FG)? • The aim of FG is to understand the function of genes and other parts of the genome • FG experiments typically utilize genome-wide assays to measure and track many genes (or proteins) in parallel under different conditions • High-throughput technologies such as microarrays and high-throughput sequencing (HTS) are frequently used in this field to interrogate the transcriptome
ArrayExpress What biological questions is FG addressing? • When and where are genes expressed? • How do gene expression levels differ in various cell types and states? • What are the functional roles of different genes and in what cellular processes do they participate? • How are genes regulated? • How do genes and gene products interact? • How is gene expression changed in various diseases or following a treatment?
ArrayExpress Components of a FG experiment
ArrayExpress FG public repositories: ArrayExpress • Is a public repository for FG data, which provides easy access to well annotated data in a structured and standardized format • Serves the scientific community as an archive for data supporting publications, together with GEO at NCBI and CIBEX at DDBJ • Facilitates the sharing of experimental information associated with the data such as microarray designs, experimental protocols,…… • Based on community standards: MIAME guidelines & MAGE-TAB format for microarray, MINSEQE guidelines for HTS data (http://www.mged.org/minseqe/)
ArrayExpress Community standards for data requirement • MIAME = Minimal Information About a Microarray Experiment • MINSEQE = Minimal Information about a high-throughput Nucleotide SEQuencing Experiment • The checklist:
MAGE-TAB is a simple spreadsheet format that uses a number of different files to capture information about a microarray or HTS experiments Standards for microarray & sequencingMAGE-TAB format ArrayExpress
ArrayExpress ArrayExpress – two databases
What is the difference between them? ArrayExpress Archive • Central object: experiment • Query to retrieve experimental information and associated data Expression Atlas • Central object: gene/condition • Query for gene expression changes across experiments and across platforms 9 ArrayExpress
ArrayExpress – two databases 10 ArrayExpress
ArrayExpress Archive – when to use it? • Find FG experiments that might be relevant to your research • Download data and re-analyze it. Often data deposited in public repositories can be used to answer different biological questions from the one asked in the original experiments. • Submit microarray or HTS data that you want to publish. Major journals will require data to be submitted to a public repository like ArrayExpress as part of the peer-review process. 11 ArrayExpress
How much data in AE Archive?(as of mid-September 2012) 12 ArrayExpress
HTS data in AE Archive(as of mid-September 2012) Microarray vs HTS RNA-, DNA-, ChIP-seq breakdown 13 ArrayExpress
ArrayExpresswww.ebi.ac.uk/arrayexpress/ 14 ArrayExpress
Browsing the AE Archive The date when the data were loaded in the Archive Number of assays Species investigated Curated title of experiment AE unique experiment ID loaded in Atlas flag Raw sequencing data available in ENA The direct link to raw and processed data. An icon indicates that this type of data is available. The total number of experiments and assay retrieved The list of experiments retrieved can be printed, saved as Tab-delimited format or exported to Excel or as RSS feed 15 ArrayExpress
Browsing the AE Archive 16 ArrayExpress
Searching AE with the Experimental factor ontology (EFO) • Application focused ontology modeling the relationship between experimental factors (EFs) in AE • Developed to: • increase the richness of annotations that are currently made in AE Archive • to promote consistency • to facilitate automatic annotation and integrate external data • EFs are transformed into an ontological representation, forming classes and relationships between those classes • Combine terms from a subset of well-maintained and compatible ontologies, e.g. Gene Ontology, NCBI Taxonomy 17 ArrayExpress
Building EFO An example Take all experimental factors Find the logical connection between them Organize them in an ontology disease disease sarcoma is the parent term [-] neoplasm disease neoplasm cancer is a type of [-] cancer neoplasm cancer neoplasm is synonym of [-] sarcoma disease sarcoma cancer is a type of [-] Kaposi’s sarcoma Kaposi’s sarcoma Kaposi’s sarcoma sarcoma is a type of 18 ArrayExpress
Exploring EFO An example More information at: http://www.ebi.ac.uk/efo 19 ArrayExpress
Searching AE ArchiveSimple query 20 ArrayExpress
AE Archive query output • Matches to exact terms are highlighted in yellow • Matches to synonyms are highlighted in green • Matches to child terms in the EFO are highlighted in pink 21 ArrayExpress
AE Archive – experiment view 22 ArrayExpress
SDRF file – sample & data relationship 23 ArrayExpress
ArrayExpress – two databases 24 ArrayExpress
ArrayExpress Expression Atlas – when to use it? • Find out if the expression of a gene (or a group of genes with a common gene attribute, e.g. GO term) change(s) across all the experiments available in the Expression Atlas; • Discover which genes are differentially expressed in a particular biological condition that you are interested in.
Array (platform) designs relating to the experiment must be provided. Probe annotation must be adequate to enable re-annotation of external references (e.g. Ensembl gene ID, Uniprot ID) At least 3 replicates for each value of the experimental factor Maximum 4 experimental factors Adequate sample annotation using EFO terms Presence of data files: CEL raw data files for Affymetrix assays, processed data files for non-Affymetrix ones Expression Atlas constructionExperiment selection criteria during curation 26 ArrayExpress
Expression AtlasconstructionAnalysispipeline Cond.1 Cond.2 Cond.3 genes Cond.1 Cond.2 Cond.3 Input data (Affy CEL, non-Affy processed) Linear model* (Bio/C Limma) Output: 2-D matrix 1= differentially expressed 0 = not differentially expressed * More information about the statistical methodology: http://nar.oxfordjournals.org/content/38/suppl_1/D690.full 27 ArrayExpress
Expression AtlasconstructionAnalysispipeline “Is gene X differentially expressed in condition 1 in this experiment?” = a single expression value for gene X Cond.1 mean Cond.2 mean Mean of all samples Cond.3 mean Compare and calculate statistic 28 ArrayExpress
Expression Atlasconstruction Exp.1 Cond.1 Cond.2 Cond.3 Statistical test genes Exp. 2 Cond.4 Cond.5 Cond.6 Statistical test genes Cond.X Cond.Y Cond.Z Exp. n Statistical test genes Each experiment has its own “verdict” or “vote” on whether a gene is differentially expressed or not under a certain condition 29 ArrayExpress
Expression Atlas construction Summary of the “verdicts” from different experiments 30 ArrayExpress
Expression Atlas 31 ArrayExpress
Atlas home pagehttp://www.ebi.ac.uk/gxa/ Restrict query by direction of differential expression Query for genes Query for conditions The ‘advanced query’ option allows building more complex queries 32 ArrayExpress
Atlas home pageThe ‘Genes’ and ‘Conditions’ search boxes 33 ArrayExpress
Atlas home pageA single gene query 34 ArrayExpress
Atlas experiment page 36 ArrayExpress
Atlas experiment page – HTS data 37 ArrayExpress
Atlas home pageA ‘Conditions’ only query 38 ArrayExpress
Atlas heatmap view 39 ArrayExpress
Atlas gene-condition query 40 ArrayExpress
Atlas advanced search 41 ArrayExpress
Atlas advanced search 42 ArrayExpress
Atlas advanced search 43 ArrayExpress
A glimpse of what’s coming… “Differential atlas” “Is gene X differentially expressed in condition 1 in this experiment?” = a single expression value for gene X Cond.1 mean Cond.2 mean Mean of all samples Cond.3 mean Compare and calculate statistic 44 ArrayExpress
A glimpse of what’s coming… “Differential atlas” mock-up (1) 45 ArrayExpress
A glimpse of what’s coming… “Differential atlas” mock-up (2) 46 ArrayExpress
A glimpse of what’s coming… “Baseline atlas” • Gene expression in normal tissues, not looking for differentially expressed genes based on different conditions • E.g. “Give me all the genes expressed in normal human kidney” • Can also filter genes by expression level (e.g. FPKM values) • Start with Illumina Body Map 2.0 RNA-seq data • 16 tissues: adrenal, adipose, brain, breast, colon, heart, kidney, liver, lung, lymph, ovary, prostate, skeletal muscle, testes, thyroid, and white blood cells • We are working on something similar for mouse 47 ArrayExpress
A glimpse of what’s coming… “Baseline atlas” mock-up display 48 ArrayExpress
Data submission to AE 49 ArrayExpress
Data submission to AEwww.ebi.ac.uk/microarray/submissions.html 50 ArrayExpress