Latham P E, Richmond B J, Nelson P G, Nirenberg S
Department of Neurobiology, University of California at Los Angeles, Los Angeles, California 90095, USA.
J Neurophysiol. 2000 Feb;83(2):808-27. doi: 10.1152/jn.2000.83.2.808.
Many networks in the mammalian nervous system remain active in the absence of stimuli. This activity falls into two main patterns: steady firing at low rates and rhythmic bursting. How are these firing patterns generated? Specifically, how do dynamic interactions between excitatory and inhibitory neurons produce these firing patterns, and how do networks switch from one firing pattern to the other? We investigated these questions theoretically by examining the intrinsic dynamics of large networks of neurons. Using both a semianalytic model based on mean firing rate dynamics and simulations with large neuronal networks, we found that the dynamics, and thus the firing patterns, are controlled largely by one parameter, the fraction of endogenously active cells. When no endogenously active cells are present, networks are either silent or fire at a high rate; as the number of endogenously active cells increases, there is a transition to bursting; and, with a further increase, there is a second transition to steady firing at a low rate. A secondary role is played by network connectivity, which determines whether activity occurs at a constant mean firing rate or oscillates around that mean. These conclusions require only conventional assumptions: excitatory input to a neuron increases its firing rate, inhibitory input decreases it, and neurons exhibit spike-frequency adaptation. These conclusions also lead to two experimentally testable predictions: 1) isolated networks that fire at low rates must contain endogenously active cells and 2) a reduction in the fraction of endogenously active cells in such networks must lead to bursting.
在没有刺激的情况下,哺乳动物神经系统中的许多网络仍保持活跃。这种活动主要分为两种模式:低频率的持续放电和节律性爆发。这些放电模式是如何产生的?具体而言,兴奋性神经元和抑制性神经元之间的动态相互作用是如何产生这些放电模式的,以及网络如何从一种放电模式切换到另一种放电模式?我们通过研究大型神经元网络的内在动力学,从理论上对这些问题进行了探究。使用基于平均放电率动力学的半解析模型和大型神经元网络模拟,我们发现,动力学以及放电模式在很大程度上由一个参数控制,即内源性活跃细胞的比例。当不存在内源性活跃细胞时,网络要么沉默,要么以高频率放电;随着内源性活跃细胞数量的增加,会过渡到爆发;进一步增加时,则会再次过渡到低频率的持续放电。网络连接性起到次要作用,它决定了活动是以恒定的平均放电率发生,还是围绕该平均值振荡。这些结论仅需要传统假设:神经元的兴奋性输入会增加其放电率,抑制性输入会降低其放电率,并且神经元表现出放电频率适应性。这些结论还引出了两个可通过实验验证的预测:1)以低频率放电的孤立网络必须包含内源性活跃细胞;2)此类网络中内源性活跃细胞比例的降低必然会导致爆发。