journal.pcbi.1006536.pdf (2.14 MB)
Odorant mixtures elicit less variable and faster responses than pure odorants
journal contribution
posted on 2023-06-12, 07:27 authored by Ho Ka Chan, Fabian Hersperger, Emiliano Marachlian, Brian H Smith, Fernando Locatelli, Paul Szyszka, Thomas NowotnyThomas NowotnyIn natural environments, odors are typically mixtures of several different chemical compounds. However, the implications of mixtures for odor processing have not been fully investigated. We have extended a standard olfactory receptor model to mixtures and found through its mathematical analysis that odorant-evoked activity patterns are more stable across concentrations and first-spike latencies of receptor neurons are shorter for mixtures than for pure odorants. Shorter first-spike latencies arise from the nonlinear dependence of binding rate on odorant concentration, commonly described by the Hill coefficient, while the more stable activity patterns result from the competition between different ligands for receptor sites. These results are consistent with observations from numerical simulations and physiological recordings in the olfactory system of insects. Our results suggest that mixtures allow faster and more reliable olfactory coding, which could be one of the reasons why animals often use mixtures in chemical signaling.
History
Publication status
- Published
File Version
- Published version
Journal
PLoS Computational BiologyISSN
1553-734XPublisher
Public Library of ScienceExternal DOI
Issue
12Volume
14Page range
1-27Article number
e1006536Department affiliated with
- Informatics Publications
Research groups affiliated with
- Centre for Computational Neuroscience and Robotics Publications
- Sussex Neuroscience Publications
Full text available
- Yes
Peer reviewed?
- Yes