Login / Signup

Agonists of G-Protein-Coupled Odorant Receptors Are Predicted from Chemical Features.

C BushdidC A de MarchSébastien FiorucciH MatsunamiJerome Golebiowski
Published in: The journal of physical chemistry letters (2018)
Predicting the activity of chemicals for a given odorant receptor is a longstanding challenge. Here the activity of 258 chemicals on the human G-protein-coupled odorant receptor (OR)51E1, also known as prostate-specific G-protein-coupled receptor 2 (PSGR2), was virtually screened by machine learning using 4884 chemical descriptors as input. A systematic control by functional in vitro assays revealed that a support vector machine algorithm accurately predicted the activity of a screened library. It allowed us to identify two novel agonists in vitro for OR51E1. The transferability of the protocol was assessed on OR1A1, OR2W1, and MOR256-3 odorant receptors, and, in each case, novel agonists were identified with a hit rate of 39-50%. We further show how ligands' efficacy is encoded into residues within OR51E1 cavity using a molecular modeling protocol. Our approach allows widening the chemical spaces associated with odorant receptors. This machine-learning protocol based on chemical features thus represents an efficient tool for screening ligands for G-protein-coupled odorant receptors that modulate non-olfactory functions or, upon combinatorial activation, give rise to our sense of smell.
Keyphrases
  • machine learning
  • randomized controlled trial
  • deep learning
  • prostate cancer
  • endothelial cells
  • artificial intelligence
  • big data
  • high throughput
  • single cell
  • binding protein
  • benign prostatic hyperplasia