Manwani A, Koch C
Computation and Neural Systems Program, California Institute of Technology, Pasadena, CA 91125, USA.
Neural Comput. 1999 Nov 15;11(8):1831-73. doi: 10.1162/089976699300015981.
This is the second in a series of articles that seek to recast classical single-neuron biophysics in information-theoretical terms. Classical cable theory focuses on analyzing the voltage or current attenuation of a synaptic signal as it propagates from its dendritic input location to the spike initiation zone. On the other hand, we are interested in analyzing the amount of information lost about the signal in this process due to the presence of various noise sources distributed throughout the neuronal membrane. We use a stochastic version of the linear one-dimensional cable equation to derive closed-form expressions for the second-order moments of the fluctuations of the membrane potential associated with different membrane current noise sources: thermal noise, noise due to the random opening and closing of sodium and potassium channels, and noise due to the presence of "spontaneous" synaptic input. We consider two different scenarios. In the signal estimation paradigm, the time course of the membrane potential at a location on the cable is used to reconstruct the detailed time course of a random, band-limited current injected some distance away. Estimation performance is characterized in terms of the coding fraction and the mutual information. In the signal detection paradigm, the membrane potential is used to determine whether a distant synaptic event occurred within a given observation interval. In the light of our analytical results, we speculate that the length of weakly active apical dendrites might be limited by the information loss due to the accumulated noise between distal synaptic input sites and the soma and that the presence of dendritic nonlinearities probably serves to increase dendritic information transfer.
这是一系列文章中的第二篇,这些文章旨在用信息论的术语重新诠释经典的单神经元生物物理学。经典电缆理论专注于分析突触信号从其树突输入位置传播到动作电位起始区时的电压或电流衰减。另一方面,我们感兴趣的是分析在这个过程中,由于分布在整个神经元膜上的各种噪声源的存在,信号损失的信息量。我们使用线性一维电缆方程的随机版本,来推导与不同膜电流噪声源相关的膜电位波动的二阶矩的闭式表达式:热噪声、钠钾通道随机开闭引起的噪声,以及“自发”突触输入存在引起的噪声。我们考虑两种不同的情况。在信号估计范式中,电缆上某一位置的膜电位随时间的变化过程,被用于重建在一定距离外注入的随机带限电流的详细时间过程。估计性能通过编码分数和互信息来表征。在信号检测范式中,膜电位被用于确定在给定的观察间隔内,远处是否发生了突触事件。根据我们的分析结果,我们推测,弱活性顶树突的长度可能受到远端突触输入位点和胞体之间累积噪声导致的信息损失的限制,并且树突非线性的存在可能有助于增加树突信息传递。