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Tutorial 7 Gene expression analysis 1
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Expression data –GEO –UCSC –ArrayExpress General clustering methods –Unsupervised Clustering Hierarchical clustering K-means clustering Tools for clustering –EPCLUST –Mev Functional analysis –Go annotation 2
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Gene expression data sources 3 MicroarraysRNA-seq experiments
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Expression Data Matrix Each column represents all the gene expression levels from a single experiment. Each row represents the expression of a gene across all experiments. Exp1Exp 2Exp3Exp4Exp5Exp6 Gene 1-1.2-2.1-3-1.51.82.9 Gene 22.70.2-1.11.6-2.2-1.7 Gene 3-2.51.5-0.1-1.10.1 Gene 42.92.62.5-2.3-0.1-2.3 Gene 50.12.62.22.7-2.1 Gene 6-2.9-1.9-2.4-0.1-1.92.9 4
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Expression Data Matrix Each element is a log ratio: log 2 (T/R). T - the gene expression level in the testing sample R - the gene expression level in the reference sample Exp1Exp 2Exp3Exp4Exp5Exp6 Gene 1-1.2-2.1-3-1.51.82.9 Gene 22.70.2-1.11.6-2.2-1.7 Gene 3-2.51.5-0.1-1.10.1 Gene 42.92.62.5-2.3-0.1-2.3 Gene 50.12.62.22.7-2.1 Gene 6-2.9-1.9-2.4-0.1-1.92.9 5
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Expression Data Matrix Black indicates a log ratio of zero, i.e. T=~R Green indicates a negative log ratio, i.e. T<R Red indicates a positive log ratio, i.e. T>R Grey indicates missing data 6
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Exp Log ratio Exp Log ratio Microarray Data: Different representations T<R T>R 7
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8 How to search for expression profiles GEO (Gene Expression Omnibus) http://www.ncbi.nlm.nih.gov/geo/ Human genome browser http://genome.ucsc.edu/ ArrayExpress http://www.ebi.ac.uk/arrayexpress/
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Datasets - suitable for analysis with GEO tools Expression profiles by gene Microarray experiments Probe sets Groups of related microarray experiments 10 Searching for expression profiles in the GEO
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Download dataset Clustering Statistic analysis 11
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Clustering analysis 12
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Download dataset Clustering Statistic analysis 13
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14 The expression distribution for different lines in the cluster
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Searching for expression profiles in the Human Genome browser. 15
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Keratine 10 is highly expressed in skin 16
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17 http://www.ebi.ac.uk/arrayexpress/ ArrayExpress
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22 How to analyze gene expression data
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Unsupervised Clustering - Hierarchical Clustering 23
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genes with similar expression patterns are grouped together and are connected by a series of branches (dendrogram). 1 6 3 5 2 4 1 6 3 52 4 24 Leaves (shapes in our case) represent genes and the length of the paths between leaves represents the distances between genes. Hierarchical Clustering
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How to determine the similarity between two genes? (for clustering) Patrik D'haeseleer, How does gene expression clustering work?, Nature Biotechnology 23, 1499 - 1501 (2005), http://www.nature.com/nbt/journal/v23/n12/full/nbt1205-1499.html 25
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26 If we want a certain number of clusters we need to cut the tree at a level indicates that number (in this case - four). Hierarchical clustering finds an entire hierarchy of clusters.
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Hierarchical clustering result 27 Five clusters
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An algorithm to classify the data into K number of groups. 28 K=4 Unsupervised Clustering – K-means clustering
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How does it work? 29 The algorithm divides iteratively the genes into K groups and calculates the center of each group. The results are the optimal groups (center distances) for K clusters. 1234 k initial "means" (in this casek=3) are randomly selected from the data set (shown in color). k clusters are created by associating every observation with the nearest mean The centroid of each of the k clusters becomes the new means. Steps 2 and 3 are repeated until convergence has been reached.
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30 How should we determine K? Trial and error Take K as square root of gene number
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31 http://www.bioinf.ebc.ee/EP/EP/EPCLUST/ Tools for clustering - EPclust
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Edit the input matrix: Transpose,Normalize,Randomize 38 Hierarchical clustering K-means clustering In the input matrix each column should represents a gene and each row should represent an experiment (or individual).
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39 Hierarchical clustering In the input matrix each column should represents a gene and each row should represent an experiment (or individual).
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40 Clusters Data
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41 K-means clustering In the input matrix each column should represents a gene and each row should represent an experiment (or individual).
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Graphical representation of the cluster Samples found in cluster 42
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10 clusters, as requested 43
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44 http://www.tm4.org/mev/ Tools for clustering - MeV
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45 1007_s_at 1053_at 117_at 121_at 1255_g_at 1294_at 1316_at 1320_at 1405_i_at 1431_at 1438_at 1487_at 1494_f_at 1598_g_at What can we learn from clusters? Gene expression function analysis
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Gene Ontology (GO) http://www.geneontology.org/ The Gene Ontology project provides an ontology of defined terms representing gene product properties. The ontology covers three domains:
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47 Cellular Component (CC) - the parts of a cell or its extracellular environment. Molecular Function (MF) - the elemental activities of a gene product at the molecular level, such as binding or catalysis. Biological Process (BP) - operations or sets of molecular events with a defined beginning and end, pertinent to the functioning of integrated living units: cells, tissues, organs, and organisms. Gene Ontology (GO)
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The GO tree
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GO sources ISSInferred from Sequence/Structural Similarity IDAInferred from Direct Assay IPI Inferred from Physical Interaction TASTraceable Author Statement NASNon-traceable Author Statement IMPInferred from Mutant Phenotype IGIInferred from Genetic Interaction IEPInferred from Expression Pattern ICInferred by Curator NDNo Data available IEAInferred from electronic annotation
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Search by AmiGO
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Results for alpha-synuclein
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DAVID Functional Annotation Bioinformatics Microarray Analysis Identify enriched biological themes, particularly GO terms Discover enriched functional-related gene/protein groups Cluster redundant annotation terms Explore gene names in batch http://david.abcc.ncifcrf.gov/
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ID conversion annotation classification
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Functional annotation Upload Annotation options
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Gene expression analysis Expression data –GEO –UCSC –ArrayExpress General clustering methods –Unsupervised Clustering Hierarchical clustering K-means clustering Tools for clustering –EPCLUST –Mev Functional analysis –Go annotation 57
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