Department of Radiology and Clinical Research Center, Children’s Hospital Boston and Harvard Medical School, Boston, MA 02115, USA.
IEEE Trans Neural Syst Rehabil Eng. 2013 May;21(3):354-63. doi: 10.1109/TNSRE.2012.2201173. Epub 2012 Jun 4.
Noninvasive brain stimulation is one of very few potential therapies for medically refractory epilepsy. However, its efficacy remains suboptimal and its therapeutic value has not been consistently assessed. This is in part due to the nonoptimized spatio-temporal application of stimulation protocols for seizure prevention or arrest, and incomplete knowledge of the neurodynamics of seizure evolution. Through simulations, this study investigated electroencephalography (EEG)-guided, stochastic interference with aberrantly coordinated neuronal networks, to prevent seizure onset or interrupt a propagating partial seizure, and prevent it from spreading to large areas of the brain. Brain stimulation was modeled as additive white or band-limited noise, and simulations using real EEGs and data generated from a network of integrate-and-fire neuronal ensembles were used to quantify spatio-temporal noise effects. It was shown that additive stochastic signals (noise) may destructively interfere with network dynamics and decrease or abolish synchronization associated with progressively coupled networks. Furthermore, stimulation parameters, particularly amplitude and spatio-temporal application, may be optimized based on patient-specific neurodynamics estimated directly from noninvasive EEGs.
非侵入性脑刺激是治疗药物难治性癫痫的少数几种潜在疗法之一。然而,其疗效仍不尽如人意,其治疗价值也没有得到一致评估。这在一定程度上是由于刺激方案在预防或阻止癫痫发作方面的时空应用未得到优化,以及对癫痫演变的神经动力学了解不完整。本研究通过模拟,研究了针对异常协调的神经网络进行脑电图 (EEG) 引导的随机干扰,以防止癫痫发作或中断传播性部分性癫痫发作,并防止其扩散到大脑的大片区域。脑刺激被建模为加性白噪声或带限噪声,并使用来自整合和放电神经元网络的真实 EEG 和数据进行模拟,以量化时空噪声效应。结果表明,加性随机信号(噪声)可能会破坏网络动态,降低或消除与逐渐耦合网络相关的同步。此外,可以根据直接从非侵入性 EEG 估计的患者特定神经动力学来优化刺激参数,特别是幅度和时空应用。