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A Study of Pattern Recognition in Children Using Single-Channel Electroencephalogram for Specialized Electroencephalographic Devices

机译:儿童专用脑电图单通道脑电图模式识别的研究

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In this paper, we aim to classify two classes in children by using single-channel electroencephalogram (EEG). EEG has been used to define neural patterns and to adjust the wide applicability to a larger population of healthy and diseased users. Specialized EEG devices have recently developed as for compact and portable measurement system using them in the real environment. If there is a multiplex state estimation system with EEG through a specialized EEG device, it would be a powerful tool for neuro-science studies and clinical applications. We first focused on the state of concentration; therefore, two kinds of single-channel EEG signals (during meditation and concentration) from 10 children were measured. Recordings were processed to remove artifacts, and then extracted their periodic or nonperiodic features by three methods (Fourier transform, wavelet transform, and empirical mode decomposition). Elastic net logistic regression constructed predictive models to classify two classes of the optimized extracted features. A model showed 0.988 area under the receiver-operating characteristic curve when wavelet transform was selected as feature extraction method. We next construct a multiplex state estimation system. Finally, we will make portable applications using a specialized EEG device that include the multiplex model and encourage children to develop the child's sense.
机译:本文旨在通过单通道脑电图(EEG)对儿童进行两类分类。脑电图已被用于定义神经模式,并调整其适用于更大范围的健康和患病用户的群体。最近,针对在实际环境中使用它们的紧凑型便携式测量系统,专门开发了EEG设备。如果存在通过专用EEG设备通过EEG进行的多态状态估计系统,那么它将是用于神经科学研究和临床应用的强大工具。我们首先关注专注状态;因此,测量了来自10名儿童的两种单通道EEG信号(冥想和集中注意力期间)。处理记录以去除伪像,然后通过三种方法(傅立叶变换,小波变换和经验模式分解)提取其周期性或非周期性特征。弹性网逻辑回归构建了预测模型,以对两类优化的提取特征进行分类。当选择小波变换作为特征提取方法时,模型在接收器操作特性曲线下显示0.988面积。接下来,我们构建一个多路复用状态估计系统。最后,我们将使用包括多重模型在内的专用EEG设备进行便携式应用程序开发,并鼓励孩子发展孩子的感觉。

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