相位重置曲线决定了神经振荡器网络中的同步、锁相和聚类。

Phase-resetting curves determine synchronization, phase locking, and clustering in networks of neural oscillators.

作者信息

Achuthan Srisairam, Canavier Carmen C

机构信息

Neuroscience Center of Excellence, Louisiana State University Health Sciences Center, New Orleans, Louisiana 70112, USA.

出版信息

J Neurosci. 2009 Apr 22;29(16):5218-33. doi: 10.1523/JNEUROSCI.0426-09.2009.

Abstract

Networks of model neurons were constructed and their activity was predicted using an iterated map based solely on the phase-resetting curves (PRCs). The predictions were quite accurate provided that the resetting to simultaneous inputs was calculated using the sum of the simultaneously active conductances, obviating the need for weak coupling assumptions. Fully synchronous activity was observed only when the slope of the PRC at a phase of zero, corresponding to spike initiation, was positive. A novel stability criterion was developed and tested for all-to-all networks of identical, identically connected neurons. When the PRC generated using N-1 simultaneously active inputs becomes too steep, the fully synchronous mode loses stability in a network of N model neurons. Therefore, the stability of synchrony can be lost by increasing the slope of this PRC either by increasing the network size or the strength of the individual synapses. Existence and stability criteria were also developed and tested for the splay mode in which neurons fire sequentially. Finally, N/M synchronous subclusters of M neurons were predicted using the intersection of parameters that supported both between-cluster splay and within-cluster synchrony. Surprisingly, the splay mode between clusters could enforce synchrony on subclusters that were incapable of synchronizing themselves. These results can be used to gain insights into the activity of networks of biological neurons whose PRCs can be measured.

摘要

构建了模型神经元网络,并仅基于相位重置曲线(PRC)使用迭代映射预测其活动。只要使用同时激活的电导之和来计算对同时输入的重置,预测就相当准确,从而无需弱耦合假设。仅当对应于动作电位起始的零相位处PRC的斜率为正时,才观察到完全同步活动。针对相同且连接方式相同的神经元的全连接网络,开发并测试了一种新的稳定性标准。当使用N - 1个同时激活的输入生成的PRC变得过于陡峭时,在由N个模型神经元组成的网络中,完全同步模式会失去稳定性。因此,通过增加网络规模或单个突触的强度来增加此PRC的斜率,同步的稳定性可能会丧失。还针对神经元依次放电的展开模式开发并测试了存在性和稳定性标准。最后,使用支持簇间展开和簇内同步的参数的交集来预测由M个神经元组成的N/M个同步子簇。令人惊讶的是,簇间的展开模式可以在无法自行同步的子簇上强制实现同步。这些结果可用于深入了解其PRC可测量的生物神经元网络的活动。

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