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Monte Carlo on the manifold and MD refinement for binding pose prediction of protein-ligand complexes: 2017 D3R Grand Challenge.

Mikhail IgnatovCong LiuAndrey AlekseenkoZhuyezi SunDzmitry PadhornySergei KotelnikovAndrey KazennovIvan GrebenkinYaroslav KholodovIstvan KolosvariAlberto PerezKen DillDima Kozakov
Published in: Journal of computer-aided molecular design (2018)
Manifold representations of rotational/translational motion and conformational space of a ligand were previously shown to be effective for local energy optimization. In this paper we report the development of the Monte-Carlo energy minimization approach (MCM), which uses the same manifold representation. The approach was integrated into the docking pipeline developed for the current round of D3R experiment, and according to D3R assessment produced high accuracy poses for Cathepsin S ligands. Additionally, we have shown that (MD) refinement further improves docking quality. The code of the Monte-Carlo minimization is freely available at https://bitbucket.org/abc-group/mcm-demo .
Keyphrases
  • monte carlo
  • molecular dynamics
  • protein protein
  • molecular dynamics simulations
  • working memory
  • small molecule
  • binding protein
  • quality improvement
  • high speed
  • dna binding
  • amino acid
  • high resolution