NeuroEngineering Laboratory, Department of Electrical and Electronic Engineering, The University of Melbourne, Melbourne, Victoria, Australia.
PLoS Comput Biol. 2013;9(2):e1002897. doi: 10.1371/journal.pcbi.1002897. Epub 2013 Feb 7.
Learning rules, such as spike-timing-dependent plasticity (STDP), change the structure of networks of neurons based on the firing activity. A network level understanding of these mechanisms can help infer how the brain learns patterns and processes information. Previous studies have shown that STDP selectively potentiates feed-forward connections that have specific axonal delays, and that this underlies behavioral functions such as sound localization in the auditory brainstem of the barn owl. In this study, we investigate how STDP leads to the selective potentiation of recurrent connections with different axonal and dendritic delays during oscillatory activity. We develop analytical models of learning with additive STDP in recurrent networks driven by oscillatory inputs, and support the results using simulations with leaky integrate-and-fire neurons. Our results show selective potentiation of connections with specific axonal delays, which depended on the input frequency. In addition, we demonstrate how this can lead to a network becoming selective in the amplitude of its oscillatory response to this frequency. We extend this model of axonal delay selection within a single recurrent network in two ways. First, we show the selective potentiation of connections with a range of both axonal and dendritic delays. Second, we show axonal delay selection between multiple groups receiving out-of-phase, oscillatory inputs. We discuss the application of these models to the formation and activation of neuronal ensembles or cell assemblies in the cortex, and also to missing fundamental pitch perception in the auditory brainstem.
学习规则,如尖峰时间依赖可塑性(STDP),根据放电活动改变神经元网络的结构。对这些机制的网络层面理解可以帮助推断大脑如何学习模式和处理信息。以前的研究表明,STDP 选择性增强具有特定轴突延迟的前馈连接,这是听觉脑干中声音定位等行为功能的基础。在这项研究中,我们研究了 STDP 如何导致在振荡活动期间对具有不同轴突和树突延迟的递归连接进行选择性增强。我们开发了具有加性 STDP 的递归网络学习的分析模型,并使用具有泄漏积分和放电神经元的模拟来支持结果。我们的结果表明,具有特定轴突延迟的连接具有选择性增强,这取决于输入频率。此外,我们展示了这如何导致网络对该频率的振荡响应幅度变得具有选择性。我们以两种方式扩展了单个递归网络内的轴突延迟选择模型。首先,我们展示了具有一系列轴突和树突延迟的连接的选择性增强。其次,我们展示了在接收异相振荡输入的多个组之间的轴突延迟选择。我们讨论了这些模型在皮质中神经元集合或细胞集合的形成和激活以及听觉脑干中基本音高缺失感知中的应用。