Protein complexes,big data,machine learning and integrative proteomics: lessons learned over a decade of systematic analysis of protein interaction networks |
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Authors: | Pierre C. Havugimana Pingzhao Hu |
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Affiliation: | 1. Donnelly Centre for Cellular and Biomolecular Research, University of Toronto, Toronto, ON, Canada;2. Department of Molecular Genetics, University of Toronto, Toronto, ON, Canada;3. Department of Biochemistry and Medical Genetics, University of Manitoba, Winnipeg, MB, Canada |
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Abstract: | ![]() Overview: Elucidation of the networks of physical (functional) interactions present in cells and tissues is fundamental for understanding the molecular organization of biological systems, the mechanistic basis of essential and disease-related processes, and for functional annotation of previously uncharacterized proteins (via guilt-by-association or -correlation). After a decade in the field, we felt it timely to document our own experiences in the systematic analysis of protein interaction networks.Areas covered: Researchers worldwide have contributed innovative experimental and computational approaches that have driven the rapidly evolving field of ‘functional proteomics’. These include mass spectrometry-based methods to characterize macromolecular complexes on a global-scale and sophisticated data analysis tools – most notably machine learning – that allow for the generation of high-quality protein association maps. Expert commentary: Here, we recount some key lessons learned, with an emphasis on successful workflows, and challenges, arising from our own and other groups’ ongoing efforts to generate, interpret and report proteome-scale interaction networks in increasingly diverse biological contexts. |
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Keywords: | Macromolecular complex functional proteomics interactome machine learning mass spectrometry network prediction protein interaction scoring systems biology |
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