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Synaptic convergence regulates synchronization-dependent spike transfer in feedforward neural networks

机译:突触收敛调节前馈神经网络中依赖于同步的尖峰转移

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摘要

Correlated neural activities such as synchronizations can significantly alter the characteristics of spike transfer between neural layers. However, it is not clear how this synchronization-dependent spike transfer can be affected by the structure of convergent feedforward wiring. To address this question, we implemented computer simulations of model neural networks: a source and a target layer connected with different types of convergent wiring rules. In the Gaussian-Gaussian (GG) model, both the connection probability and the strength are given as Gaussian distribution as a function of spatial distance. In the Uniform-Constant (UC) and Uniform-Exponential (UE) models, the connection probability density is a uniform constant within a certain range, but the connection strength is set as a constant value or an exponentially decaying function, respectively. Then we examined how the spike transfer function is modulated under these conditions, while static or synchronized input patterns were introduced to simulate different levels of feedforward spike synchronization. We observed that the synchronization-dependent modulation of the transfer function appeared noticeably different for each convergence condition. The modulation of the spike transfer function was largest in the UC model, and smallest in the UE model. Our analysis showed that this difference was induced by the different spike weight distributions that was generated from convergent synapses in each model. Our results suggest that, the structure of the feedforward convergence is a crucial factor for correlation-dependent spike control, thus must be considered important to understand the mechanism of information transfer in the brain.Electronic supplementary materialThe online version of this article (10.1007/s10827-017-0657-5) contains supplementary material, which is available to authorized users.
机译:相关的神经活动(例如同步)可以显着改变神经层之间的尖峰转移特性。但是,尚不清楚这种与同步有关的尖峰转移如何受到会聚前馈布线的结构的影响。为了解决这个问题,我们实现了模型神经网络的计算机仿真:连接有不同类型收敛布线规则的源层和目标层。在高斯-高斯(GG)模型中,连接概率和强度均以高斯分布作为空间距离的函数给出。在均匀常数(UC)模型和均匀指数(UE)模型中,连接概率密度是在一定范围内的均匀常数,但是连接强度分别设置为常数值或指数衰减函数。然后,我们研究了在这些条件下如何调制尖峰传递函数,同时引入了静态或同步输入模式来模拟不同级别的前馈尖峰同步。我们观察到,对于每个收敛条件,传递函数的依赖于同步的调制都明显不同。尖峰传递函数的调制在UC模型中最大,而在UE模型中最小。我们的分析表明,这种差异是由每个模型中会聚突触产生的不同峰值重量分布引起的。我们的研究结果表明,前馈收敛的结构是依赖相关的尖峰控制的关键因素,因此对于理解大脑中信息传递的机制而言,前馈收敛的结构至关重要。电子补充材料本文的在线版本(10.1007 / s10827 -017-0657-5)包含补充材料,授权用户可以使用。

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