Madadi Asl Mojtaba, Valizadeh Alireza, Tass Peter A
Department of Physics, Institute for Advanced Studies in Basic Sciences (IASBS), Zanjan 45195-1159, Iran.
Department of Neurosurgery, School of Medicine, Stanford University, Stanford, California 94305, USA.
Chaos. 2018 Oct;28(10):106308. doi: 10.1063/1.5037309.
In plastic neuronal networks, the synaptic strengths are adapted to the neuronal activity. Specifically, spike-timing-dependent plasticity (STDP) is a fundamental mechanism that modifies the synaptic strengths based on the relative timing of pre- and postsynaptic spikes, taking into account the spikes' temporal order. In many studies, propagation delays were neglected to avoid additional dynamic complexity or computational costs. So far, networks equipped with a classic STDP rule typically rule out bidirectional couplings (i.e., either loops or uncoupled states) and are, hence, not able to reproduce fundamental experimental findings. In this review paper, we consider additional features, e.g., extensions of the classic STDP rule or additional aspects like noise, in order to overcome the contradictions between theory and experiment. In addition, we review in detail recent studies showing that a classic STDP rule combined with realistic propagation patterns is able to capture relevant experimental findings. In two coupled oscillatory neurons with propagation delays, bidirectional synapses can be preserved and potentiated. This result also holds for large networks of type-II phase oscillators. In addition, not only the mean of the initial distribution of synaptic weights, but also its standard deviation crucially determines the emergent structural connectivity, i.e., the mean final synaptic weight, the number of two-neuron loops, and the symmetry of the final connectivity pattern. The latter is affected by the firing rates, where more symmetric synaptic configurations emerge at higher firing rates. Finally, we discuss these findings in the context of the computational neuroscience-based development of desynchronizing brain stimulation techniques.
在可塑性神经网络中,突触强度会根据神经元活动进行调整。具体而言,尖峰时间依赖可塑性(STDP)是一种基本机制,它根据突触前和突触后尖峰的相对时间来修改突触强度,同时考虑尖峰的时间顺序。在许多研究中,传播延迟被忽略,以避免额外的动态复杂性或计算成本。到目前为止,配备经典STDP规则的网络通常排除双向耦合(即循环或非耦合状态),因此无法重现基本的实验结果。在这篇综述论文中,我们考虑了其他特征,例如经典STDP规则的扩展或噪声等其他方面,以克服理论与实验之间的矛盾。此外,我们详细回顾了最近的研究,这些研究表明,经典的STDP规则与现实的传播模式相结合能够捕捉相关的实验结果。在两个具有传播延迟的耦合振荡神经元中,双向突触可以得到保留并增强。这一结果对于II型相位振荡器的大型网络也成立。此外,不仅突触权重初始分布的均值,其标准差也对出现的结构连通性至关重要,即平均最终突触权重、双神经元环的数量以及最终连通性模式的对称性。后者受放电率的影响,在较高放电率下会出现更对称的突触配置。最后,我们在基于计算神经科学的去同步脑刺激技术发展的背景下讨论这些发现。