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Automatic Detection of Ictal Activity in EEG Channels using Synchronization Attributes

机译:使用同步属性自动检测EEG通道中的ICTAL活动

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To aid doctors with the process of scanning long-term Electroencephalogram (EEG) records for seizure detection, automatic seizure detectors (ASD) have been proposed. ASD have many clinical uses and have gained much recent interest in the past few decades. However, due to high computational loads of the ASD algorithms; their real-time application has been hindered. The aim of this work is to build a detector that has low complexity and can detect seizures with high sensitivity and minimum latency. To this end, this paper proposes a patient-specific seizure onset detector that uses a single feature based on neural synchrony as it has been shown that once the brain approaches ictal activity, neural activity becomes less chaotic and more synchronous. Leveraging on this phenomena, the condition number is utilized to measure the synchronization between EEG channels. The developed detector has three main stages: preprocessing, condition number calculation and classification. After filtering an input EEG record, the condition number of an EEG window is computed and fed into a classifier that determines whether the current window is normal or abnormal. Classification was done by two forms of a support vector machine (SVM) classifier; namely, binary SVM and a one-class SVM. The developed detector was evaluated using the CHB-MIT dataset and was evaluated using 10 patients from this dataset. The proposed detector achieved a sensitivity of 97% and a maximum false positive rate of five false alarms per hour. The performance of the detector is comparable to seizure detectors that use multiple features; but lightweight for use for real-time processing of EEG data.
机译:为了帮助医生使用扫描长期脑电图(EEG)记录进行癫痫发作检测的记录,已经提出了自动癫痫发作探测器(ASD)。 ASD有许多临床用途,并且在过去的几十年里获得了最近的兴趣。但是,由于ASD算法的高计算负载;他们的实时申请已被阻碍。这项工作的目的是建立一个具有低复杂性的探测器,并且可以检测具有高灵敏度和最小延迟的癫痫发作。为此,本文提出了一种特定于患者特异性癫痫发作的探测器,其使用基于神经同步的单个特征,因为已经表明,一旦大脑接近ICTAL活性,神经活动变得不那么混乱和更同步。利用此现象,使用条件号来测量EEG信道之间的同步。发达的探测器有三个主要阶段:预处理,条件号计算和分类。过滤输入EEG记录后,计算EEG窗口的条件号,并将其馈入分类,该分类器确定当前窗口是否正常或异常。分类是通过两种形式的支持向量机(SVM)分类器完成;即,二进制SVM和单级SVM。使用CHB-MIT数据集评估开发的检测器,并使用来自此数据集的10名患者进行评估。所提出的探测器达到97%的灵敏度,每小时5个误报的最大误率。探测器的性能与使用多个特征的癫痫探测器相当;但是轻量级用于用于EEG数据的实时处理。

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