Subthreshold signal encoding in coupled FitzHugh-Nagumo neurons
Maria Masoliver, Cristina Masoller

TL;DR
This study demonstrates that coupled FitzHugh-Nagumo neurons can robustly encode subthreshold signals through spike pattern probabilities, with a second neuron enhancing detection by lowering firing thresholds.
Contribution
It reveals how neuronal coupling preserves and enhances subthreshold signal encoding, extending understanding beyond isolated neuron responses.
Findings
Signal encoding is robust in coupled neurons.
The second neuron facilitates detection by lowering firing thresholds.
Pattern probabilities vary with signal period, peaking near the mean firing period.
Abstract
Despite intensive research, the mechanisms underlying how neurons encode external inputs remain poorly understood. Recent work has focused on the response of a single neuron to a weak, subthreshold periodic signal. By simulating the FitzHugh-Nagumo stochastic model and then using a symbolic method to analyze the firing activity of the neuron, preferred and infrequent spike patterns (defined by the relative timing of the spikes) were detected, whose probabilities encode information about the signal. As not individual neurons in isolation but neuronal populations are responsible for the emergence of complex behaviors, a relevant question is whether this coding mechanism is robust when the neuron is not isolated. We study how a second neuron, which does not perceive the subthreshold signal, affects the detection and the encoding of the signal, done by the first neuron. Through simulations…
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