Krips Ram, Furst Miriam
Department of Electrical Engineering-Systems, Faculty of Engineering, Tel-Aviv University, Tel-Aviv 69978, Israel.
Neural Comput. 2009 Sep;21(9):2524-53. doi: 10.1162/neco.2009.07-07-563.
Neural information is characterized by sets of spiking events that travel within the brain through neuron junctions that receive, transmit, and process streams of spikes. Coincidence detection is one of the ways to describe the functionality of a single neural cell. This letter presents an analytical derivation of the output stochastic behavior of a coincidence detector (CD) cell whose stochastic inputs behave as a nonhomogeneous Poisson process (NHPP) with both excitatory and inhibitory inputs. The derivation, which is based on an efficient breakdown of the cell into basic functional elements, results in an output process whose behavior can be approximated as an NHPP as long as the coincidence interval is much smaller than the refractory period of the cell's inputs. Intuitively, the approximation is valid as long as the processing rate is much faster than the incoming information rate. This type of modeling is a simplified but very useful description of neurons since it enables analytical derivations. The statistical properties of single CD cell's output make it possible to integrate and analyze complex neural cells in a feedforward network using the methodology presented here. Accordingly, basic biological characteristics of neural activity are demonstrated, such as a decrease in the spontaneous rate at higher brain levels and improved signal-to-noise ratio for harmonic input signals.
神经信息由一系列尖峰事件表征,这些事件在大脑中通过接收、传输和处理尖峰流的神经元连接进行传播。巧合检测是描述单个神经细胞功能的方法之一。本文给出了一个巧合探测器(CD)细胞输出随机行为的解析推导,该细胞的随机输入表现为具有兴奋性和抑制性输入的非齐次泊松过程(NHPP)。该推导基于将细胞有效分解为基本功能元件,得出一个输出过程,只要巧合间隔远小于细胞输入的不应期,其行为就可以近似为NHPP。直观地说,只要处理速率远快于传入信息速率,这种近似就是有效的。这种类型的建模是对神经元的一种简化但非常有用的描述,因为它能够进行解析推导。单个CD细胞输出的统计特性使得使用本文提出的方法在前馈网络中对复杂神经细胞进行整合和分析成为可能。因此,展示了神经活动的基本生物学特征,如大脑较高水平的自发率降低以及谐波输入信号的信噪比提高。