Abstract

The voltage trace of neuronal activities can follow multiple timescale dynamics that arise from correlated membrane conductances. Such processes can result in power-law behavior in which the membrane voltage cannot be characterized with a single time constant. The emergent effect of these membrane correlations is a non-Markovian process that can be modeled with a fractional derivative. A fractional derivative is a non-local process in which the value of the variable is determined by integrating a temporal weighted voltage trace, also called the memory trace. Here we developed and analyzed a fractional leaky integrate-and-fire model in which the exponent of the fractional derivative can vary from 0 to 1, with 1 representing the normal derivative. As the exponent of the fractional derivative decreases, the weights of the voltage trace increase. Thus, the value of the voltage is increasingly correlated with the trajectory of the voltage in the past. By varying only the fractional exponent, our model can reproduce upward and downward spike adaptations found experimentally in neocortical pyramidal cells and tectal neurons in vitro. The model also produces spikes with longer first-spike latency and high inter-spike variability with power-law distribution. We further analyze spike adaptation and the responses to noisy and oscillatory input. The fractional model generates reliable spike patterns in response to noisy input. Overall, the spiking activity of the fractional leaky integrate-and-fire model deviates from the spiking activity of the Markovian model and reflects the temporal accumulated intrinsic membrane dynamics that affect the response of the neuron to external stimulation.

Highlights

  • The leaky integrator properties of a neuron are determined by the membrane resistance and capacitance which define a single time constant for the membrane voltage dynamics [1,2,3]

  • When spike time adaptation occurs over multiple time scales, the dynamics can be described by a power-law

  • We study the computational properties of a leaky integrate-and-fire model with power-law adaptation

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Summary

Introduction

The leaky integrator properties of a neuron are determined by the membrane resistance and capacitance which define a single time constant for the membrane voltage dynamics [1,2,3]. The voltage trace of real neurons can follow multiple timescale dynamics [4,5,6] that arise from the interaction of multiple active membrane conductances [7,8,9,10,11] Such processes can result in power-law behavior in which the membrane voltage cannot be characterized with a single time constant [5,12,13,14,15]. A fractional derivative represents a non-local process [32,33,34] in which the value of the variable is determined by integrating a temporal weighted voltage trace, called the memory trace. The value of the voltage is increasingly correlated with the trajectory of the voltage in the past

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