Shayegh Farzaneh, Bellanger Jean-Jacques, Sadri Saied, Amirfattahi Rasoul, Ansari-Asl Karim, Senhadji Lotfi
Department of Electrical and Computer Engineering, Digital Signal Processing Research Lab, Isfahan University of Technology, Isfahan, Iran.
J Med Signals Sens. 2013 Jan;3(1):2-14.
Neural mass models are computational nonlinear models that simulate the activity of a population of neurons as an average neuron, in such a way that different inhibitory post-synaptic potential and excitatory post-synaptic potential signals could be reproduced. These models have been developed either to simulate the recognized neural mechanisms or to predict some physiological facts that are not easy to realize naturally. The role of the excitatory and inhibitory activity variation in seizure genesis has been proved, but it is not evident how these activities influence appearance of seizure like signals. In this paper a population model is considered in which the physiological inter-relation of the pyramidal and inter-neurons of the hippocampus has been appropriately modeled. The average neurons of this model have been assumed to act as a linear filter followed by a nonlinear function. By changing the gain of excitatory and inhibitory activities that are modeled by the gain of the filters, seizure-like signals could be generated. In this paper through the analysis of this nonlinear model by means of the describing function concepts, it is theoretically shown that not only the gains of the excitatory and inhibitory activities, but also the time constants may play an efficient role in seizure genesis.
神经团模型是一种计算非线性模型,它将一群神经元的活动模拟为一个平均神经元,从而能够再现不同的抑制性突触后电位和兴奋性突触后电位信号。这些模型的开发目的要么是模拟已被认可的神经机制,要么是预测一些自然条件下难以实现的生理事实。兴奋性和抑制性活动变化在癫痫发作产生中的作用已得到证实,但这些活动如何影响癫痫样信号的出现尚不清楚。本文考虑了一个群体模型,其中海马体锥体细胞和中间神经元之间的生理相互关系已得到适当建模。该模型的平均神经元被假定为一个线性滤波器后接一个非线性函数。通过改变由滤波器增益建模的兴奋性和抑制性活动的增益,可以生成癫痫样信号。本文通过运用描述函数概念对该非线性模型进行分析,从理论上表明,不仅兴奋性和抑制性活动的增益,而且时间常数在癫痫发作产生中也可能发挥有效作用。