Department of Physics, Institute for Advanced Studies in Basic Sciences (IASBS), Zanjan, 45195-1159, Iran.
School of Cognitive Sciences, Institute for Research in Fundamental Sciences (IPM), Tehran, 19395-5746, Iran.
Sci Rep. 2018 Aug 13;8(1):12068. doi: 10.1038/s41598-018-30565-9.
Spike-timing-dependent plasticity (STDP) adjusts synaptic strengths according to the precise timing of pre- and postsynaptic spike pairs. Theoretical and computational studies have revealed that STDP may contribute to the emergence of a variety of structural and dynamical states in plastic neuronal populations. In this manuscript, we show that by incorporating dendritic and axonal propagation delays in recurrent networks of oscillatory neurons, the asymptotic connectivity displays multistability, where different structures emerge depending on the initial distribution of the synaptic strengths. In particular, we show that the standard deviation of the initial distribution of synaptic weights, besides its mean, determines the main properties of the emergent structural connectivity such as the mean final synaptic weight, the number of two-neuron loops and the symmetry of the final structure. We also show that the firing rates of the neurons affect the evolution of the network, and a more symmetric configuration of the synapses emerges at higher firing rates. We justify the network results based on a two-neuron framework and show how the results translate to large recurrent networks.
标题:尖峰时间依赖可塑性(STDP)根据前后突触尖峰对的精确时间调整突触强度。理论和计算研究表明,STDP 可能有助于在可塑性神经元群体中出现各种结构和动力学状态。
摘要:在本文中,我们通过在振荡神经元的递归网络中纳入树突和轴突传播延迟,表明渐近连接具有多稳定性,根据突触强度的初始分布出现不同的结构。具体来说,我们表明,除了平均值之外,初始突触权重分布的标准偏差还决定了出现的结构连接的主要性质,例如最终突触权重、双神经元环的数量和最终结构的对称性。我们还表明,神经元的放电率会影响网络的演化,并且在更高的放电率下会出现更对称的突触配置。我们基于一个双神经元框架证明了网络结果,并展示了这些结果如何转化为大型递归网络。