Large-scale Prediction of Yeast Gene Function Introduction to Bio-Informatics 236523 Winter 2010-2011 Roi Adadi Naama Kraus

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Presentation transcript:

Large-scale Prediction of Yeast Gene Function Introduction to Bio-Informatics Winter Roi Adadi Naama Kraus

Main Question Predict the function of hypothetical proteins which are inferred by genome sequencing Annotate proteins at one of possible three levels ◦ Function ◦ Biological process ◦ Cellular localization

Process Cluster the gene expressions using EPCLUST Two possible directions: Direction 1 ◦ Choose some "nice" cluster (e.g. a tied cluster) ◦ Identify a common function F using GO ◦ Search for hypothetical proteins in the cluster ◦ Predict their function as F ◦ Validate the prediction using other methods  Use Blast to search for homologous proteins, do they contain F ?  Use Meme/Pfam to identify a common Motif/Domain, does it relate to F ?

Process – cont’d Direction 2 ◦ Decide on some function of interest and search for a cluster where this function is common  Identify a cluster with a significant localization function  Look for a significant motif/domain in the mRNA UTRs of the sequences in the cluster using MEME/Pfam  Search the motif/domain in other proteins, do they localize at the same location ?