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GWOVina: A grey wolf optimization approach to rigid and flexible receptor docking.

Kin Meng WongHio Kuan TaiShirley Weng In Siu
Published in: Chemical biology & drug design (2020)
Protein-ligand docking programs are indispensable tools for predicting the binding pose of a ligand to the receptor protein. In this paper, we introduce an efficient flexible docking method, GWOVina, which is a variant of the Vina implementation using the grey wolf optimizer (GWO) and random walk for the global search, and the Dunbrack rotamer library for side-chain sampling. The new method was validated for rigid and flexible-receptor docking using four independent datasets. In rigid docking, GWOVina showed comparable docking performance to Vina in terms of ligand pose RMSD, success rate, and affinity prediction. In flexible-receptor docking, GWOVina has improved success rate compared to Vina and AutoDockFR. It ran 2 to 7 times faster than Vina and 40 to 100 times faster than AutoDockFR. Therefore, GWOVina can play a role in solving the complex flexible-receptor docking cases and is suitable for virtual screening of compound libraries. GWOVina is freely available at https://cbbio.cis.um.edu.mo/software/gwovina for testing.
Keyphrases
  • protein protein
  • molecular dynamics
  • molecular dynamics simulations
  • small molecule
  • binding protein
  • primary care
  • multiple sclerosis
  • transcription factor
  • single cell
  • rna seq
  • data analysis