Detecting ADHD children based on EEG signals using Graph Signal Processing techniques

A. Einizade, M. Mozafari, M. Rezaei-Dastjerdehei, Elnaz Aghdaei, A. Mijani, Sepideh Hajipour Sardouie
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引用次数: 2

Abstract

Attention Deficit Hyperactivity Disorder (ADHD) is a neurological disorder that is the most common childhood disorder. A significant lack of attention and concentration of the child is one of the apparent symptoms of this disorder. Accurate and early diagnosis of this disorder in preschool ages can help the control process and prevent the school problems caused by ADHD. Medical methods for preschool-age children can be problematic and slow down the control process. In these cases, Electroencephalogram (EEG) signals are useful and efficient tools, because of the non-invasiveness, being quite available, and having high temporal resolution. In this paper, we proposed a method to detect ADHD/Normal EEG signals recorded from children in an online and open access dataset. Our proposed method uses the Structural and Functional information of the EEG signals. Structural and functional based features were extracted using Graph Signal Processing (GSP) and Graph Learning (GL) techniques, respectively, which are the generalization of the Classic methods and can consider EEG signals as graph signals on the underlying graph of electrodes. We reached detection accuracies of 79.03% and 82.36% for using GSP and GL based features, respectively. But when we used the fusion of these feature sets, we got a high detection accuracy of 93.47% which shows these feature sets are complementary and consider thorough aspects of EEG signals.
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基于图信号处理技术的ADHD儿童脑电信号检测
注意缺陷多动障碍(ADHD)是一种神经系统疾病,是最常见的儿童疾病。儿童明显缺乏注意力和注意力集中是这种疾病的明显症状之一。在学龄前对这种障碍进行准确和早期的诊断可以帮助控制过程并预防ADHD引起的学校问题。学龄前儿童的医疗方法可能会有问题,并减缓控制过程。在这些情况下,脑电图(EEG)信号是有用和有效的工具,因为它是非侵入性的,很容易获得,并且具有高时间分辨率。在本文中,我们提出了一种检测在线和开放获取数据集中儿童ADHD/正常脑电图信号的方法。该方法利用了脑电信号的结构信息和功能信息。基于结构和基于功能的特征分别使用图信号处理(GSP)和图学习(GL)技术提取,它们是经典方法的推广,可以将脑电信号视为电极底层图上的图信号。我们使用基于GSP和GL的特征分别达到了79.03%和82.36%的检测准确率。但是当我们使用这些特征集的融合时,我们得到了高达93.47%的检测准确率,这表明这些特征集是互补的,并且考虑了脑电信号的各个方面。
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