Huss Mikael, Wang Di, Trané Camilla, Wikström Martin, Hellgren Kotaleski Jeanette
School of Computer Science and Communication, Royal Institute of Technology, 100 44, Stockholm, Sweden.
J Comput Neurosci. 2008 Aug;25(1):108-21. doi: 10.1007/s10827-007-0067-1. Epub 2007 Dec 15.
Rhythmicity is a characteristic of neural networks responsible for locomotion. In many organisms, activation of N-methyl-D: -aspartate (NMDA) receptors leads to generation of rhythmic locomotor patterns. In addition, single neurons can display intrinsic, NMDA-dependent membrane potential oscillations when pharmacologically isolated from each other by tetrodotoxin (TTX) application. Such NMDA-TTX oscillations have been characterized, for instance, in lamprey locomotor network neurons. Conceptual and computational models have been put forward to explain the appearance and characteristics of these oscillations. Here, we seek to refine the understanding of NMDA-TTX oscillations by combining new experimental evidence with computational modelling. We find that, in contrast to previous computational predictions, the oscillation frequency tends to increase when the NMDA concentration is increased. We develop a new, minimal computational model which can incorporate this new information. This model is further constrained by another new piece of experimental evidence: that regular-looking NMDA-TTX oscillations can be obtained even after voltage-dependent potassium and high-voltage-activated calcium channels have been pharmacologically blocked. Our model conforms to several experimentally derived criteria that we have set up and is robust to parameter changes, as evaluated through sensitivity analysis. We use the model to re-analyze an old NMDA-TTX oscillation model, and suggest an explanation of why it failed to reproduce the new experimental data that we present here.
节律性是负责运动的神经网络的一个特征。在许多生物体中,N-甲基-D-天冬氨酸(NMDA)受体的激活会导致节律性运动模式的产生。此外,当通过应用河豚毒素(TTX)将单个神经元彼此药理学隔离时,它们可以显示出内在的、依赖NMDA的膜电位振荡。例如,在七鳃鳗运动网络神经元中已经对这种NMDA-TTX振荡进行了表征。已经提出了概念模型和计算模型来解释这些振荡的出现和特征。在这里,我们试图通过将新的实验证据与计算建模相结合来完善对NMDA-TTX振荡的理解。我们发现,与之前的计算预测相反,当NMDA浓度增加时,振荡频率往往会增加。我们开发了一个新的、最小化的计算模型,该模型可以纳入这一新信息。该模型进一步受到另一项新的实验证据约束:即使在电压依赖性钾通道和高电压激活钙通道被药理学阻断后,仍可获得看似规则的NMDA-TTX振荡。我们的模型符合我们建立的几个实验得出的标准,并且通过敏感性分析评估,对参数变化具有鲁棒性。我们使用该模型重新分析一个旧的NMDA-TTX振荡模型,并对其为何无法重现我们在此展示的新实验数据提出一种解释。