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Ultra Broad Band Neural Activity Portends Seizure Onset in a Rat Model of Epilepsy

机译:超宽带神经活动预示癫痫大鼠模型中发作。

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Epilepsy affects over 70 million people worldwide and 30% of patients' seizures cannot be controlled with medications, motivating the development of alternative therapies such as electrical stimulation. Current stimulation strategies attempt to stop seizures after they start, but none aim to prevent seizures altogether. Preventing seizures requires knowing when the brain is entering a preictal state (i.e., approaching seizure onset). Here we show that such preictal activity can be detected by an informative neural signal that progressively and monotonically changes as the brain approaches a seizure event. Specifically, we use local field potentials (LFP) from a rat model of epilepsy to develop an innovative measure of signal novelty relative to nonseizure activity, that shows the presence of progressive neural dynamics in an ultra broad band (4 Hz - 5 kHz). The measure is extracted from functional connectivity features computed from the LFPs which are used as an input to a one-class Support Vector Machine (SVM). The SVM outputs a scalar signal which quantifies how novel the current activity looks relative to baseline (non-seizure) activity and shows a progression towards seizure onset minutes ahead of time. The use of ultra broad band multivariate features into the SVM results in a novelty signal that has a significantly higher slope in the progression to seizure onset when compared to using power in conventional frequency bands (4 - 500 Hz) on individual channels as input features to the SVM. Functional connectivity in conjunction with the SVM is a strategy that generates a new measurement of novelty that can be used by closed-loop systems for seizure forecasting and prevention.
机译:癫痫病影响全世界超过7000万人,药物无法控制30%的癫痫发作,从而激发了替代疗法的发展,例如电刺激。当前的刺激策略试图在发作开始后停止发作,但是没有一种旨在完全预防发作的目标。预防癫痫发作需要知道大脑何时进入癫痫发作状态(即接近癫痫发作)。在这里,我们表明,这种信息交换活动可以通过信息丰富的神经信号来检测,该信号随着大脑接近癫痫发作而逐渐单调变化。具体而言,我们使用癫痫大鼠模型中的局部场电势(LFP)来开发相对于非癫痫发作活动的信号新颖性的创新度量,这表明在超宽带(4 Hz-5 kHz)中存在进行性神经动力学。该度量是从LFP计算出的功能连接功能中提取的,这些功能被用作一类支持向量机(SVM)的输入。 SVM输出一个标量信号,该信号量化了当前活动相对于基线(非癫痫发作)活动的新颖程度,并显示了提前几分钟发生癫痫发作的进程。与在单个通道上使用常规频段(4-500 Hz)中的功率作为输入的特征相比,在SVM中使用超宽带多变量特征可产生新颖性信号,该信号在发作发作的过程中具有明显更高的斜率。 SVM。与SVM结合使用的功能连接是一种策略,可产生新的新颖性度量,闭环系统可将其用于癫痫发作预测和预防。

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