Numerical simulation of neural activity based on discrete Markov chains with stochastic differential equations

Erhui Wang, Xuefei Luan
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Abstract

With the development of new numerical calculation methods and computer software science and technology, people can have a good understanding of the potential mechanisms of cerebrovascular diseases. Here, we combine the stochastic differential equation (SDE) of discrete Markov chains to numerically simulate the dynamic changes of neural signals, and find that the changes of neural signals exhibit regular fluctuations. By analyzing the variation of voltage over time, we know that the voltage change at the next moment is closely related to the previous moment and has continuity. Based on the knowledge of neural ion channel dynamics, it was found that there will be longer peak changes in voltage, exhibiting a power-law distribution, which is consistent with the actual situation and statistical data related to resignation channels. By analyzing the voltage and peak changes of ion channels, we can gain a new understanding of the transmission laws of neural information and greatly improve the biological mechanisms.
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基于离散马尔可夫链与随机微分方程的神经活动数值模拟
随着新的数值计算方法和计算机软件科学技术的发展,人们可以很好地了解脑血管疾病的潜在机制。在此,我们结合离散马尔可夫链的随机微分方程(SDE),对神经信号的动态变化进行数值模拟,发现神经信号的变化呈现出有规律的波动。通过分析电压随时间的变化,我们知道下一时刻的电压变化与上一时刻密切相关,具有连续性。根据神经离子通道动力学的知识,发现电压会有较长的峰值变化,呈现幂律分布,这与辞职通道的实际情况和相关统计数据是一致的。通过分析离子通道的电压和峰值变化,我们可以对神经信息的传递规律有新的认识,大大完善生物机制。
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