Kada Hisashi, Teramae Jun-Nosuke, Tokuda Isao T
Department of Mechanical Engineering, Ritsumeikan University, Kusatsu-shi, Japan.
Graduate School of Informatics, Kyoto University, Kyoto, Japan.
Front Comput Neurosci. 2018 Dec 21;12:104. doi: 10.3389/fncom.2018.00104. eCollection 2018.
Cortical networks both and sustain asynchronous irregular firings with extremely low frequency. To realize such self-sustained activity in neural network models, balance between excitatory and inhibitory activities is known to be one of the keys. In addition, recent theoretical studies have revealed that another feature commonly observed in cortical networks, i.e., sparse but strong connections and dense weak connections, plays an essential role. The previous studies, however, have not thoroughly considered the cooperative dynamics between a network of such heterogeneous synaptic connections and intrinsic noise. The noise stimuli, representing inherent nature of the neuronal activities, e.g., variability of presynaptic discharges, should be also of significant importance for sustaining the irregular firings in cortical networks. Here, we numerically demonstrate that highly heterogeneous distribution, typically a lognormal type, of excitatory-to-excitatory connections, reduces the amount of noise required to sustain the network firing activities. In the sense that noise consumes an energy resource, the heterogeneous network receiving less amount of noise stimuli is considered to realize an efficient dynamics in cortex. A noise-driven network of bi-modally distributed synapses further shows that many weak and a few very strong synapses are the key feature of the synaptic heterogeneity, supporting the network firing activity.
皮层网络产生并维持极低频率的异步不规则放电。为了在神经网络模型中实现这种自持活动,已知兴奋性和抑制性活动之间的平衡是关键之一。此外,最近的理论研究表明,皮层网络中另一个常见特征,即稀疏但强的连接和密集弱连接,起着至关重要的作用。然而,先前的研究并未充分考虑这种异质突触连接网络与内在噪声之间的协同动力学。代表神经元活动固有性质的噪声刺激,例如突触前放电的变异性,对于维持皮层网络中的不规则放电也应具有重要意义。在这里,我们通过数值模拟证明,兴奋性到兴奋性连接的高度异质分布,通常是对数正态类型,减少了维持网络放电活动所需的噪声量。从噪声消耗能量资源的意义上讲,接收较少噪声刺激的异质网络被认为在皮层中实现了高效动力学。一个由双峰分布突触构成的噪声驱动网络进一步表明,许多弱突触和少数非常强的突触是突触异质性的关键特征,支持网络放电活动。