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Balanced neural architecture and the idling brain

机译:平衡的神经架构和空转的大脑

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A signature feature of cortical spike trains is their trial-to-trial variability. This variability is large in the spontaneous state and is reduced when cortex is driven by a stimulus or task. Models of recurrent cortical networks with unstructured, yet balanced, excitation and inhibition generate variability consistent with evoked conditions. However, these models produce spike trains which lack the long timescale fluctuations and large variability exhibited during spontaneous cortical dynamics. We propose that global network architectures which support a large number of stable states (attractor networks) allow balanced networks to capture key features of neural variability in both spontaneous and evoked conditions. We illustrate this using balanced spiking networks with clustered assembly, feedforward chain, and ring structures. By assuming that global network structure is related to stimulus preference, we show that signal correlations are related to the magnitude of correlations in the spontaneous state. Finally, we contrast the impact of stimulation on the trial-to-trial variability in attractor networks with that of strongly coupled spiking networks with chaotic firing rate instabilities, recently investigated by Ostojic (2014). We find that only attractor networks replicate an experimentally observed stimulus-induced quenching of trial-to-trial variability. In total, the comparison of the trial-variable dynamics of single neurons or neuron pairs during spontaneous and evoked activity can be a window into the global structure of balanced cortical networks.
机译:皮质穗状花序训练的标志性特征是它们的试验间差异。这种变化在自发状态下很大,而当皮层受到刺激或任务驱动时,这种变化会减小。具有非结构化但平衡,激发和抑制的循环皮层网络模型会产生与诱发条件一致的变异性。然而,这些模型产生的尖峰序列缺乏自发的皮层动力学过程中表现出的长时间尺度波动和较大的变异性。我们建议,支持大量稳定状态的全局网络体系结构(吸引者网络)允许平衡网络捕获自发和诱发条件下神经变异性的关键特征。我们使用平衡式尖峰网络来说明这一点,该网络具有群集的装配,前馈链和环结构。通过假设全局网络结构与刺激偏好有关,我们表明信号相关性与自发状态下相关性的大小有关。最后,我们对比了刺激对吸引子网络中试验间变化的影响,以及强烈耦合耦合的具有混沌发射速率不稳定性的尖峰网络的影响,Ostojic(2014)最近对此进行了研究。我们发现只有吸引子网络复制实验观察到的刺激诱导的试验到试验的变异性猝灭。总的来说,在自发和诱发活动期间单个神经元或神经元对的试验变量动态的比较可以成为进入平衡皮层网络整体结构的窗口。

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