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首页> 外文期刊>Frontiers in Neuroanatomy >The effects of neuron morphology on graph theoretic measures of network connectivity: the analysis of a two-level statistical model
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The effects of neuron morphology on graph theoretic measures of network connectivity: the analysis of a two-level statistical model

机译:神经元形态对网络连通性图理论度量的影响:二级统计模型的分析

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We developed a two-level statistical model that addresses the question of how properties of neurite morphology shape the large-scale network connectivity. We adopted a low-dimensional statistical description of neurites. From the neurite model description we derived the expected number of synapses, node degree, and the effective radius, the maximal distance between two neurons expected to form at least one synapse. We related these quantities to the network connectivity described using standard measures from graph theory, such as motif counts, clustering coefficient, minimal path length, and small-world coefficient. These measures are used in a neuroscience context to study phenomena from synaptic connectivity in the small neuronal networks to large scale functional connectivity in the cortex. For these measures we provide analytical solutions that clearly relate different model properties. Neurites that sparsely cover space lead to a small effective radius. If the effective radius is small compared to the overall neuron size the obtained networks share similarities with the uniform random networks as each neuron connects to a small number of distant neurons. Large neurites with densely packed branches lead to a large effective radius. If this effective radius is large compared to the neuron size, the obtained networks have many local connections. In between these extremes, the networks maximize the variability of connection repertoires. The presented approach connects the properties of neuron morphology with large scale network properties without requiring heavy simulations with many model parameters. The two-steps procedure provides an easier interpretation of the role of each modeled parameter. The model is flexible and each of its components can be further expanded. We identified a range of model parameters that maximizes variability in network connectivity, the property that might affect network capacity to exhibit different dynamical regimes.
机译:我们开发了一个两级统计模型,该模型解决了神经突形态特征如何塑造大规模网络连接性的问题。我们采用了神经突的低维统计描述。从神经突模型描述中,我们得出了预期的突触数量,结点程度和有效半径,即预期会形成至少一个突触的两个神经元之间的最大距离。我们将这些数量与使用图论中的标准方法描述的网络连通性相关联,例如主题数,聚类系数,最小路径长度和小世界系数。这些措施在神经科学领域中用于研究从小型神经元网络中的突触连接到皮质中的大规模功能连接的现象。对于这些措施,我们提供了明确涉及不同模型属性的分析解决方案。稀疏覆盖空间的神经突导致较小的有效半径。如果有效半径与整个神经元大小相比较小,则由于每个神经元都连接到少量的远距离神经元,因此获得的网络与统一的随机网络具有相似性。具有密集排列的分支的大神经突导致较大的有效半径。如果此有效半径与神经元大小相比较大,则获得的网络具有许多本地连接。在这些极端之间,网络最大化了连接方式的可变性。提出的方法将神经元形态学的特性与大规模网络特性联系在一起,而无需使用大量模型参数进行大量仿真。分两步进行的过程可以更轻松地解释每个建模参数的作用。该模型非常灵活,可以进一步扩展其每个组成部分。我们确定了一系列模型参数,这些参数最大程度地提高了网络连接的可变性,该属性可能会影响网络容量以展现出不同的动态机制。

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