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A Deep Learning-Based Method for Automatic Detection of Epileptic Seizure in a Dataset With Both Generalized and Focal Seizure Types

机译:一种基于深入的学习方法,用于在数据集中自动检测癫痫发作的癫痫癫痫发作类型

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Epilepsy is the second most popular neurological disorder affecting 65 million people around the world. Seizures are classified into two kinds; focal and generalized ictal activities, reflecting the spread of seizure activity on the brain. Focal seizures start and affect specific regions of the brain, whereas the generalized propagates throughout the brain. Current approaches to developing an automatic seizure detection algorithm do not consider the types of seizures. However, to detect the focal seizures, the locations of onset of seizure must be identified by an expert through inspection of the electroencephalogram (EEG), which is an expensive and time-consuming procedure. Moreover, most proposed methods are patient-specific and cannot be generalized on an unseen patient, limiting the clinical usage of previous studies. This work presents a generalizable seizure detection algorithm by considering different seizure types. After pre-processing data and rejecting artifacts, a deep neural network is used to extract robust representations across seizures and a population. The proposed method includes deep recurrent and convolutional neural networks to capture spatial and temporal information simultaneously. Experiments on the TUH EEG seizure dataset, which contains both generalized and focal seizures, show that the proposed method increases the accuracy over state-of-the-art from 80.72% to 82%, precision from 67.55% to 71.69%, and sensitivity from 80% to 85%.
机译:癫痫是第二次最受欢迎的神经疾病,影响全世界6500万人。癫痫发作分为两种;焦点和广义的思科活动,反映了癫痫发作活动对大脑的传播。焦点癫痫发作开始并影响大脑的特定区域,而广义在整个大脑中传播。开发自动癫痫发作检测算法的当前方法不考虑癫痫发作的类型。然而,为了检测焦点癫痫发作,必须通过检查脑电图(EEG)的专家来识别癫痫发作的位置,这是一种昂贵且耗时的程序。此外,大多数提出的方法是患者特异性的,不能在看不见的患者上推广,限制了先前研究的临床使用情况。这项工作通过考虑不同的癫痫发布类型来呈现可通向的癫痫发作检测算法。在预处理数据和拒绝工件之后,使用深度神经网络用于提取癫痫发作和群体的强大表示。该方法包括深频和卷积神经网络,以同时捕获空间和时间信息。 TUH EEG癫痫发作数据集的实验,其中包含广义和焦点癫痫发作,表明该方法从80.72%增加到82%至82%,精度为67.55%至71.69%,以及敏感度80%至85%。

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