Mustafa Zeki, College of Engineering and Technology, American University of the Middle East, Kuwait.
Sinan Kapçak, College of Engineering and Technology, American University of the Middle East, Kuwait.
Biomed Phys Eng Express. 2023 Jul 12;9(5). doi: 10.1088/2057-1976/ace3c6.
Biological neurons are typically modeled using the Hodgkin-Huxley formalism, which requires significant computational power to simulate. However, since realistic neural network models require thousands of synaptically coupled neurons, a faster approach is needed. Discrete dynamical systems are promising alternatives to continuous models, as they can simulate neuron activity in far fewer steps. Many existing discrete models are based on Poincaré-map-like approaches, which trace periodic activity at a cross section of the cycle. However, this approach is limited to periodic solutions. Biological neurons have many key properties beyond periodicity, such as the minimum applied current required for a resting cell to generate an action potential. To address these properties, we propose a discrete dynamical system model of a biological neuron that incorporates the threshold dynamics of the Hodgkin-Huxley model, the logarithmic relationship between applied current and frequency, modifications to relaxation oscillators, and spike-frequency adaptation in response to modulatory hyperpolarizing currents. It is important to note that several critical parameters are transferred from the continuous model to our proposed discrete dynamical system. These parameters include the membrane capacitance, leak conductance, and maximum conductance values for sodium and potassium ion channels, which are essential for accurately simulating the behavior of biological neurons. By incorporating these parameters into our model, we can ensure that it closely approximates the continuous model's behavior, while also offering a more computationally efficient alternative for simulating neural networks.
生物神经元通常使用 Hodgkin-Huxley 形式化方法进行建模,这种方法需要大量的计算能力来进行模拟。然而,由于现实的神经网络模型需要数千个突触耦合的神经元,因此需要一种更快的方法。离散动力系统是连续模型的有前途的替代方案,因为它们可以在更少的步骤中模拟神经元的活动。许多现有的离散模型都是基于类似于 Poincaré 映射的方法,这种方法可以在周期的一个横截面上追踪周期性活动。然而,这种方法仅限于周期性解。生物神经元具有许多超越周期性的关键特性,例如静止细胞产生动作电位所需的最小施加电流。为了解决这些特性,我们提出了一种生物神经元的离散动力系统模型,该模型结合了 Hodgkin-Huxley 模型的阈值动力学、施加电流与频率之间的对数关系、对弛豫振荡器的修改以及对调制超极化电流的频率适应。需要注意的是,几个关键参数从连续模型转移到了我们提出的离散动力系统中。这些参数包括膜电容、漏导和钠离子和钾离子通道的最大电导值,它们对于准确模拟生物神经元的行为是必不可少的。通过将这些参数纳入我们的模型,我们可以确保它与连续模型的行为非常接近,同时也为模拟神经网络提供了一种更具计算效率的替代方案。