Predicting protein-protein interactions on a proteome scale by matching evolutionary and structural similarities at interfaces using PRISM

被引:0
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作者
Nurcan Tuncbag
Attila Gursoy
Ruth Nussinov
Ozlem Keskin
机构
[1] Center for Computational Biology and Bioinformatics,Department of Human Genetics and Molecular Medicine
[2] College of Engineering,undefined
[3] Koc University,undefined
[4] Rumelifeneri Yolu,undefined
[5] Basic Science Program,undefined
[6] SAIC-Frederick Inc.,undefined
[7] Center for Cancer Research Nanobiology Program,undefined
[8] NCI-Frederick,undefined
[9] Sackler Institute of Molecular Medicine,undefined
[10] Sackler School of Medicine,undefined
[11] Tel Aviv University,undefined
来源
Nature Protocols | 2011年 / 6卷
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摘要
Prediction of protein-protein interactions at the structural level on the proteome scale is important because it allows prediction of protein function, helps drug discovery and takes steps toward genome-wide structural systems biology. We provide a protocol (termed PRISM, protein interactions by structural matching) for large-scale prediction of protein-protein interactions and assembly of protein complex structures. The method consists of two components: rigid-body structural comparisons of target proteins to known template protein-protein interfaces and flexible refinement using a docking energy function. The PRISM rationale follows our observation that globally different protein structures can interact via similar architectural motifs. PRISM predicts binding residues by using structural similarity and evolutionary conservation of putative binding residue 'hot spots'. Ultimately, PRISM could help to construct cellular pathways and functional, proteome-scale annotation. PRISM is implemented in Python and runs in a UNIX environment. The program accepts Protein Data Bank–formatted protein structures and is available at http://prism.ccbb.ku.edu.tr/prism_protocol/.
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页码:1341 / 1354
页数:13
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