Bernstein Center for Computational Neuroscience Berlin, Berlin 10115, Germany. email:
Math Biosci Eng. 2016 Jun 1;13(3):461-81. doi: 10.3934/mbe.2016001.
Experimentally it is known that some neurons encode preferentially information about low-frequency (slow) components of a time-dependent stimulus while others prefer intermediate or high-frequency (fast) components. Accordingly, neurons can be categorized as low-pass, band-pass or high-pass information filters. Mechanisms of information filtering at the cellular and the network levels have been suggested. Here we propose yet another mechanism, based on noise shaping due to spontaneous non-renewal spiking statistics. We compare two integrate-and-fire models with threshold noise that differ solely in their interspike interval (ISI) correlations: the renewal model generates independent ISIs, whereas the non-renewal model exhibits positive correlations between adjacent ISIs. For these simplified neuron models we analytically calculate ISI density and power spectrum of the spontaneous spike train as well as approximations for input-output cross-spectrum and spike-train power spectrum in the presence of a broad-band Gaussian stimulus. This yields the spectral coherence, an approximate frequency-resolved measure of information transmission. We demonstrate that for low spiking variability the renewal model acts as a low-pass filter of information (coherence has a global maximum at zero frequency), whereas the non-renewal model displays a pronounced maximum of the coherence at non-vanishing frequency and thus can be regarded as a band-pass filter of information.
实验表明,一些神经元优先编码随时间变化的刺激的低频(慢)成分的信息,而另一些神经元则偏好中频或高频(快)成分的信息。因此,神经元可以被归类为低通、带通或高通信息滤波器。已经提出了细胞和网络水平上的信息过滤机制。在这里,我们提出了另一种基于自发非更新尖峰统计导致的噪声成形的机制。我们比较了两种具有阈值噪声的整合-触发模型,它们仅在它们的尖峰间隔(ISI)相关性上有所不同:更新模型产生独立的 ISI,而非更新模型则在相邻 ISI 之间表现出正相关。对于这些简化的神经元模型,我们分析计算了自发尖峰序列的 ISI 密度和功率谱,以及在宽带高斯刺激存在下的输入-输出互谱和尖峰序列功率谱的近似值。这产生了谱相干性,这是一种近似的频率分辨的信息传输度量。我们证明,对于低尖峰变异性,更新模型充当信息的低通滤波器(相干性在零频率处具有全局最大值),而非更新模型在非零频率处显示出明显的相干性最大值,因此可以被视为信息的带通滤波器。