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首页> 外文期刊>Frontiers in Neural Circuits >Synaptic Impairment and Robustness of Excitatory Neuronal Networks with Different Topologies
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Synaptic Impairment and Robustness of Excitatory Neuronal Networks with Different Topologies

机译:不同拓扑结构的兴奋性神经网络的突触损伤和鲁棒性

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摘要

Synaptic deficiencies are a known hallmark of neurodegenerative diseases, but the diagnosis of impaired synapses on the cellular level is not an easy task. Nonetheless, changes in the system-level dynamics of neuronal networks with damaged synapses can be detected using techniques that do not require high spatial resolution. This paper investigates how the structure/topology of neuronal networks influences their dynamics when they suffer from synaptic loss. We study different neuronal network structures/topologies by specifying their degree distributions. The modes of the degree distribution can be used to construct networks that consist of rich clubs and resemble small world networks, as well. We define two dynamical metrics to compare the activity of networks with different structures: persistent activity (namely, the self-sustained activity of the network upon removal of the initial stimulus) and quality of activity (namely, percentage of neurons that participate in the persistent activity of the network). Our results show that synaptic loss affects the persistent activity of networks with bimodal degree distributions less than it affects random networks. The robustness of neuronal networks enhances when the distance between the modes of the degree distribution increases, suggesting that the rich clubs of networks with distinct modes keep the whole network active. In addition, a tradeoff is observed between the quality of activity and the persistent activity. For a range of distributions, both of these dynamical metrics are considerably high for networks with bimodal degree distribution compared to random networks. We also propose three different scenarios of synaptic impairment, which may correspond to different pathological or biological conditions. Regardless of the network structure/topology, results demonstrate that synaptic loss has more severe effects on the activity of the network when impairments are correlated with the activity of the neurons.
机译:突触缺陷是神经退行性疾病的已知标志,但是在细胞水平上诊断突触受损并非易事。但是,可以使用不需要高空间分辨率的技术来检测突触受损的神经网络的系统级动力学变化。本文研究了神经元网络的结构/拓扑在突触丢失时如何影响其动力学。我们通过指定它们的程度分布来研究不同的神经网络结构/拓扑。学位分布的模式可以用来构建由丰富的俱乐部组成的网络,也类似于小世界网络。我们定义了两个动态指标来比较具有不同结构的网络的活动:持续活动(即,去除初始刺激后网络的自我维持活动)和活动质量(即,参与持续活动的神经元的百分比)网络活动)。我们的结果表明,突触损失对具有双峰度分布的网络的持续活动的影响小于对随机网络的影响。当度数分布的模式之间的距离增加时,神经元网络的鲁棒性增强,这表明具有不同模式的网络丰富的俱乐部使整个网络保持活动状态。另外,在活动质量和持续活动之间观察到一个折衷。对于一定范围的分布,与随机网络相比,对于具有双峰度分布的网络,这两个动态度量都很高。我们还提出了三种不同的突触损伤情况,它们可能对应于不同的病理或生物学条件。无论网络结构/拓扑如何,结果均表明,当损伤与神经元的活动相关时,突触损失对网络的活动会产生更严重的影响。

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