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Deep Learning for Interictal Epileptiform Spike Detection from scalp EEG frequency sub bands

机译:深度学习从头皮EEG频率子带检测发作间癫痫样峰

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Epilepsy diagnosis through visual examination of interictal epileptiform discharges (IEDs) in scalp electroencephalogram (EEG) signals is a challenging problem. Deep learning methods can be an automated way to perform this task. In this work, we present a new approach based on convolutional neural network (CNN) to detect IEDs from EEGs automatically. The input to CNN is a combination of raw EEG and frequency sub-bands, namely delta, theta, alpha and, beta arranged as a vector for one-dimensional (1D) CNN or matrix for two-dimensional (2D) CNN. The proposed method is evaluated on 554 scalp EEGs. The database consists of 18,164 IEDs marked by two neurologists. Five-fold cross-validation was performed to assess the IED detectors. The resulting 1D CNN based IED detector with multiple sub-bands achieved a false positive rate per minute of 0.23 and a precision of 0.79 at 90% sensitivity. Further, the proposed system is evaluated on datasets from three other clinics, and the features extracted from CNN outputs could significantly discriminate (p-values < 0.05) the EEGs with and without IEDs. We have proposed an optimized method with better performance than the literature that could aid clinicians to diagnose epilepsy expeditiously, and thereby devise proper treatment.
机译:通过视觉检查头皮脑电图(EEG)信号中的发作性癫痫样放电(IED),进行癫痫诊断是一个具有挑战性的问题。深度学习方法可以是执行此任务的自动化方法。在这项工作中,我们提出了一种基于卷积神经网络(CNN)的新方法来自动从EEG中检测IED。 CNN的输入是原始EEG和频率子带的组合,即作为一维(1D)CNN的向量或二维(2D)CNN的矩阵排列的delta,theta,alpha和beta。该方法在554头皮脑电图上进行了评估。该数据库由两名神经科医生标记的18,164个IED组成。进行了五次交叉验证,以评估IED检测器。所得的具有多个子带的基于1D CNN的IED检测器在90%的灵敏度下实现了每分钟0.23的误报率和0.79的精度。此外,在来自其他三个诊所的数据集上对提出的系统进行了评估,并且从CNN输出中提取的特征可以显着地区分(p值<0.05)有和没有IED的脑电图。我们提出了一种性能比文献更好的优化方法,可以帮助临床医生快速诊断癫痫,从而设计出适当的治疗方法。

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