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Selective Population Rate Coding: A Possible Computational Role of Gamma Oscillations in Selective Attention

机译:选择性人口比率编码:γ振荡在选择性注意中的可能计算作用。

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摘要

Selective attention is often accompanied by gamma oscillations in local field potentials and spike field coherence in brain areas related to visual, motor, and cognitive information processing. Gamma oscillations are implicated to play an important role in, for example, visual tasks including object search, shape perception, and speed detection. However, the mechanism by which gamma oscillations enhance cognitive and behavioral performance of attentive subjects is still elusive. Using feedforward fan-in networks composed of spiking neurons, we examine a possible role for gamma oscillations in selective attention and population rate coding of external stimuli. We implement the concept proposed by Fries (2005) that under dynamic stimuli, neural populations effectively communicate with each other only when there is a good phase relationship among associated gamma oscillations. We show that the downstream neural population selects a specific dynamic stimulus received by an upstream population and represents it by population rate coding. The encoded stimulus is the one for which gamma rhythm in the corresponding upstream population is resonant with the downstream gamma rhythm. The proposed role for gamma oscillations in stimulus selection is to enable top-down control, a neural version of time division multiple access used in communication engineering.
机译:选择性注意力通常伴随着局部视场电势的伽马振荡和与视觉,运动和认知信息处理有关的大脑区域的峰值场相干性。伽玛振荡在例如视觉任务(包括对象搜索,形状感知和速度检测)中起着重要作用。然而,伽马振荡增强注意力主体的认知和行为表现的机制仍然难以捉摸。使用由尖峰神经元组成的前馈扇入网络,我们检查了γ振荡在选择性注意和外部刺激的人口比率编码中的可能作用。我们实现了Fries(2005)提出的概念,即在动态刺激下,只有当相关的伽马振动之间存在良好的相位关系时,神经种群才能有效地相互交流。我们表明,下游神经种群选择了上游种群所接受的特定动态刺激,并通过种群率编码来表示它。编码刺激是相应的上游群体中的伽马节律与下游伽马节律共振的刺激。伽玛振荡在刺激选择中的拟议作用是实现自顶向下控制,这是通信工程中时分多址的神经版本。

著录项

  • 来源
    《Neural computation》 |2009年第12期|3335-3362|共28页
  • 作者

    Naoki Masuda;

  • 作者单位

    Graduate School of Information Science and Technology, University of Tokyo, Bunkyo,Tokyo 113-8656, Japan;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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