Title
Combinatorial Clustering of Residue Position Subsets Predicts Inhibitor Affinity across the Human Kinome.
Abstract
The protein kinases are a large family of enzymes that play fundamental roles in propagating signals within the cell. Because of the high degree of binding site similarity shared among protein kinases, designing drug compounds with high specificity among the kinases has proven difficult. However, computational approaches to comparing the 3-dimensional geometry and physicochemical properties of key binding site residue positions have been shown to be informative of inhibitor selectivity. The Combinatorial Clustering Of Residue Position Subsets (CCORPS) method, introduced here, provides a semi-supervised learning approach for identifying structural features that are correlated with a given set of annotation labels. Here, CCORPS is applied to the problem of identifying structural features of the kinase ATP binding site that are informative of inhibitor binding. CCORPS is demonstrated to make perfect or near-perfect predictions for the binding affinity profile of 8 of the 38 kinase inhibitors studied, while only having overall poor predictive ability for 1 of the 38 compounds. Additionally, CCORPS is shown to identify shared structural features across phylogenetically diverse groups of kinases that are correlated with binding affinity for particular inhibitors; such instances of structural similarity among phylogenetically diverse kinases are also shown to not be rare among kinases. Finally, these function-specific structural features may serve as potential starting points for the development of highly specific kinase inhibitors.
Year
DOI
Venue
2013
10.1371/journal.pcbi.1003087
PLOS COMPUTATIONAL BIOLOGY
Field
DocType
Volume
Protein structure prediction,Protein domain,Binding site,Kinome,Biology,Biochemistry,Ligand (biochemistry),Kinase,Structural similarity,Bioinformatics,Protein structure
Journal
9
Issue
Citations 
PageRank 
6
7
0.48
References 
Authors
17
4
Name
Order
Citations
PageRank
Drew H. Bryant1593.79
Mark Moll288556.55
Paul W. Finn3879.60
Lydia E. Kavraki45370470.50