4.5 Article

Redefining the Protein Kinase Conformational Space with Machine Learning

Journal

CELL CHEMICAL BIOLOGY
Volume 25, Issue 7, Pages 916-+

Publisher

CELL PRESS
DOI: 10.1016/j.chembiol.2018.05.002

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Funding

  1. NIH [R01 GM108911, U54 OD020353]
  2. National Institute of General Medical Sciences Integrated Pharmacological Sciences Training Program [T32 GM062754]

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Protein kinases are dynamic, adopting different conformational states that are critical for their catalytic activity. We assess a range of structural features derived from the conserved alpha C helix and DFG motif to define the conformational space of the catalytic domain of protein kinases. We then construct Kinformation, a random forest classifier, to annotate the conformation of 3,708 kinase structures in the PDB. Our classification scheme captures known active and inactive kinase conformations and defines an additional conformational state, thereby refining the current understanding of the kinase conformational space. Furthermore, network analysis of the small molecules recognized by each conformation captures chemical substructures that are associated with each conformation type. Our description of the kinase conformational space is expected to improve modeling of protein kinase structures, as well as guide the development of conformation-specific kinase inhibitors with optimal pharmacological profiles.

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