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Interspike Interval Correlations, Memory, Adaptation, and Refractoriness in a Leaky Integrate-and-Fire Model with Threshold Fatigue

机译:带有阈值疲劳的泄漏集成火灾模型中的尖峰间隔相关性,记忆,适应性和耐火性

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摘要

Neuronal adaptation as well as interdischarge interval correlations have been shown to be functionally important properties of physiological neurons. We explore the dynamics of a modified leaky integrate-and-fire (LIF) neuron, referred to as the LIF with threshold fatigue, and show that it reproduces these properties. In this model, the postdischarge threshold reset depends on the preceding sequence of discharge times. We show that in response to various classes of stimuli, namely, constant currents, step currents, white gaussian noise, and sinusoidal currents, the model exhibits new behavior compared with the standard LIF neuron. More precisely, (1) step currents lead to adaptation, that is, a progressive decrease of the discharge rate following the stimulus onset, while in the standard LIF, no such patterns are possible; (2) a saturation in the firing rate occurs in certain regimes, a behavior not seen in the LIF neuron; (3) interspike intervals of the noise-driven modified LIF under constant current are correlated in a way reminiscent of experimental observations, while those of the standard LIF are independent of one another; (4) the magnitude of the correlation coefficients decreases as a function of noise intensity; and (5) the dynamics of the sinusoidally forced modified LIF are described by iterates of an annulus map, an extension to the circle map dynamics displayed by the LIF model. Under certain conditions, this map can give rise to sensitivity to initial conditions and thus chaotic behavior.
机译:神经元适应以及放电间隔时间的相关性已被证明是生理神经元的重要功能。我们探索了一种改进的泄漏的集成点火(LIF)神经元(称为具有阈值疲劳的LIF)的动力学,并显示了其再现了这些特性。在此模型中,放电后阈值重置取决于放电时间的前面顺序。我们表明,响应于各种类别的刺激,即恒定电流,阶跃电流,白高斯噪声和正弦电流,与标准LIF神经元相比,该模型展现出新的行为。更准确地说,(1)阶跃电流会导致适应,也就是说,在刺激开始后逐渐降低放电速率,而在标准LIF中,这种模式是不可能的; (2)在某些情况下,射击频率会出现饱和,这是LIF神经元所没有的行为; (3)在恒定电流下,噪声驱动的改进型LIF的尖峰间隔以一种让人联想到实验观察结果的方式相互关联,而标准LIF的尖峰间隔彼此独立。 (4)相关系数的大小随噪声强度的变化而减小; (5)正弦强制修改的LIF的动力学是通过环空图的迭代来描述的,该循环是LIF模型显示的圆图动力学的扩展。在某些条件下,此图可引起对初始条件的敏感性,从而引起混乱的行为。

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