Department of Mathematics, University of British Columbia, Vancouver, BC, Canada, V6T 1Z2.
J Math Neurosci. 2013 Aug 14;3(1):11. doi: 10.1186/2190-8567-3-11.
Spike time reliability (STR) refers to the phenomenon in which repetitive applications of a frozen copy of one stochastic signal to a neuron trigger spikes with reliable timing while a constant signal fails to do so. Observed and explored in numerous experimental and theoretical studies, STR is a complex dynamic phenomenon depending on the nature of external inputs as well as intrinsic properties of a neuron. The neuron under consideration could be either quiescent or spontaneously spiking in the absence of the external stimulus. Focusing on the situation in which the unstimulated neuron is quiescent but close to a switching point to oscillations, we numerically analyze STR treating each spike occurrence as a time localized event in a model neuron. We study both the averaged properties as well as individual features of spike-evoking epochs (SEEs). The effects of interactions between spikes is minimized by selecting signals that generate spikes with relatively long interspike intervals (ISIs). Under these conditions, the frequency content of the input signal has little impact on STR. We study two distinct cases, Type I in which the f-I relation (f for frequency, I for applied current) is continuous and Type II where the f-I relation exhibits a jump. STR in the two types shows a number of similar features and differ in some others. SEEs that are capable of triggering spikes show great variety in amplitude and time profile. On average, reliable spike timing is associated with an accelerated increase in the "action" of the signal as a threshold for spike generation is approached. Here, "action" is defined as the average amount of current delivered during a fixed time interval. When individual SEEs are studied, however, their time profiles are found important for triggering more precisely timed spikes. The SEEs that have a more favorable time profile are capable of triggering spikes with higher precision even at lower action levels.
尖峰时间可靠性(STR)是指重复应用一个随机信号的冻结副本刺激神经元产生尖峰的现象,这种尖峰具有可靠的时间精度,而恒定信号则无法做到这一点。这种现象在许多实验和理论研究中都得到了观察和探讨,STR 是一种复杂的动态现象,取决于外部输入的性质以及神经元的内在特性。所考虑的神经元可以是静止的,也可以在没有外部刺激的情况下自发地产生尖峰。我们关注的是在未受刺激的神经元处于静止状态但接近振荡切换点的情况下的 STR 情况,我们通过在模型神经元中将每个尖峰发生视为时间局部事件来对 STR 进行数值分析。我们研究了引发尖峰的时期(SEE)的平均特性和个体特征。通过选择产生具有相对较长的尖峰间隔(ISI)的尖峰的信号,将尖峰之间的相互作用的影响最小化。在这些条件下,输入信号的频率内容对 STR 的影响很小。我们研究了两种截然不同的情况,一种是 I 型,其中 f-I 关系(f 表示频率,I 表示施加的电流)是连续的,另一种是 II 型,其中 f-I 关系表现出跳跃。两种类型的 STR 表现出许多相似的特征,在其他方面有所不同。能够引发尖峰的 SEE 具有幅度和时间分布的巨大差异。平均而言,可靠的尖峰定时与信号的“作用”的加速增加相关联,当接近尖峰产生的阈值时,“作用”被定义为在固定时间间隔内传递的平均电流量。然而,当研究单个 SEE 时,发现它们的时间分布对于更精确地触发尖峰很重要。具有更有利时间分布的 SEE 即使在较低的作用水平下也能够更精确地触发尖峰。