Knox C K
Biophys J. 1974 Aug;14(8):567-82. doi: 10.1016/S0006-3495(74)85936-9.
Cross-correlation functions, R(XY)(t,tau), are obtained for a neuron model which is characterized by constant threshold theta, by resetting to resting level after an output, and by membrane potential U(t) which results from linear summation of excitatory postsynaptic potentials h(t). The results show that: (1) Near time lag tau = 0, R(XY)(t,tau) = f(U) [theta-h(tau), t + tau] {h'(tau) + E(U) [u'(t + tau)]} for positive values of this quantity, where f(U)(u,t) is the probability density function of U(t) and E(U) [u'(t + tau)] is the mean value function of U'(t + tau). (2) Minima may appear in R(XY)(t,tau) for a neuron subjected only to excitation. (3) For large tau, R(XY)(t,tau) is given approximately by the convolution of the input autocorrelation function with the functional of point (1). (4) R(XY)(t,tau) is a biased estimator of the shape of h(t), generally over-estimating both its time to peak and its rise time.
对于一个具有恒定阈值θ、输出后重置为静息水平以及由兴奋性突触后电位h(t)线性叠加产生膜电位U(t)的神经元模型,得到了互相关函数R(XY)(t,τ)。结果表明:(1) 在时间延迟τ = 0附近,对于该量的正值,R(XY)(t,τ) = f(U) [θ - h(τ), t + τ] {h'(τ) + E(U) [u'(t + τ)]},其中f(U)(u,t)是U(t)的概率密度函数,E(U) [u'(t + τ)]是U'(t + τ)的均值函数。(2) 在仅受兴奋的神经元的R(XY)(t,τ)中可能出现最小值。(3) 对于较大的τ,R(XY)(t,τ)近似由输入自相关函数与点(1)的泛函的卷积给出。(4) R(XY)(t,τ)是h(t)形状的有偏估计量,通常会高估其峰值时间和上升时间。