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Modelling, comparison, and analysis of proteomes Ram Samudrala University of Washington What is a “proteome”? All proteins of a particular system (organelle, cell, organism) What does it mean to “model a proteome”? For any protein, we wish to: ANNOTATION { - figure out what it looks like (structure or form) - understand what it does (function) Repeat for all proteins in a system Understand the relationships between all of them } EXPRESSION + INTERACTION Why should we model proteomes? Intellectual challenge: Because it’s there! ? Pragmatic reasons: - rational drug design and treatment of disease - protein and genetic engineering - build networks to model cellular pathways - study organismal function and evolution Computational aspects of functional genomics structure based methods microenvironment analysis Bioverse structure comparison * * * * * zinc binding site? homology * function? + sequence based methods sequence comparison motif searches phylogenetic profiles domain fusion analyses + experimental data single molecule + genomic/proteomic assign function to entire protein space Bioverse – explore relationships among molecules and systems http://bioverse.compbio.washington.edu Jason McDermott Bioverse – explore relationships among molecules and systems Jason Mcdermott Bioverse – prediction of protein interaction networks Target proteome Interacting protein database 85% protein α experimentally determined interaction protein A predicted interaction protein β protein B 90% Assign confidence based on similarity and strength of interaction Jason Mcdermott Bioverse – M. tuberculosis predicted protein interaction network Jason McDermott Bioverse – E. coli predicted protein interaction network Jason McDermott Bioverse – V. cholerae predicted protein interaction network Jason McDermott Bioverse – C. elegans predicted protein interaction network Jason McDermott Bioverse – H. sapiens predicted protein interaction network Jason McDermott Bioverse – organisation of the interaction networks Ci = 2n/ki(ki-1) Jason McDermott Bioverse – viewer Aaron Chang Take home message Prediction of protein structure and function can be used to model whole genomes to understand organismal function and evolution Acknowledgements Aaron Chang Ashley Lam Ekachai Jenwitheesuk Gong Cheng Jason McDermott Kai Wang Ling-Hong Hung Lynne Townsend Marissa LaMadrid Mike Inouye Stewart Moughon Shing-Chung Ngan Yi-Ling Cheng Zach Frazier