STDP在尖峰神经元网络中形成记忆痕迹之间的联系

C. Pokorny, M. Ison, Arjun Rao, R. Legenstein, C. Papadimitriou, W. Maass
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引用次数: 14

摘要

记忆痕迹和它们之间的联系是大脑认知功能的基础。神经元记录表明,大脑中分布的神经元集合充当了空间信息、现实世界物品和概念的记忆痕迹。然而,关于相关记忆痕迹的神经编码,存在相互矛盾的证据。一些研究表明,在联想过程中,组合之间出现了重叠,而另一些研究表明,组合本身基本保持不变,新的组合作为相关记忆项目的神经编码出现。本文采用基于数据的脉冲时间依赖可塑性(STDP)规则,研究了在脉冲神经元循环网络的通用计算模型中相关记忆项目的神经编码的出现。该模型主要依赖于控制神经元兴奋性和初始突触权重尺度的两个参数。通过修改这两个参数,该模型可以重现人类大脑通过组件之间的紧急重叠快速形成关联的实验数据,以及招募新神经元编码相关记忆的啮齿动物数据。因此,我们的研究结果表明,大脑可以同时使用这两种神经编码进行联想,并在巩固过程中在它们之间动态切换。
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STDP Forms Associations between Memory Traces in Networks of Spiking Neurons
Memory traces and associations between them are fundamental for cognitive brain function. Neuron recordings suggest that distributed assemblies of neurons in the brain serve as memory traces for spatial information, real-world items, and concepts. However, there is conflicting evidence regarding neural codes for associated memory traces. Some studies suggest the emergence of overlaps between assemblies during an association, while others suggest that the assemblies themselves remain largely unchanged and new assemblies emerge as neural codes for associated memory items. Here we study the emergence of neural codes for associated memory items in a generic computational model of recurrent networks of spiking neurons with a data-based rule for spike-timing-dependent plasticity (STDP). The model depends critically on two parameters, which control the excitability of neurons and the scale of initial synaptic weights. By modifying these two parameters, the model can reproduce both experimental data from the human brain on the fast formation of associations through emergent overlaps between assemblies, and rodent data where new neurons are recruited to encode the associated memories. Hence our findings suggest that the brain can use both of these two neural codes for associations, and dynamically switch between them during consolidation.
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