Towards an Hybrid Hodgkin-Huxley Action Potential Generation Model

Lautaro Estienne
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Abstract

Mathematical models for the generation of the action potential can improve the understanding of physiological mechanisms that are consequence of the electrical activity in neurons. In such models, some equations involving empirically obtained functions of the membrane potential are usually defined. The best known of these models, the Hodgkin-Huxley model, is an example of this paradigm since it defines the conductances of ion channels in terms of the opening and closing rates of each type of gate present in the channels. These functions need to be derived from laboratory measurements that are often very expensive and produce little data because they involve a time-space-independent measurement of the voltage in a single channel of the cell membrane. In this work, we investigate the possibility of finding the Hodgkin-Huxley model’s parametric functions using only two simple measurements (the membrane voltage as a function of time and the injected current that triggered that voltage) and applying Deep Learning methods to estimate these functions. This would result in an hybrid model of the action potential generation composed by the original Hodgkin-Huxley equations and an Artificial Neural Network that requires a small set of easy-to-perform measurements to be trained. Experiments were carried out using data generated from the original Hodgkin-Huxley model, and results show that a simple two-layer artificial neural network (ANN) architecture trained on a minimal amount of data can learn to model some of the fundamental proprieties of the action potential generation by estimating the model’s rate functions.
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一个混合霍奇金-赫胥黎动作电位生成模型
动作电位产生的数学模型可以提高对神经元电活动的生理机制的理解。在这些模型中,通常定义一些涉及经验得到的膜电位函数的方程。这些模型中最著名的是霍奇金-赫胥黎模型,它是这种范式的一个例子,因为它根据通道中每种栅极的打开和关闭速率来定义离子通道的电导。这些功能需要从实验室测量中推导出来,这些测量通常非常昂贵,而且产生的数据很少,因为它们涉及对细胞膜单个通道中的电压进行时空无关的测量。在这项工作中,我们研究了仅使用两种简单测量(膜电压作为时间的函数和触发该电压的注入电流)找到霍奇金-赫胥黎模型参数函数并应用深度学习方法估计这些函数的可能性。这将导致由原始霍奇金-赫胥黎方程和人工神经网络组成的动作电位生成的混合模型,该模型需要训练一小组易于执行的测量。利用原始霍奇金-赫胥黎模型生成的数据进行实验,结果表明,一个简单的两层人工神经网络(ANN)架构可以通过估计模型的速率函数来学习动作电位生成的一些基本特性。
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