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Machine Learning Assisted Approach for Finding Novel High Activity Agonists of Human Ectopic Olfactory Receptors.

Publication ,  Journal Article
Jabeen, A; de March, CA; Matsunami, H; Ranganathan, S
Published in: Int J Mol Sci
October 26, 2021

Olfactory receptors (ORs) constitute the largest superfamily of G protein-coupled receptors (GPCRs). ORs are involved in sensing odorants as well as in other ectopic roles in non-nasal tissues. Matching of an enormous number of the olfactory stimulation repertoire to its counterpart OR through machine learning (ML) will enable understanding of olfactory system, receptor characterization, and exploitation of their therapeutic potential. In the current study, we have selected two broadly tuned ectopic human OR proteins, OR1A1 and OR2W1, for expanding their known chemical space by using molecular descriptors. We present a scheme for selecting the optimal features required to train an ML-based model, based on which we selected the random forest (RF) as the best performer. High activity agonist prediction involved screening five databases comprising ~23 M compounds, using the trained RF classifier. To evaluate the effectiveness of the machine learning based virtual screening and check receptor binding site compatibility, we used docking of the top target ligands to carefully develop receptor model structures. Finally, experimental validation of selected compounds with significant docking scores through in vitro assays revealed two high activity novel agonists for OR1A1 and one for OR2W1.

Duke Scholars

Published In

Int J Mol Sci

DOI

EISSN

1422-0067

Publication Date

October 26, 2021

Volume

22

Issue

21

Location

Switzerland

Related Subject Headings

  • User-Computer Interface
  • Support Vector Machine
  • Receptors, Odorant
  • Molecular Docking Simulation
  • Male
  • Machine Learning
  • Ligands
  • In Vitro Techniques
  • Humans
  • HEK293 Cells
 

Citation

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Jabeen, A., de March, C. A., Matsunami, H., & Ranganathan, S. (2021). Machine Learning Assisted Approach for Finding Novel High Activity Agonists of Human Ectopic Olfactory Receptors. Int J Mol Sci, 22(21). https://doi.org/10.3390/ijms222111546
Jabeen, Amara, Claire A. de March, Hiroaki Matsunami, and Shoba Ranganathan. “Machine Learning Assisted Approach for Finding Novel High Activity Agonists of Human Ectopic Olfactory Receptors.Int J Mol Sci 22, no. 21 (October 26, 2021). https://doi.org/10.3390/ijms222111546.
Jabeen A, de March CA, Matsunami H, Ranganathan S. Machine Learning Assisted Approach for Finding Novel High Activity Agonists of Human Ectopic Olfactory Receptors. Int J Mol Sci. 2021 Oct 26;22(21).
Jabeen, Amara, et al. “Machine Learning Assisted Approach for Finding Novel High Activity Agonists of Human Ectopic Olfactory Receptors.Int J Mol Sci, vol. 22, no. 21, Oct. 2021. Pubmed, doi:10.3390/ijms222111546.
Jabeen A, de March CA, Matsunami H, Ranganathan S. Machine Learning Assisted Approach for Finding Novel High Activity Agonists of Human Ectopic Olfactory Receptors. Int J Mol Sci. 2021 Oct 26;22(21).

Published In

Int J Mol Sci

DOI

EISSN

1422-0067

Publication Date

October 26, 2021

Volume

22

Issue

21

Location

Switzerland

Related Subject Headings

  • User-Computer Interface
  • Support Vector Machine
  • Receptors, Odorant
  • Molecular Docking Simulation
  • Male
  • Machine Learning
  • Ligands
  • In Vitro Techniques
  • Humans
  • HEK293 Cells