Yu Lianchun, Liu Liwei
Institute of Theoretical Physics, Lanzhou University, Lanzhou 730000, China and Key Laboratory for Magnetism and Magnetic Materials of the Ministry of Education, Lanzhou University, Lanzhou 730000, China.
College of Electrical Engineering, Northwest University for Nationalities, Lanzhou 730070, China.
Phys Rev E Stat Nonlin Soft Matter Phys. 2014 Mar;89(3):032725. doi: 10.1103/PhysRevE.89.032725. Epub 2014 Mar 31.
The generation and conduction of action potentials (APs) represents a fundamental means of communication in the nervous system and is a metabolically expensive process. In this paper, we investigate the energy efficiency of neural systems in transferring pulse signals with APs. By analytically solving a bistable neuron model that mimics the AP generation with a particle crossing the barrier of a double well, we find the optimal number of ion channels that maximizes the energy efficiency of a neuron. We also investigate the energy efficiency of a neuron population in which the input pulse signals are represented with synchronized spikes and read out with a downstream coincidence detector neuron. We find an optimal number of neurons in neuron population, as well as the number of ion channels in each neuron that maximizes the energy efficiency. The energy efficiency also depends on the characters of the input signals, e.g., the pulse strength and the interpulse intervals. These results are confirmed by computer simulation of the stochastic Hodgkin-Huxley model with a detailed description of the ion channel random gating. We argue that the tradeoff between signal transmission reliability and energy cost may influence the size of the neural systems when energy use is constrained.
动作电位(APs)的产生和传导是神经系统中一种基本的通信方式,且是一个代谢成本高昂的过程。在本文中,我们研究了神经系统在通过动作电位传递脉冲信号时的能量效率。通过解析求解一个双稳神经元模型(该模型通过粒子穿越双阱势垒来模拟动作电位的产生),我们找到了使神经元能量效率最大化的最佳离子通道数量。我们还研究了神经元群体的能量效率,其中输入脉冲信号由同步尖峰表示,并由下游的符合检测神经元读出。我们找到了神经元群体中的最佳神经元数量以及每个神经元中使能量效率最大化的离子通道数量。能量效率还取决于输入信号的特征,例如脉冲强度和脉冲间隔。这些结果通过对随机霍奇金 - 赫胥黎模型的计算机模拟得到了证实,该模型详细描述了离子通道的随机门控。我们认为,当能量使用受到限制时,信号传输可靠性和能量成本之间的权衡可能会影响神经系统的规模。