Attention-based Graph ResNet with focal loss for epileptic seizure detection

IF 1.8 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Changxu Dong, Yanna Zhao, Gaobo Zhang, Mingrui Xue, Dengyu Chu, Jiatong He, Xinting Ge
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引用次数: 1

Abstract

Epilepsy is a chronic brain disease resulted from the central nervous system lesion, which leads to repeated seizure occurs for the patients. Automatic seizure detection with Electroencephalogram (EEG) has witnessed great progress. However, existing methods paid little attention to the topological relationships of different EEG electrodes. Latest neuroscience researches have demonstrated the connectivity between different brain regions. Besides, class-imbalance is a common problem in EEG based seizure detection. The duration of epileptic EEG signals is much shorter than that of normal signals. In order to deal with the above mentioned two challenges, we propose to model the multi-channel EEG data using the Attention-based Graph ResNet (AGRN). In particular, each channel of the EEG signal represents a node of the graph and the inter-channel relations are modeled via the adjacency matrix in the graph. The loss function of the ARGN model is re-designed using focal loss to cope with the class-imbalance problem. The proposed ARGN with focal model could learn discriminative features from the raw EEG data. Experiments are carried out on the CHB-MIT dataset. The proposed model achieves an average accuracy of 98.70%, a sensitivity of 97.94%, a specificity of 98.66% and a precision of 98.62%. The Area Under the ROC Curve (AUC) is 98.69%.
基于注意力的图ResNet与局灶丢失用于癫痫发作检测
癫痫是一种由中枢神经系统病变引起的慢性脑部疾病,患者会反复发作。脑电图(EEG)自动检测癫痫发作已经取得了很大的进展。然而,现有的方法很少关注不同脑电电极之间的拓扑关系。最新的神经科学研究已经证明了大脑不同区域之间的连通性。此外,类不平衡是基于脑电图的癫痫发作检测中常见的问题。癫痫性脑电图信号的持续时间比正常脑电图信号短得多。为了应对上述两个挑战,我们提出使用基于注意力的图ResNet (Attention-based Graph ResNet,简称agn)对多通道脑电数据进行建模。其中,脑电信号的每个通道代表图的一个节点,通道间关系通过图中的邻接矩阵建模。利用焦点损失对ARGN模型的损失函数进行了重新设计,以解决类不平衡问题。提出的带焦点模型的ARGN可以从原始脑电数据中学习判别特征。在CHB-MIT数据集上进行了实验。该模型平均准确率为98.70%,灵敏度为97.94%,特异性为98.66%,精密度为98.62%。ROC曲线下面积(AUC)为98.69%。
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来源期刊
Journal of Ambient Intelligence and Smart Environments
Journal of Ambient Intelligence and Smart Environments COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, INFORMATION SYSTEMS
CiteScore
4.30
自引率
17.60%
发文量
23
审稿时长
>12 weeks
期刊介绍: The Journal of Ambient Intelligence and Smart Environments (JAISE) serves as a forum to discuss the latest developments on Ambient Intelligence (AmI) and Smart Environments (SmE). Given the multi-disciplinary nature of the areas involved, the journal aims to promote participation from several different communities covering topics ranging from enabling technologies such as multi-modal sensing and vision processing, to algorithmic aspects in interpretive and reasoning domains, to application-oriented efforts in human-centered services, as well as contributions from the fields of robotics, networking, HCI, mobile, collaborative and pervasive computing. This diversity stems from the fact that smart environments can be defined with a variety of different characteristics based on the applications they serve, their interaction models with humans, the practical system design aspects, as well as the multi-faceted conceptual and algorithmic considerations that would enable them to operate seamlessly and unobtrusively. The Journal of Ambient Intelligence and Smart Environments will focus on both the technical and application aspects of these.
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