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Reverse chemical ecology in a moth: machine learning on odorant receptors identifies new behaviorally active agonists.

Authors :
Caballero-Vidal, Gabriela
Bouysset, Cédric
Gévar, Jérémy
Mbouzid, Hayat
Nara, Céline
Delaroche, Julie
Golebiowski, Jérôme
Montagné, Nicolas
Fiorucci, Sébastien
Jacquin-Joly, Emmanuelle
Source :
Cellular & Molecular Life Sciences; Oct2021, Vol. 78 Issue 19/20, p6593-6603, 11p
Publication Year :
2021

Abstract

The concept of reverse chemical ecology (exploitation of molecular knowledge for chemical ecology) has recently emerged in conservation biology and human health. Here, we extend this concept to crop protection. Targeting odorant receptors from a crop pest insect, the noctuid moth Spodoptera littoralis, we demonstrate that reverse chemical ecology has the potential to accelerate the discovery of novel crop pest insect attractants and repellents. Using machine learning, we first predicted novel natural ligands for two odorant receptors, SlitOR24 and 25. Then, electrophysiological validation proved in silico predictions to be highly sensitive, as 93% and 67% of predicted agonists triggered a response in Drosophila olfactory neurons expressing SlitOR24 and SlitOR25, respectively, despite a lack of specificity. Last, when tested in Y-maze behavioral assays, the most active novel ligands of the receptors were attractive to caterpillars. This work provides a template for rational design of new eco-friendly semiochemicals to manage crop pest populations. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
1420682X
Volume :
78
Issue :
19/20
Database :
Complementary Index
Journal :
Cellular & Molecular Life Sciences
Publication Type :
Academic Journal
Accession number :
153315597
Full Text :
https://doi.org/10.1007/s00018-021-03919-2