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Statistics of single unit responses in the human medial temporal lobe: A sparse and overdispersed code.

机译:人类内侧颞叶中单个单位反应的统计数据:稀疏和过度分散的代码。

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摘要

The recent discovery of cells that respond to purely conceptual features of the environment (particular people, landmarks, objects, etc) in the human medial temporal lobe (MTL), has raised many questions about the nature of the neural code in humans. The goal of this dissertation is to develop a novel statistical method based upon maximum likelihood regression which will then be applied to these experiments in order to produce a quantitative description of the coding properties of the human MTL. In general, the method is applicable to any experiments in which a sequence of stimuli are presented to an organism while the binary responses of a large number of cells are recorded in parallel. The central concept underlying the approach is the total probability that a neuron responds to a random stimulus, called the neuronal sparsity. The model then estimates the distribution of response probabilities across the population of cells. Applying the method to single-unit recordings from the human medial temporal lobe, estimates of the sparsity distributions are acquired in four regions: the hippocampus, the entorhinal cortex, the amygdala, and the parahippocampal cortex. The resulting distributions are found to be sparse (large fraction of cells with a low response probability) and highly non-uniform, with a large proportion of ultra-sparse neurons that possess a very low response probability, and a smaller population of cells which respond much more frequently. Rammifications of the results are discussed in relation to the sparse coding hypothesis, and comparisons are made between the statistics of the human medial temporal lobe cells and place cells observed in the rodent hippocampus.
机译:最近发现的对人类颞颞叶(MTL)中的环境(特定的人,地标,物体等)的概念性特征作出反应的细胞,引起了许多有关人类神经密码的性质的问题。本文的目的是开发一种基于最大似然回归的统计方法,然后将其应用于这些实验,以定量描述人类MTL的编码特性。通常,该方法适用于任何向生物体施加一系列刺激而并行记录大量细胞的二元反应的实验。该方法的核心概念是神经元对随机刺激作出响应的总概率,称为神经元稀疏性。然后,模型估计整个细胞群体中响应概率的分布。将该方法应用于人类颞叶内侧的单个记录,可在以下四个区域获得稀疏分布的估计值:海马,内嗅皮层,杏仁核和海马旁皮层。发现所得的分布稀疏(大部分细胞具有较低的响应概率)并且高度不均匀,其中很大一部分具有非常低的响应概率的超稀疏神经元,并且响应的细胞数量较小更频繁。讨论了关于稀疏编码假说的结果的精确性,并在啮齿类海马中观察到的人类内侧颞叶细胞和位置细胞的统计数据之间进行了比较。

著录项

  • 作者

    Magyar, Andrew.;

  • 作者单位

    The Pennsylvania State University.;

  • 授予单位 The Pennsylvania State University.;
  • 学科 Physics.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 105 p.
  • 总页数 105
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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