Kistler Werner M, De Zeeuw Chris I
Department of Neuroscience, Erasmus University Rotterdam, The Netherlands.
Neural Comput. 2002 Nov;14(11):2597-626. doi: 10.1162/089976602760407991.
This article explores dynamical properties of the olivo-cerebellar system that arise from the specific wiring of inferior olive (IO), cerebellar cortex, and deep cerebellar nuclei (DCN). We show that the irregularity observed in the firing pattern of the IO neurons is not necessarily produced by noise but can instead be the result of a purely deterministic network effect. We propose that this effect can serve as a dynamical working memory or as a neuronal clock with a characteristic timescale of about 100 ms that is determined by the slow calcium dynamics of IO and DCN neurons. This concept provides a novel explanation of how the cerebellum can solve timing tasks on a timescale that is two orders of magnitude longer than the millisecond timescale usually attributed to neuronal dynamics. One of the key ingredients of our model is the observation that due to postinhibitory rebound, DCN neurons can be driven by GABAergic ("inhibitory") input from cerebellar Purkinje cells. Topographic projections from the DCN to the IO form a closed reverberating loop with an overall synaptic transmission delay of about 100 ms that is in resonance with the intrinsic oscillatory properties of the inferior olive. We use a simple time-discrete model based on McCulloch-Pitts neurons in order to investigate in a first step some of the fundamental properties of a network with delayed reverberating projections. The macroscopic behavior is analyzed by means of a mean-field approximation. Numerical simulations, however, show that the microscopic dynamics has a surprisingly rich structure that does not show up in a mean-field description. We have thus performed extensive numerical experiments in order to quantify the ability of the network to serve as a dynamical working memory and its vulnerability by noise. In a second step, we develop a more realistic conductance-based network model of the inferior olive consisting of about 20 multicompartment neurons that are coupled by gap junctions and receive excitatory and inhibitory synaptic input via AMPA and GABAergic synapses. The simulations show that results for the time-discrete model hold true in a time-continuous description.
本文探讨了橄榄小脑系统的动力学特性,这些特性源于下橄榄核(IO)、小脑皮质和小脑深部核团(DCN)的特定连接方式。我们发现,在IO神经元放电模式中观察到的不规则性不一定是由噪声产生的,相反,它可能是一种纯粹确定性网络效应的结果。我们提出,这种效应可以作为一种动态工作记忆,或者作为一个特征时间尺度约为100毫秒的神经元时钟,该时间尺度由IO和DCN神经元的缓慢钙动力学决定。这一概念为小脑如何在比通常归因于神经元动力学的毫秒时间尺度长两个数量级的时间尺度上解决定时任务提供了一种新的解释。我们模型的关键要素之一是观察到,由于抑制后反弹,DCN神经元可以由小脑浦肯野细胞的GABA能(“抑制性”)输入驱动。从DCN到IO的拓扑投射形成一个封闭的回响回路,其总突触传递延迟约为100毫秒,与下橄榄核的内在振荡特性共振。我们使用基于麦卡洛克 - 皮茨神经元的简单时间离散模型,以便在第一步中研究具有延迟回响投射的网络的一些基本特性。通过平均场近似分析宏观行为。然而,数值模拟表明,微观动力学具有令人惊讶的丰富结构,这在平均场描述中并未显现。因此,我们进行了广泛的数值实验,以量化网络作为动态工作记忆的能力及其对噪声的脆弱性。在第二步中,我们开发了一个更现实的基于电导的下橄榄核网络模型,该模型由约20个多室神经元组成,这些神经元通过缝隙连接耦合,并通过AMPA和GABA能突触接收兴奋性和抑制性突触输入。模拟结果表明,时间离散模型的结果在时间连续描述中仍然成立。