Login / Signup

Lessons learned from participating in D3R 2016 Grand Challenge 2: compounds targeting the farnesoid X receptor.

Rui DuanXianjin XuXiaoqin Zou
Published in: Journal of computer-aided molecular design (2017)
D3R 2016 Grand Challenge 2 focused on predictions of binding modes and affinities for 102 compounds against the farnesoid X receptor (FXR). In this challenge, two distinct methods, a docking-based method and a template-based method, were employed by our team for the binding mode prediction. For the new template-based method, 3D ligand similarities were calculated for each query compound against the ligands in the co-crystal structures of FXR available in Protein Data Bank. The binding mode was predicted based on the co-crystal protein structure containing the ligand with the best ligand similarity score against the query compound. For the FXR dataset, the template-based method achieved a better performance than the docking-based method on the binding mode prediction. For the binding affinity prediction, an in-house knowledge-based scoring function ITScore2 and MM/PBSA approach were employed. Good performance was achieved for MM/PBSA, whereas the performance of ITScore2 was sensitive to ligand composition, e.g. the percentage of carbon atoms in the compounds. The sensitivity to ligand composition could be a clue for the further improvement of our knowledge-based scoring function.
Keyphrases
  • binding protein
  • protein protein
  • dna binding
  • healthcare
  • molecular dynamics
  • molecularly imprinted
  • small molecule
  • machine learning
  • palliative care
  • drug delivery
  • quality improvement