与短期可塑性 (STP) 相结合的莫里斯-莱卡神经元模型的神经网络同步化

Anis Yuniati, Retno Dwi Astuti
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引用次数: 0

摘要

本研究利用莫里斯-勒卡(ML)神经元模型和短期可塑性(STP)来模拟神经元连接和突触模式。我们分析了这种神经网络同步活动,考察了建模神经网络中突触后传导模式,研究了同步状态下神经网络膜电位的动态,并通过改变抑制性(π)和兴奋性(pe)神经元间连接概率,分析了短期可塑性(STP)突触传递模式。这项基于计算的研究使用 Brian2 模拟器进行。结果显示,连接概率越高,形成的连接和突触就越多。pe 值越大,神经网络活动越同步。相反,pi 值越大,神经网络活动的同步性越差。同步的神经网络意味着尖峰的发生是巧合的,巧合的尖峰会导致容易检测到的膜电位和突触后电导。此外,尖峰还会影响神经递质的释放,从而影响突触传递模式。我们进一步确定了这种神经网络同步的频率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Network Synchronization of the Morris-Lecar Neuron Model Coupled with Short-Term Plasticity (STP)
This study used the Morris-Lecar (ML) neuron model coupled with Short-Term Plasticity (STP) to simulate neuronal connectivity and synaptic patterns. We analyze this neural network synchronization activity, examined the post-synaptic conductance patterns in the modelled neural network, investigated the dynamics of the neural network membrane potentials in the synchronous state, and analyze the Short-Term Plasticity (STP) synaptic transmission patterns by varying the inter-neuron connection probability for both inhibitory (pi) and excitatory (pe). This computational-based study was executed using Brian2 Simulator. The results revealed that the higher the connection probability, the more connections and synapses are formed. The greater value of pe, the more synchronous the neural network activity. In contrast, the higher value of pi, the less synchronous the neural network activity. A synchronous neural network implies that the spikes occur coincidentally, where coincidental spikes lead to easily detectable membrane potentials and postsynaptic conductance. Furthermore, spikes affect the release of neurotransmitters, thereby affecting synaptic transmission patterns. We further determined the frequency of this neural network synchronization.
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