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Neural information processing: Temporal features and spike train statistics.

机译:神经信息处理:时间特征和峰值训练统计。

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摘要

Sensory stimuli are received by sensory neurons and information about these stimuli is further transmitted throughout the brain as electrical signals. These electrical signals do not directly resemble the stimuli they represent, but instead are temporal sequences of discrete electrical impulses, known as action potentials (APs) or "spikes". This thesis aims to further the understanding of how the statistical properties of neural output is determined by the statistical properties of inputs; also it aims to understand what temporal features of the inputs are represented in AP output sequences, or "spike trains".;In the first part of this thesis, consisting of chapters 2 and 3, we study how input signals with long-range correlations impart slow correlations in output interspike intervals (ISIs). These correlations are important for information transmission at plastic synapses, which is dealt with in chapter 3. In the second part of this thesis we examine how the temporal structure of a specific class of relevant sensory stimuli affects the spike train patterning of the neurons they impinge on. Single cell recordings in weakly electric fish, presented in chapter 4 uncover a simple two-cell network responsible for transmitting a narrowband signal and high-order features (i.e. the time-varying contrast, or envelope) of the signal through parallel neural channels. In chapter 5 we examine, using experiments and theory, the single cell mechanism responsible for representing the envelope directly in the AP firing rate of neurons. In chapter 6 we extend these results to show that in parameter regimes where the firing rate cannot convey information about signal envelopes, networks of electrically coupled cells can convey this information through their precise relative spike times.
机译:感觉神经元接收感觉刺激,并且关于这些刺激的信息进一步作为电信号在整个大脑中传输。这些电信号并不直接类似于它们所代表的刺激,而是离散的电脉冲的时间序列,称为动作电位(AP)或“尖峰”。本文旨在进一步理解如何通过输入的统计属性确定神经输出的统计属性。它的目的还在于理解输入的哪些时间特征在AP输出序列或“尖峰列”中得以体现。在本论文的第一部分(由第二章和第三章组成)中,我们研究了具有远距离相关性的输入信号在输出尖峰间隔(ISI)中传递缓慢的相关性。这些相关性对于塑性突触中的信息传递非常重要,这将在第3章中讨论。在本论文的第二部分中,我们研究特定类别的相关感觉刺激的时间结构如何影响它们撞击的神经元的突波序列模式。上。第4章介绍的弱电鱼中的单细胞记录揭示了一个简单的两细胞网络,该网络负责通过并行神经通道传输窄带信号和信号的高阶特征(即时变对比度或包络)。在第5章中,我们使用实验和理论研究了直接代表神经元AP发射率的包膜的单细胞机制。在第6章中,我们扩展了这些结果,以表明在点火速率无法传达有关信号包络的信息的参数方案中,电耦合单元网络可以通过其精确的相对尖峰时间来传达此信息。

著录项

  • 作者

    Middleton, Jason W.;

  • 作者单位

    University of Ottawa (Canada).;

  • 授予单位 University of Ottawa (Canada).;
  • 学科 Biology Neuroscience.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 186 p.
  • 总页数 186
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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