Brunel Nicolas, Hansel David
Laboratory of Neurophysics and Physiology, CNRS UMR 8119, Université Paris René Descartes, 75270 Paris Cedex 05, France.
Neural Comput. 2006 May;18(5):1066-110. doi: 10.1162/089976606776241048.
GABAergic interneurons play a major role in the emergence of various types of synchronous oscillatory patterns of activity in the central nervous system. Motivated by these experimental facts, modeling studies have investigated mechanisms for the emergence of coherent activity in networks of inhibitory neurons. However, most of these studies have focused either when the noise in the network is absent or weak or in the opposite situation when it is strong. Hence, a full picture of how noise affects the dynamics of such systems is still lacking. The aim of this letter is to provide a more comprehensive understanding of the mechanisms by which the asynchronous states in large, fully connected networks of inhibitory neurons are destabilized as a function of the noise level. Three types of single neuron models are considered: the leaky integrate-and-fire (LIF) model, the exponential integrate-and-fire (EIF), model and conductance-based models involving sodium and potassium Hodgkin-Huxley (HH) currents. We show that in all models, the instabilities of the asynchronous state can be classified in two classes. The first one consists of clustering instabilities, which exist in a restricted range of noise. These instabilities lead to synchronous patterns in which the population of neurons is broken into clusters of synchronously firing neurons. The irregularity of the firing patterns of the neurons is weak. The second class of instabilities, termed oscillatory firing rate instabilities, exists at any value of noise. They lead to cluster state at low noise. As the noise is increased, the instability occurs at larger coupling, and the pattern of firing that emerges becomes more irregular. In the regime of high noise and strong coupling, these instabilities lead to stochastic oscillations in which neurons fire in an approximately Poisson way with a common instantaneous probability of firing that oscillates in time.
γ-氨基丁酸能中间神经元在中枢神经系统中各种类型的同步振荡活动模式的出现中起主要作用。受这些实验事实的推动,建模研究探讨了抑制性神经元网络中相干活动出现的机制。然而,这些研究大多集中在网络噪声不存在或较弱的情况,或者相反,噪声很强的情况。因此,关于噪声如何影响此类系统动态的全貌仍然缺失。这封信的目的是更全面地理解在大型全连接抑制性神经元网络中,异步状态如何随着噪声水平的变化而失稳的机制。我们考虑了三种类型的单神经元模型:泄漏积分发放(LIF)模型、指数积分发放(EIF)模型以及涉及钠和钾霍奇金-赫胥黎(HH)电流的基于电导的模型。我们表明,在所有模型中,异步状态的失稳可分为两类。第一类由聚类失稳组成,它存在于有限的噪声范围内。这些失稳导致同步模式,其中神经元群体被分解为同步发放神经元的簇。神经元发放模式的不规则性较弱。第二类失稳称为振荡发放率失稳,在任何噪声值下都存在。它们在低噪声时导致簇状态。随着噪声增加,失稳在更大的耦合强度下出现,并且出现的发放模式变得更加不规则。在高噪声和强耦合的情况下,这些失稳导致随机振荡,其中神经元以近似泊松的方式发放,具有随时间振荡的共同瞬时发放概率。