中文

Single neuron computation: from dynamical system to feature detector

神经元与认知 2007-05-23 v1 生物物理 数据分析、统计与概率

摘要

White noise methods are a powerful tool for characterizing the computation performed by neural systems. These methods allow one to identify the feature or features that a neural system extracts from a complex input, and to determine how these features are combined to drive the system's spiking response. These methods have also been applied to characterize the input/output relations of single neurons driven by synaptic inputs, simulated by direct current injection. To interpret the results of white noise analysis of single neurons, we would like to understand how the obtained feature space of a single neuron maps onto the biophysical properties of the membrane, in particular the dynamics of ion channels. Here, through analysis of a simple dynamical model neuron, we draw explicit connections between the output of a white noise analysis and the underlying dynamical system. We find that under certain assumptions, the form of the relevant features is well defined by the parameters of the dynamical system. Further, we show that under some conditions, the feature space is spanned by the spike-triggered average and its successive order time derivatives.

关键词

引用

@article{arxiv.q-bio/0612025,
  title  = {Single neuron computation: from dynamical system to feature detector},
  author = {Sungho Hong and Blaise Aguera y Arcas and Adrienne L. Fairhall},
  journal= {arXiv preprint arXiv:q-bio/0612025},
  year   = {2007}
}

备注

33 pages. LaTeX + 12 figures. Submitted to Neural Computation