脉冲神经网络与功能样本的结构关系

L. Antiqueira, Liang Zhao
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引用次数: 0

摘要

脉冲神经网络模型有很大的潜力成为复杂网络理论发展的重要工具。特别有趣的是,这些模型可以用来更好地理解大脑功能网络的重要类别,这在计算网络分析的背景下经常被研究。一个基本的问题是,通过表面多通道记录的功能连接采样是否能够再现底层空间神经网络的主要连接特征。在这项工作中,我们通过使用集成和发射尖峰神经元模型的计算建模来解决这个问题,这使我们能够将神经连接和各自的介观动力学联系起来。然后将功能样本与理想化的空间神经网络模型进行比较,以建立拓扑网络测量。结果表明,一些测量(例如,中间性中心性)能够相当接近功能和空间网络。因此,在采样大小和模拟方法的特定情况下,可以说功能网络能够再现底层神经网络的连通性特征。
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Structural Relationships between Spiking Neural Networks and Functional Samples
Models of spiking neural networks have a great potential to become a crucial tool in the development of complex network theory. Of particular interest, these models can be used to better understand the important class of brain functional networks, which are frequently studied in the context of computational network analysis. A fundamental question is whether functional connectivity sampling via surface multichannel recordings is able to reproduce the main connectivity features of the underlying spatial neural network. In this work we address this problem through computational modeling using the integrate-and-fire spiking neuron model, which enabled us to relate neural connectivity and the respective mesoscopic dynamics. Functional samples were then compared to an idealized spatial neural network model in terms of established topological network measurements. Results show that some measurements (e.g., betweenness centrality) are able to fairly approximate functional and spatial networks. Therefore, under specific circumstances of sampling size and simulation approach, it is possible to say that functional networks are able to reproduce connectivity features of the underlying neural network.
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