Modelling Transition From Normal To Epileptic Eeg Signals: A Neuron-Astrocyte Mass Action Approach

H. A. Agboola, C. Solebo, D. Aribike, F. Lesi, A. Susu
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Abstract

Epileptic seizures occur intermittently as a result of complex dynamical interactions among many regions of the brain. The sudden and apparently unpredictable nature of refractory seizures is one of the most disabling aspects of the disease. Therefore, there is need for interdisciplinary research efforts directed at better understanding of the mechanisms involved in the emergence of epileptic seizures. Our research objective in this field is the use of applied methods from deterministic and nondeterministic dynamical systems modeling to study epilepsy. Dynamical systems refer to systems whose state variables evolve in time. By the assumption of deterministic system,the physiological system (the brain) can be treated as low dimensional without any random components. Nondeterministic assumption on the other hand allows randomness in some input components. We developed at the macroscopic level physiologically based mathematical models of parts of the brain believed to be eliciting the abnormal signals observed during Generalized Absence Epilepsy (GAE) and Temporal Lobe Epilepsy (TLE). In developing our models, we considered the activities of nerve cells, the surrounding astrocyte cells and the dynamics of extracellular neurotransmitters and conducted parameter sensitivity studies on our models. The models were then validated using Electroencephalogram (EEG) data of epileptic patients. The important conclusion from our findings is that the transition from normal to epileptic brain activity is critically dependent on small variations in few system parameters and/or the balance between a small number of system parameters, be it neural or astrocytes activity dependent
从正常到癫痫脑电图信号的建模转换:神经元-星形胶质细胞团作用方法
癫痫发作是间歇性发生的,这是大脑许多区域之间复杂的动态相互作用的结果。难治性癫痫发作的突发性和明显的不可预测性是该疾病最致残的方面之一。因此,有必要进行跨学科的研究,以更好地理解癫痫发作发生的机制。我们在这一领域的研究目标是利用确定性和非确定性动力系统建模的应用方法来研究癫痫。动态系统是指状态变量随时间变化的系统。通过确定性系统的假设,生理系统(大脑)可以看作是低维的,没有任何随机成分。另一方面,不确定性假设允许某些输入组件具有随机性。我们在宏观层面上建立了基于生理学的数学模型,这些模型被认为是引发全面性缺失癫痫(GAE)和颞叶癫痫(TLE)期间观察到的异常信号的大脑部分。在建立我们的模型时,我们考虑了神经细胞的活动、周围星形胶质细胞和细胞外神经递质的动态,并对我们的模型进行了参数敏感性研究。然后用癫痫患者的脑电图数据对模型进行验证。从我们的研究结果中得出的重要结论是,从正常到癫痫性脑活动的转变严重依赖于少数系统参数的微小变化和/或少数系统参数之间的平衡,无论是神经还是星形胶质细胞的活动依赖
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