Setareh Hesam, Deger Moritz, Petersen Carl C H, Gerstner Wulfram
Laboratory of Computational Neuroscience, School of Computer and Communication Sciences and Brain Mind Institute, School of Life Sciences, École Polytechnique Fédérale de LausanneLausanne, Switzerland.
Faculty of Mathematics and Natural Sciences, Institute for Zoology, University of CologneCologne, Germany.
Front Comput Neurosci. 2017 Jun 22;11:52. doi: 10.3389/fncom.2017.00052. eCollection 2017.
Experimental measurements of pairwise connection probability of pyramidal neurons together with the distribution of synaptic weights have been used to construct randomly connected model networks. However, several experimental studies suggest that both wiring and synaptic weight structure between neurons show statistics that differ from random networks. Here we study a network containing a subset of neurons which we call weight-hub neurons, that are characterized by strong inward synapses. We propose a connectivity structure for excitatory neurons that contain assemblies of densely connected weight-hub neurons, while the pairwise connection probability and synaptic weight distribution remain consistent with experimental data. Simulations of such a network with generalized integrate-and-fire neurons display regular and irregular slow oscillations akin to experimentally observed up/down state transitions in the activity of cortical neurons with a broad distribution of pairwise spike correlations. Moreover, stimulation of a model network in the presence or absence of assembly structure exhibits responses similar to light-evoked responses of cortical layers in optogenetically modified animals. We conclude that a high connection probability into and within assemblies of excitatory weight-hub neurons, as it likely is present in some but not all cortical layers, changes the dynamics of a layer of cortical microcircuitry significantly.
锥体神经元的成对连接概率的实验测量以及突触权重的分布已被用于构建随机连接的模型网络。然而,一些实验研究表明,神经元之间的布线和突触权重结构显示出与随机网络不同的统计特征。在这里,我们研究一个包含我们称为权重枢纽神经元的神经元子集的网络,这些神经元的特征是具有强大的内向突触。我们提出了一种兴奋性神经元的连接结构,其中包含密集连接的权重枢纽神经元集合,而成对连接概率和突触权重分布与实验数据保持一致。用广义积分发放神经元对这样一个网络进行模拟,显示出规则和不规则的慢振荡,类似于在具有广泛成对尖峰相关性的皮质神经元活动中实验观察到的上/下状态转换。此外,在存在或不存在集合结构的情况下对模型网络进行刺激,其反应类似于光遗传学修饰动物中皮质层的光诱发反应。我们得出结论,兴奋性权重枢纽神经元集合内部和之间的高连接概率,可能存在于部分而非全部皮质层中,会显著改变一层皮质微电路的动力学。