首页> 外文期刊>Epilepsia: Journal of the International League against Epilepsy >Epilepsies as dynamical diseases of brain systems: basic models of the transition between normal and epileptic activity.
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Epilepsies as dynamical diseases of brain systems: basic models of the transition between normal and epileptic activity.

机译:癫痫病是大脑系统的动态疾病:正常活动和癫痫活动之间转换的基本模型。

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Purpose: The occurrence of abnormal dynamics in a physiological system can become manifest as a sudden qualitative change in the behavior of characteristic physiologic variables. We assume that this is what happens in the brain with regard to epilepsy. We consider that neuronal networks involved in epilepsy possess multistable dynamics (i.e., they may display several dynamic states). To illustrate this concept, we may assume, for simplicity, that at least two states are possible: an interictal one characterized by a normal, apparently random, steady -state of ongoing activity, and another one that is characterized by the paroxysmal occurrence of a synchronous oscillations (seizure). Methods: By using the terminology of the mathematics of nonlinear systems, we can say that such a bistable system has two attractors, to which the trajectories describing the system's output converge, depending on initial conditions and on the system's parameters. In phase-space, the basins of attraction corresponding to the two states are separated by what is called a separatrix. normal ongoing and the seizure activity can take place according to three basic models: Model I: In certain epileptic brains (e.g., in absence seizures of idiopathic primary generalized epilepsies), the distance between "normal steady -state" and "paroxysmal" attractors is very small in contrast to that of a normal brain (possibly due to genetic and/or developmental factors). In the former, discrete random fluctuations of some variables can be sufficient for the occurrence of a transition to the paroxysmal state. In this case, such seizures are not predictable. Model II and model III: In other kinds of epileptic brains (e.g., limbic cortex epilepsies), the distance between "normal steady-state" and "paroxysmal" attractors is, in general, rather large, such that random fluctuations, of themselves, are commonly not capable of triggering a seizure. However, in these brains, neuronal networks have abnormal features characterized by unstable parameters that are very vulnerable to the influence of endogenous (model II) and/or exogenous (model III) factors. In these cases, these critical parameters may gradually change with time, in such a way that the attractor can deform either gradually or suddenly, with the consequence that the distance between the basin of attraction of the normal state and the separatrix tends to zero. This can lead, eventually, to a transition to a seizure. Results: The changes of the system's dynamics preceding a seizure in these models either may be detectable in the EEG and thus the route to the seizure may be predictable, or may be unobservable by using only measurements of the dynamical state. It is thinkable, however, that in some cases, changes in the excitability state of the underlying networks may be uncovered by using appropriate stimuli configurations before changes in the dynamics of the ongoing EEG activity are evident. A typical example of model III that we discuss here is photosensitive epilepsy. Conclusions: We presentan overview of these basic models, based on neurophysiologic recordings combined with signal analysis and on simulations performed by using computational models of neuronal networks. We pay especial attention to recent model studies and to novel experimental results obtained while analyzing EEG features preceding limbic seizures and during intermittent photic stimulation that precedes the transition to paroxysmal epileptic activity.
机译:目的:生理系统中异常动态的发生可以表现为特征性生理变量行为的突然质变。我们假设这就是癫痫病在大脑中发生的情况。我们认为参与癫痫的神经元网络具有多稳态动力学(即,它们可能显示几种动力学状态)。为了说明这一概念,为简单起见,我们可以假设至少有两种状态是可能的:中间状态的一个特征是持续活动的正常,显然是随机的稳定状态,而另一状态的特征是阵发性发作同步振荡(发作)。方法:通过使用非线性系统数学的术语,我们可以说这样的双稳态系统具有两个吸引子,根据初始条件和系统参数,描述系统输出的轨迹会收敛到这些吸引子。在相空间中,对应于两个状态的吸引盆被所谓的分离线分隔开。正常进行和癫痫发作活动可根据以下三种基本模型进行:模型I:在某些癫痫病的大脑中(例如,在没有发作的特发性原发性全身性癫痫发作中),“正常稳态”和“阵发性”吸引子之间的距离为与正常大脑相比很小(可能是由于遗传和/或发育因素)。在前者中,某些变量的离散随机波动足以发生向阵发性状态的转变。在这种情况下,这种癫痫发作是不可预测的。模型II和模型III:在其他类型的癫痫性大脑(例如,边缘皮质癫痫)中,“正常稳态”和“阵发性”吸引子之间的距离通常较大,以至于它们自身的随机波动,通常无法引发癫痫发作。但是,在这些大脑中,神经元网络具有异常特征,其特征是不稳定的参数,这些参数非常容易受到内源性(模型II)和/或外源性(模型III)因素的影响。在这些情况下,这些关键参数可能会随时间逐渐变化,以至于吸引子会逐渐或突然变形,从而导致正常状态的吸引盆和分体之间的距离趋于零。这最终可能导致过渡为癫痫发作。结果:在这些模型中,癫痫发作之前系统动力学的变化或者可以在EEG中检测到,因此癫痫发作的路径可能是可预测的,或者仅通过动态状态的测量就无法观察到。但是,可以想到的是,在某些情况下,在进行中的脑电图活动的动态变化明显之前,可以通过使用适当的刺激配置来发现基础网络的兴奋性状态变化。我们在这里讨论的模型III的一个典型例子是光敏性癫痫。结论:我们基于神经生理学记录结合信号分析以及通过使用神经元网络的计算模型进行的仿真,对这些基本模型进行了概述。我们特别关注最近的模型研究以及在分析边缘性癫痫发作之前和发作性癫痫发作过渡之前的间歇性光刺激期间的脑电图特征时获得的新颖实验结果。

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