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可靠优化的脉冲传输神经网络模型。

A neural network model of reliably optimized spike transmission.

作者信息

Samura Toshikazu, Ikegaya Yuji, Sato Yasuomi D

机构信息

Department of Applied Molecular Bioscience, Graduate School of Medicine, Yamaguchi University, 1-1-1, Minamikogushi, Ube, Yamaguchi, 755-8508 Japan.

Laboratory of Chemical Pharmacology, Graduate School of Pharmaceutical Sciences, The University of Tokyo, 7-3-1, Hongo, Bunkyo-ku, Tokyo, 113-0033 Japan.

出版信息

Cogn Neurodyn. 2015 Jun;9(3):265-77. doi: 10.1007/s11571-015-9329-1. Epub 2015 Jan 23.

Abstract

We studied the detailed structure of a neuronal network model in which the spontaneous spike activity is correctly optimized to match the experimental data and discuss the reliability of the optimized spike transmission. Two stochastic properties of the spontaneous activity were calculated: the spike-count rate and synchrony size. The synchrony size, expected to be an important factor for optimization of spike transmission in the network, represents a percentage of observed coactive neurons within a time bin, whose probability approximately follows a power-law. We systematically investigated how these stochastic properties could matched to those calculated from the experimental data in terms of the log-normally distributed synaptic weights between excitatory and inhibitory neurons and synaptic background activity induced by the input current noise in the network model. To ensure reliably optimized spike transmission, the synchrony size as well as spike-count rate were simultaneously optimized. This required changeably balanced log-normal distributions of synaptic weights between excitatory and inhibitory neurons and appropriately amplified synaptic background activity. Our results suggested that the inhibitory neurons with a hub-like structure driven by intensive feedback from excitatory neurons were a key factor in the simultaneous optimization of the spike-count rate and synchrony size, regardless of different spiking types between excitatory and inhibitory neurons.

摘要

我们研究了一个神经网络模型的详细结构,其中自发尖峰活动被正确优化以匹配实验数据,并讨论了优化后的尖峰传输的可靠性。计算了自发活动的两个随机特性:尖峰计数率和同步规模。同步规模被认为是网络中尖峰传输优化的一个重要因素,它表示在一个时间间隔内观察到的共同活跃神经元的百分比,其概率大致遵循幂律。我们系统地研究了如何根据兴奋性和抑制性神经元之间对数正态分布的突触权重以及网络模型中输入电流噪声引起的突触背景活动,使这些随机特性与从实验数据中计算出的特性相匹配。为了确保可靠地优化尖峰传输,同步规模以及尖峰计数率被同时优化。这需要兴奋性和抑制性神经元之间突触权重的可变平衡对数正态分布以及适当放大的突触背景活动。我们的结果表明,由兴奋性神经元的强烈反馈驱动的具有中心样结构的抑制性神经元是同时优化尖峰计数率和同步规模的关键因素,而不管兴奋性和抑制性神经元之间不同的尖峰类型如何。

相似文献

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A neural network model of reliably optimized spike transmission.可靠优化的脉冲传输神经网络模型。
Cogn Neurodyn. 2015 Jun;9(3):265-77. doi: 10.1007/s11571-015-9329-1. Epub 2015 Jan 23.
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Rate-synchrony relationship between input and output of spike trains in neuronal networks.神经网络中尖峰序列输入与输出之间的速率同步关系。
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