Department of Electrical Engineering, Technion Haifa, Israel.
Front Comput Neurosci. 2010 Apr 8;4. doi: 10.3389/fncom.2010.00003. eCollection 2010.
Recent experiments have demonstrated that the timescale of adaptation of single neurons and ion channel populations to stimuli slows down as the length of stimulation increases; in fact, no upper bound on temporal timescales seems to exist in such systems. Furthermore, patch clamp experiments on single ion channels have hinted at the existence of large, mostly unobservable, inactivation state spaces within a single ion channel. This raises the question of the relation between this multitude of inactivation states and the observed behavior. In this work we propose a minimal model for ion channel dynamics which does not assume any specific structure of the inactivation state space. The model is simple enough to render an analytical study possible. This leads to a clear and concise explanation of the experimentally observed exponential history-dependent relaxation in sodium channels in a voltage clamp setting, and shows that their recovery rate from slow inactivation must be voltage dependent. Furthermore, we predict that history-dependent relaxation cannot be created by overly sparse spiking activity. While the model was created with ion channel populations in mind, its simplicity and genericalness render it a good starting point for modeling similar effects in other systems, and for scaling up to higher levels such as single neurons which are also known to exhibit multiple time scales.
最近的实验表明,随着刺激时间的延长,单个神经元和离子通道群体对刺激的适应时间尺度会减慢;实际上,在这些系统中似乎不存在时间尺度的上限。此外,在单个离子通道上进行的膜片钳实验暗示了单个离子通道内存在大量的、主要不可观察的失活状态空间。这就提出了这样一个问题,即这众多的失活状态与观察到的行为之间存在着怎样的关系。在这项工作中,我们提出了一个离子通道动力学的最小模型,该模型不假设失活状态空间的任何特定结构。该模型足够简单,可以进行分析研究。这就清晰而简洁地解释了在电压钳设置下观察到的钠离子通道的实验性指数历史相关弛豫现象,并且表明它们从慢失活中恢复的速度必须与电压有关。此外,我们预测,历史相关的弛豫不能由过于稀疏的尖峰活动产生。虽然该模型是针对离子通道群体而创建的,但它的简单性和通用性使其成为在其他系统中建模类似效应的良好起点,并且可以扩展到更高的水平,如已知也表现出多个时间尺度的单个神经元。