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Prediction of the Seizure Suppression Effect by Electrical Stimulation via a Computational Modeling Approach

机译:通过计算建模方法通过电刺激预测癫痫发作抑制作用

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摘要

In this paper, we identified factors that can affect seizure suppression via electrical stimulation by an integrative study based on experimental and computational approach. Preferentially, we analyzed the characteristics of seizure-like events (SLEs) using our previous in vitro experimental data. The results were analyzed in two groups classified according to the size of the effective region, in which the SLE was able to be completely suppressed by local stimulation. However, no significant differences were found between these two groups in terms of signal features or propagation characteristics (i.e., propagation delays, frequency spectrum, and phase synchrony). Thus, we further investigated important factors using a computational model that was capable of evaluating specific influences on effective region size. In the proposed model, signal transmission between neurons was based on two different mechanisms: synaptic transmission and the electrical field effect. We were able to induce SLEs having similar characteristics with differentially weighted adjustments for the two transmission methods in various noise environments. Although the SLEs had similar characteristics, their suppression effects differed. First of all, the suppression effect occurred only locally where directly received the stimulation effect in the high noise environment, but it occurred in the entire network in the low noise environment. Interestingly, in the same noise environment, the suppression effect was different depending on SLE propagation mechanism; only a local suppression effect was observed when the influence of the electrical field transmission was very weak, whereas a global effect was observed with a stronger electrical field effect. These results indicate that neuronal activities synchronized by a strong electrical field effect respond more sensitively to partial changes in the entire network. In addition, the proposed model was able to predict that stimulation of a seizure focus region is more effective for suppression. In conclusion, we confirmed the possibility of a computational model as a simulation tool to analyze the efficacy of deep brain stimulation (DBS) and investigated the key factors that determine the size of an effective region in seizure suppression via electrical stimulation.
机译:在本文中,我们通过基于实验和计算方法的综合研究,确定了可通过电刺激影响癫痫发作抑制的因素。优选地,我们使用之前的体外实验数据分析了癫痫样事件(SLE)的特征。将结果分为两组,根据有效区域的大小进行分类,其中可以通过局部刺激完全抑制SLE。然而,在信号特征或传播特性(即传播延迟,频谱和相位同步)方面,两组之间没有发现显着差异。因此,我们使用能够评估对有效区域大小的特定影响的计算模型进一步研究了重要因素。在提出的模型中,神经元之间的信号传输基于两种不同的机制:突触传输和电场效应。通过在各种噪声环境中对两种传输方法进行差分加权调整,我们能够得出具有相似特性的SLE。尽管SLE具有相似的特性,但其抑制效果却有所不同。首先,抑制作用仅在高噪声环境中直接接收到刺激作用的局部发生,而在低噪声环境中在整个网络中发生。有趣的是,在相同的噪声环境下,抑制效果取决于SLE传播机制。当电场传输的影响非常弱时,仅观察到局部抑制效应,而在电场效应更强的情况下观察到整体效应。这些结果表明,由强电场效应同步的神经元活动对整个网络中的部分变化更为敏感。另外,提出的模型能够预测癫痫发作重点区域的刺激对抑制更为有效。总之,我们确认了计算模型作为模拟工具来分析深部脑刺激(DBS)功效的可能性,并研究了确定通过电刺激抑制癫痫发作有效区域大小的关键因素。

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