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Spike Pattern Structure Influences Synaptic Efficacy Variability under STDP and Synaptic Homeostasis. II: Spike Shuffling Methods on LIF Networks

机译:峰值模式结构影响STDP和突触稳态下的突触功效变异性。 II:LIF网络上的尖峰混洗方法

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Synapses may undergo variable changes during plasticity because of the variability of spike patterns such as temporal stochasticity and spatial randomness. Here, we call the variability of synaptic weight changes during plasticity to be efficacy variability. In this paper, we investigate how four aspects of spike pattern statistics (i.e., synchronous firing, burstiness/regularity, heterogeneity of rates and heterogeneity of cross-correlations) influence the efficacy variability under pair-wise additive spike-timing dependent plasticity (STDP) and synaptic homeostasis (the mean strength of plastic synapses into a neuron is bounded), by implementing spike shuffling methods onto spike patterns self-organized by a network of excitatory and inhibitory leaky integrate-and-fire (LIF) neurons. With the increase of the decay time scale of the inhibitory synaptic currents, the LIF network undergoes a transition from asynchronous state to weak synchronous state and then to synchronous bursting state. We first shuffle these spike patterns using a variety of methods, each designed to evidently change a specific pattern statistics; and then investigate the change of efficacy variability of the synapses under STDP and synaptic homeostasis, when the neurons in the network fire according to the spike patterns before and after being treated by a shuffling method. In this way, we can understand how the change of pattern statistics may cause the change of efficacy variability. Our results are consistent with those of our previous study which implements spike-generating models on converging motifs. We also find that burstiness/regularity is important to determine the efficacy variability under asynchronous states, while heterogeneity of cross-correlations is the main factor to cause efficacy variability when the network moves into synchronous bursting states (the states observed in epilepsy).
机译:由于诸如时间随机性和空间随机性之类的尖峰模式的可变性,突触在可塑性期间可能会发生变化。在这里,我们称可塑性过程中突触重量变化的变异性为功效变异性。在本文中,我们研究了尖峰模式统计的四个方面(即同步触发,突发性/规则性,速率异质性和互相关性异质性)如何影响成对加性尖峰时序相关可塑性(STDP)下的功效变异性通过对由兴奋性和抑制性渗漏整合并发射(LIF)神经元网络自组织的尖峰模式实施尖峰改组方法,可实现突触稳态(塑料突触进入神经元的平均强度受到限制)。随着抑制性突触电流的衰减时间尺度的增加,LIF网络经历了从异步状态到弱同步状态然后到同步突发状态的过渡。我们首先使用多种方法对这些尖峰图进行混洗,每种方法都旨在明显地改变特定的图统计。然后研究在改组方法处理前后网络中的神经元根据尖峰模式触发时,STDP和突触稳态下突触功效变化的变化。通过这种方式,我们可以了解模式统计的变化如何导致功效变异性的变化。我们的结果与我们先前的研究结果一致,该研究对收敛的图案实施了尖峰生成模型。我们还发现,突发性/规律性对于确定异步状态下的功效变异性很重要,而互相关的异质性是当网络进入同步爆发状态(癫痫中观察到的状态)时导致功效变异性的主要因素。

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