Identification of Bifurcations from Observations of Noisy Biological Oscillators.

TitleIdentification of Bifurcations from Observations of Noisy Biological Oscillators.
Publication TypeJournal Article
Year of Publication2016
AuthorsSalvi JD, Maoiléidigh DÓ, Hudspeth AJ
JournalBiophys J
Volume111
Issue4
Pagination798-812
Date Published2016 Aug 23
ISSN1542-0086
KeywordsAnimals, Biological Clocks, Biomechanical Phenomena, Hair Cells, Auditory, Models, Biological, Rana catesbeiana, Signal-To-Noise Ratio
Abstract

Hair bundles are biological oscillators that actively transduce mechanical stimuli into electrical signals in the auditory, vestibular, and lateral-line systems of vertebrates. A bundle's function can be explained in part by its operation near a particular type of bifurcation, a qualitative change in behavior. By operating near different varieties of bifurcation, the bundle responds best to disparate classes of stimuli. We show how to determine the identity of and proximity to distinct bifurcations despite the presence of substantial environmental noise. Using an improved mechanical-load clamp to coerce a hair bundle to traverse different bifurcations, we find that a bundle operates within at least two functional regimes. When coupled to a high-stiffness load, a bundle functions near a supercritical Hopf bifurcation, in which case it responds best to sinusoidal stimuli such as those detected by an auditory organ. When the load stiffness is low, a bundle instead resides close to a subcritical Hopf bifurcation and achieves a graded frequency response-a continuous change in the rate, but not the amplitude, of spiking in response to changes in the offset force-a behavior that is useful in a vestibular organ. The mechanical load in vivo might therefore control a hair bundle's responsiveness for effective operation in a particular receptor organ. Our results provide direct experimental evidence for the existence of distinct bifurcations associated with a noisy biological oscillator, and demonstrate a general strategy for bifurcation analysis based on observations of any noisy system.

DOI10.1016/j.bpj.2016.07.027
Alternate JournalBiophys. J.
PubMed ID27558723
PubMed Central IDPMC5002087
Grant ListF30 DC013468 / DC / NIDCD NIH HHS / United States
T32 GM007739 / GM / NIGMS NIH HHS / United States

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