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Statistical modeling of spiking activity in large scale neuronal networks.

机译:大规模神经网络中尖峰活动的统计模型。

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摘要

Traditional visual neuroscience research has focused on determining the relationship between the activity of single neurons and the stimuli from the outside world, and more recently the interactions within pairs of neurons. These studies have typically recorded from neurons or pairs of cells in isolation. Recent advances in neural recording devices have made it possible to record simultaneously from hundreds of cells. Such data provide new insights into the interactions among the neurons, the connectivity of neurons in a local network, as well as the neural algorithms of information processing. These methods also present new challenges: the scaling of existing system identification and decoding techniques to address the dramatic increase in dimensionality and computational complexity, and the development of new statistical methods to infer the dynamic interaction and connectivity in neuronal ensembles during information processing.;We recorded neuronal activity from the primate primary visual cortex using 96-channel multi-electrode arrays during the presentation of a variety of visual stimuli. We observed that the large fluctuations in firing rate were shared across many cells in the array, regardless of stimulus. These network state changes are related to many other widely known neural phenomena: large spiking stochasticity, slow timescale correlation between cells, and neural oscillations. We sought to understand the extent to which these fluctuations could be captured with the data available.;A statistical technique, the generalized linear model (GLM), has recently begun to be used to model neural activity, due to both its flexibility and computational tractability. In this context, the models we built had explicit terms for the stimulus effects, coupling effects from other cells recorded simultaneously, and more global network effects. We found that the network terms could indeed explain many of the spikes, indicated that neuronal variability cannot be merely considered to be internal noise, but is widely shared across a population of cells. This approach shows how to incorporate the extra-stimulus data in identifying single cell firing properties, as well as taking a step toward reconciling our understanding of single cells with the computations being performed by the larger network.
机译:传统的视觉神经科学研究集中在确定单个神经元的活动与外界刺激之间的关系,以及最近对神经元对之间的相互作用的确定。这些研究通常是从神经元或成对的细胞中单独记录的。神经记录设备的最新进展使得有可能同时记录数百个细胞。此类数据为神经元之间的交互作用,本地网络中神经元的连通性以及信息处理的神经算法提供了新的见解。这些方法还提出了新的挑战:扩展现有的系统识别和解码技术以解决维数和计算复杂性的急剧增长,以及开发新的统计方法以推断信息处理过程中神经元集合的动态交互作用和连通性。在呈现各种视觉刺激的过程中,使用96通道多电极阵列记录了来自灵长类主要视觉皮层的神经元活动。我们观察到,不管刺激如何,发射速率的较大波动在阵列​​中的许多单元之间均被共享。这些网络状态变化与许多其他广为人知的神经现象有关:大的尖峰随机性,细胞之间的时标相关性较慢以及神经振荡。我们试图了解可利用现有数据捕获这些波动的程度。;统计技术,广义线性模型(GLM),由于其灵活性和计算易处理性,最近已开始用于对神经活动进行建模。 。在这种情况下,我们建立的模型对刺激效应,来自同时记录的其他细胞的耦合效应以及更多的全局网络效应具有明确的用语。我们发现,网络术语确实可以解释许多尖峰现象,表明神经元变异性不能仅被认为是内部噪声,而是在细胞群中广泛共享的。这种方法显示了如何在识别单电池放电特性时合并额外的刺激数据,以及通过更大的网络执行的计算来调和我们对单电池的理解。

著录项

  • 作者

    Kelly, Ryan Christopher.;

  • 作者单位

    Carnegie Mellon University.;

  • 授予单位 Carnegie Mellon University.;
  • 学科 Biology Neuroscience.;Computer Science.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 138 p.
  • 总页数 138
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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