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Large-Scale G Protein-Coupled Olfactory Receptor-Ligand Pairing.

Xiaojing CongWenwen RenJody PacalonRui XuLun XuXuewen LiClaire A de MarchHiroaki MatsunamiHongmeng YuYiqun YuJerome Golebiowski
Published in: ACS central science (2022)
G protein-coupled receptors (GPCRs) conserve common structural folds and activation mechanisms, yet their ligand spectra and functions are highly diverse. This work investigated how the amino-acid sequences of olfactory receptors (ORs)-the largest GPCR family-encode diversified responses to various ligands. We established a proteochemometric (PCM) model based on OR sequence similarities and ligand physicochemical features to predict OR responses to odorants using supervised machine learning. The PCM model was constructed with the aid of site-directed mutagenesis, in vitro functional assays, and molecular simulations. We found that the ligand selectivity of the ORs is mostly encoded in the residues up to 8 Å around the orthosteric pocket. Subsequent predictions using Random Forest (RF) showed a hit rate of up to 58%, as assessed by in vitro functional assays of 111 ORs and 7 odorants of distinct scaffolds. Sixty-four new OR-odorant pairs were discovered, and 25 ORs were deorphanized here. The best model demonstrated a 56% deorphanization rate. The PCM-RF approach will accelerate OR-odorant mapping and OR deorphanization.
Keyphrases
  • machine learning
  • amino acid
  • high throughput
  • wastewater treatment
  • climate change
  • crispr cas
  • high resolution
  • molecular dynamics
  • high density
  • single molecule
  • structural basis