首页> 美国卫生研究院文献>Frontiers in Computational Neuroscience >Spike Pattern Structure Influences Synaptic Efficacy Variability under STDP and Synaptic Homeostasis. I: Spike Generating Models on Converging Motifs
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Spike Pattern Structure Influences Synaptic Efficacy Variability under STDP and Synaptic Homeostasis. I: Spike Generating Models on Converging Motifs

机译:穗模式结构影响STDP和突触稳态下的突触功效变异性。 I:融合母题上的峰值生成模型

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摘要

In neural systems, synaptic plasticity is usually driven by spike trains. Due to the inherent noises of neurons and synapses as well as the randomness of connection details, spike trains typically exhibit variability such as spatial randomness and temporal stochasticity, resulting in variability of synaptic changes under plasticity, which we call efficacy variability. How the variability of spike trains influences the efficacy variability of synapses remains unclear. In this paper, we try to understand this influence under pair-wise additive spike-timing dependent plasticity (STDP) when the mean strength of plastic synapses into a neuron is bounded (synaptic homeostasis). Specifically, we systematically study, analytically and numerically, how four aspects of statistical features, i.e., synchronous firing, burstiness/regularity, heterogeneity of rates and heterogeneity of cross-correlations, as well as their interactions influence the efficacy variability in converging motifs (simple networks in which one neuron receives from many other neurons). Neurons (including the post-synaptic neuron) in a converging motif generate spikes according to statistical models with tunable parameters. In this way, we can explicitly control the statistics of the spike patterns, and investigate their influence onto the efficacy variability, without worrying about the feedback from synaptic changes onto the dynamics of the post-synaptic neuron. We separate efficacy variability into two parts: the drift part (DriftV) induced by the heterogeneity of change rates of different synapses, and the diffusion part (DiffV) induced by weight diffusion caused by stochasticity of spike trains. Our main findings are: (1) synchronous firing and burstiness tend to increase DiffV, (2) heterogeneity of rates induces DriftV when potentiation and depression in STDP are not balanced, and (3) heterogeneity of cross-correlations induces DriftV together with heterogeneity of rates. We anticipate our work important for understanding functional processes of neuronal networks (such as memory) and neural development.
机译:在神经系统中,突触可塑性通常由峰值序列驱动。由于神经元和突触的固有噪声以及连接细节的随机性,尖峰序列通常表现出可变性,例如空间随机性和时间随机性,从而导致可塑性下突触变化的可变性,我们称之为功效可变性。穗序列的变异性如何影响突触的功效变异性尚不清楚。在本文中,当塑料突触进入神经元的平均强度受到限制时(突触体内平衡),我们试图理解这种影响在成对加性加成尖峰时变依赖性(STDP)下的影响。具体而言,我们系统地从分析和数值上研究了统计特征的四个方面,即同步触发,突发性/规律性,速率异质性和互相关性异质性,以及它们之间的相互作用如何影响会聚图案的功效变异性(简单一个神经元从许多其他神经元接收的网络)。根据具有可调参数的统计模型,会聚基序中的神经元(包括突触后神经元)会生成尖峰。这样,我们可以显式控制尖峰模式的统计数据,并研究它们对功效变异性的影响,而无需担心突触变化对突触后神经元动力学的反馈。我们将功效可变性分为两部分:由不同突触变化率的异质性引起的漂移部分(DriftV),以及由尖峰序列的随机性引起的重量扩散引起的扩散部分(DiffV)。我们的主要发现是:(1)同步激发和突发性倾向于增加DiffV,(2)当STDP中的增强和抑制作用不平衡时,速率的异质性会导致DriftV,(3)互相关的异质性会导致DriftV以及DFP的异质性。费率。我们期望我们的工作对于理解神经元网络(例如记忆)和神经发育的功能过程非常重要。

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