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Basic features for portal users Agenda - Basic features • Overview – features and navigation • Browsing data – Files and Samples • Gene Summary pages • Performing Analyses on the portal – Co-expression, differential expression, GSEA • Managing your shelf Overview - portal home page http://www.humanimmunology.org/cchi Overview - organization The portal data is organized around 4 main concepts • Laboratories (aka projects) • Studies (aka experiments) • Data Sets • Files Access control is organized around • Users • Groups http://www.humanimmunology.org/cchi Overview - Labs and Studies • Laboratories – Have defined ‘curator’ groups and ‘reader’ groups – Contain zero or more studies • Studies – Represent a collection of data assembled to answer a question – Contain zero or more datasets – ‘Reader’ groups are a subset of their Lab’s reader groups Overview - Datasets and Files • Datasets – All data is of one type (gene expression, CN, etc) – Multiple datasets of the same type is OK – contain zero or more files – ‘reader’ groups are a subset of their Study’s reader groups • Files – The basic unit of data in the portal – May be any format unrecognized formats may not be analyzed but may be shared and downloadable Overview - Laboratories/projects http://www.humanimmunology.org/cchi Browsing data • Sharing Data – You can see (and download) any data files you can see – Filter data types with the checkboxes on top • Page Info – At the top of most pages - brief help for the page • My Shelf – Save datasets to your shelf for later (re)use Browsing data Browsing Samples • Interactive browser of sample annotations • Filter samples based on phenotypic information provided • Thumb-scrollers for numeric data Exercise 1. Browse the portal 1. Go to the portal in a web browser http://www.humanimmunology.org/cchi 2. Login/register if needed 3. Click on the ‘BROWSE’ menu item Then the ‘DATA’ submenu 4. Uncheck the ‘Sample annotation’ and ‘undefined’ filter checkboxes 5. Click on the ‘BROWSE’ menu item again then the ‘SAMPLES’ submenu 6. Select a dataset to browse 7. Experiment with filtering options Gene Summary Pages • • • • Provide an overview of the information about a gene Heatmaps showing expression in the datasets that you can see Gene description (from Entrez), links to COSMIC Optional – Display summaries of mutations - if any are loaded in the portal – Display plot of copy number by expression - requires paired CN and expression samples & linking ids Gene Search • Enter a gene name in the search box on the home page or near the menus • Multiple hits indicates multiple species (we’ll make this more explicit in a later version) click Gene Summary Pages Exercise 2. Review your favorite gene 1. Enter a gene name in the search box e.g. EGFR, FGFR3 2. Click a gene name on the results page 3. Review the gene summary page Performing Analyses • The portal is built to allow non-computational biologists to perform many common analyses – Look for co-expressed genes – Look for differentially expressed genes – Look for gene set enrichment • Analyses are performed by a GenePattern server using its modules Co-expression -> Gene Neighbors Diff. Expression -> Comparative Marker Selection Gene Set enrichment -> GSEA Performing Analyses - details • Analysis parameter defaults are set by the portal curator – These are set portal-wide • To change the parameters and/or assumptions, download the data and analyze it in GenePattern directly • Detailed descriptions of the analyses, how to run them, and default parameters are available on the help menu – Text tutorials for all – Video tutorials for some Performing Analyses - help Co-expression • Find genes with similar gene expression profiles to a particular gene • You provide a gene and select a dataset • An analysis is launched to detect the 20 most correlated genes in the dataset using Pearson Correlation • The analysis displays a heat map – This is a java applet, you must tell your browser to ‘allow’ it when asked or you will not see it – The heat map viewer can be ‘popped’ out of the browser to allow you to see more detail – Menus (on the viewer) provide numerous other options to explore Co-expression Co-expression results Exercise 3. Find co-expressed genes 1. Go to the portal home page 2. Select the ‘Analyses’ menu 3. Select the GeneNeighbors button, click ‘Next step’ 4. Enter a gene name (e.g. EGFR), click ‘Select Gene Symbol’ 5. Click the gene name (if needed), click ‘Select Data Set’ 6. Select ‘YFV_2008…’, click ‘Select Probe’ 7. Click ‘Run Analysis’ Differential expression • This looks for genes whose expression levels vary between 2 conditions • Select a dataset, then define 2 classes based on the sample annotations • An analysis is launched to detect the 20 top ranked genes in each direction using 2-sided SNR (median) and 1000 permutations • The analysis displays a heat map and a table with the genes and their significance – This heatmap is just an image, not an applet Differential expression Differential expression results Exercise 4. differentially expressed genes 1. Go to the portal home page 2. Select the ‘Analyses’ menu 3. Select the Comparative Marker Selection button, click ‘Next step’ 4. Create a Sample Set, Select ‘YFV_2008…’, click ‘Create Sample Set’ 5. For Class 1, Click ‘Tcell activation’ and the range 0.49-1.6 6. For Class 2, Click ‘Tcell activation’ and the range 9-12.1 7. Enter a name and description, 8. Click ‘Run Analysis’ 9. Open results from ‘My Shelf’ when complete Gene Set Enrichment Analysis • Sometimes no individual genes are significantly differentially expressed • We improve statistical power by comparing gene sets • Example: human diabetes – No single gene significant – GSEA was used to assess enrichment of 149 gene sets including 113 pathways from internal curation and GenMAPP, and 36 tightly coexpressed clusters from a compendium of mouse gene expression data. These GSEA results appeared in Mootha et al. Nature Genetics 15 June 2003, vol. 34 no. 3 pp 267 – 273: Skeletal muscle biopsies Normal Diabetic • Rank genes according to their “correlation” with the class of interest. • Test if a gene set (e.g., a GO category, a pathway, a different class signature), “enriches” any of the classes. • Use Kolmogorov-Smirnoff score to measure enrichment. Phenotype Ordered Marker List Subramanian et al., PNAS 2005 Gene Set G Enrichment Score S Enrichment: KS-score Max. Enrichment Score ES Gene List Order Index hit (member of G) miss (non-member of G) Mootha et al., Nature Genetics 2004 Enrichment: KS-score Max. Enrichment Score ES Un-enriched Gene Set Enrichment Score S Enrichment Score S Enriched Gene Set Gene List Order Index Max. Enrichment Score ES Gene List Order Index Every hit go up by 1/NH Every miss go down by 1/NM The maximum height provides the enrichment score Performing GSEA • Like differential expression, select a dataset and define classes • GSEA uses the c2 curated gene sets representing metabolic and signaling pathways (http://www.broadinstitute.org/gsea/msigdb) GSEA Results Exercise 5. GSEA 1. Go to the portal home page 2. Select the ‘Analyses’ menu 3. Select the GSEA button, click ‘Next step’ 4. Create a Sample Set, Select ‘YFV_2008…’, click ‘Create Sample Set’ 5. For Class 1, Click ‘neutralizing antibody titer’ and the range 482-1280 6. For Class 2, Click ‘neutralizing antibody titer’ and the range 20-280 7. Enter a name and description, 8. Click ‘Run Analysis’ 9. Open results from ‘My Shelf’ when complete Managing ‘My Shelf’ http://www.humanimmunology.org/cchi Exercise 6. Review your shelf 1. Click on the ‘My Shelf’ button at the top right 2. Click on the ‘Analyses’ tab -Review the analyses you did earlier - revisit the results 3. Click on the ‘Sample Sets’ tab Review the Sample Sets you created for CMS, GSEA 4. Click on the ‘Profile’ tab Review your email and group memberships Review of Basic Features •Overview –features and navigation •Browsing data –Files and Samples •Gene Summary pages •Performing Analyses on the portal –Co-expression, differential expression, GSEA •Managing your shelf