Sritharan Duluxan, Sarma Sridevi V
Department of Biomedical Engineering, Johns Hopkins University, Baltimore, MD 21218, U.S.A.
Neural Comput. 2014 Oct;26(10):2294-327. doi: 10.1162/NECO_a_00644. Epub 2014 Jul 24.
Epilepsy is a network phenomenon characterized by atypical activity at the neuronal and population levels during seizures, including tonic spiking, increased heterogeneity in spiking rates, and synchronization. The etiology of epilepsy is unclear, but a common theme among proposed mechanisms is that structural connectivity between neurons is altered. It is hypothesized that epilepsy arises not from random changes in connectivity, but from specific structural changes to the most fragile nodes or neurons in the network. In this letter, the minimum energy perturbation on functional connectivity required to destabilize linear networks is derived. Perturbation results are then applied to a probabilistic nonlinear neural network model that operates at a stable fixed point. That is, if a small stimulus is applied to the network, the activation probabilities of each neuron respond transiently but eventually recover to their baseline values. When the perturbed network is destabilized, the activation probabilities shift to larger or smaller values or oscillate when a small stimulus is applied. Finally, the structural modifications to the neural network that achieve the functional perturbation are derived. Simulations of the unperturbed and perturbed networks qualitatively reflect neuronal activity observed in epilepsy patients, suggesting that the changes in network dynamics due to destabilizing perturbations, including the emergence of an unstable manifold or a stable limit cycle, may be indicative of neuronal or population dynamics during seizure. That is, the epileptic cortex is always on the brink of instability and minute changes in the synaptic weights associated with the most fragile node can suddenly destabilize the network to cause seizures. Finally, the theory developed here and its interpretation of epileptic networks enables the design of a straightforward feedback controller that first detects when the network has destabilized and then applies linear state feedback control to steer the network back to its stable state.
癫痫是一种网络现象,其特征在于发作期间神经元和群体水平的异常活动,包括强直性放电、放电率异质性增加以及同步化。癫痫的病因尚不清楚,但在提出的机制中一个共同的主题是神经元之间的结构连接性发生了改变。据推测,癫痫并非源于连接性的随机变化,而是源于网络中最脆弱节点或神经元的特定结构变化。在这封信中,推导了使线性网络不稳定所需的对功能连接性的最小能量扰动。然后将扰动结果应用于在稳定不动点运行的概率非线性神经网络模型。也就是说,如果向网络施加一个小刺激,每个神经元的激活概率会瞬时响应,但最终会恢复到其基线值。当受扰动的网络变得不稳定时,施加小刺激时激活概率会转移到更大或更小的值,或者发生振荡。最后,推导了实现功能扰动的神经网络的结构修改。对未受扰动和受扰动网络的模拟定性地反映了癫痫患者中观察到的神经元活动,这表明由于不稳定扰动导致的网络动力学变化,包括不稳定流形或稳定极限环的出现,可能指示发作期间的神经元或群体动力学。也就是说,癫痫皮层总是处于不稳定的边缘,与最脆弱节点相关的突触权重的微小变化可能会突然使网络不稳定而引发癫痫发作。最后,这里发展的理论及其对癫痫网络的解释使得能够设计一种直接的反馈控制器,该控制器首先检测网络何时变得不稳定,然后应用线性状态反馈控制将网络引导回其稳定状态。