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Pattern extraction in interictal EEG recordings towards detection of electrodes leading to seizures.

机译:发作间期脑电图记录中的模式提取,用于检测导致癫痫发作的电极。

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This study introduces an algorithm for a new application dedicated at discriminating between electrodes leading to a seizure onset and those that do not lead to seizure using interictal subdural EEG data. The significance of this study is in determining among all of these channels, all containing interictal spikes that are asynchronously, independent of region and time, which are selected randomly (these EEG portions may or may not contain spikes), and yet through the developed algorithm, we are able to classify those channels that lead to seizure and those that do not. The main zones of ictal activity are supposed to evolve from the tissue located at the channels that present interictal activity, but sometimes this is no the case. The purpose is to gain a better understanding of the dynamics of the human brain through a study of subdural EEG, with an emphasis on attempting to characterize the common behaviors of interictal EEG channels prior to an ictal activity. The study will try to correlate the clinical features with the EEG findings and to determine whether the patient has a consistent source of ictal activity, which is coming from the location of the group of channels that present interictal activity. If a method was found to detect the electrodes that present interictal activity, with the most potential to lead to an pileptic seizure, then the epilepsy focus could be located with a higher degree of certainty. This analysis allows for the detection of neurological disorders due to epileptic activity in the brain, and rings out how different patients react prior to a seizure.
机译:这项研究介绍了一种新应用的算法,该算法专用于使用小脑硬膜下脑电图数据来区分导致癫痫发作的电极和不会导致癫痫发作的电极。这项研究的意义在于确定所有这些通道中是否都包含异步的尖峰尖峰,这些尖峰尖峰与区域和时间无关,并且是随机选择的(这些EEG部分可能包含或不包含尖峰),并且通过开发的算法,我们可以对导致癫痫发作的渠道和未导致癫痫发作的渠道进行分类。眼动活动的主要区域应该从出现眼动活动的通道处的组织演变而来,但有时并非如此。目的是通过对硬脑膜下脑电图的研究来更好地了解人脑的动态,重点是试图在发作前先刻画耳间脑电图通道的常见行为。该研究将试图将临床特征与脑电图结果相关联,并确定患者是否具有一致的发作活动来源,该发作活动源于发作发作活动的通道组的位置。如果找到一种方法来检测存在间质活动的电极,最有可能导致癫痫性癫痫发作,那么可以更确定地定位癫痫病灶。这种分析可以检测出由于大脑中的癫痫活动而引起的神经系统疾病,并可以了解不同患者在癫痫发作之前的反应。

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