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EEG Classification based on Image Configuration in Social Anxiety Disorder

机译:基于社交焦虑障碍中图像结构的脑电分类

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The problem of detecting the presence of Social Anxiety Disorder (SAD) using Electroencephalography (EEG) for classification has seen limited study and is addressed with a new approach that seeks to exploit the knowledge of EEG sensor spatial configuration. Two classification models, one which ignores the configuration (model 1) and one that exploits it with different interpolation methods (model 2), are studied. Performance of these two models is examined for analyzing 34 EEG data channels each consisting of five frequency bands and further decomposed with a filter bank. The data are collected from 64 subjects consisting of healthy controls and patients with SAD. Validity of our hypothesis that model 2 will significantly outperform model 1 is borne out in the results, with accuracy 6- 7% higher for model 2 for each machine learning algorithm we investigated. Convolutional Neural Networks (CNN) were found to provide much better performance than SVM and kNNs.
机译:使用脑电图(EEG)进行分类来检测社交焦虑症(SAD)的存在问题的研究有限,并通过寻求利用EEG传感器空间配置知识的新方法得以解决。研究了两种分类模型,一种忽略配置(模型1),另一种利用不同的插值方法加以利用(模型2)。检查了这两个模型的性能,以分析34个EEG数据通道,每个通道均由五个频带组成,并用滤波器组进一步分解。数据收集自64位健康对照者和SAD患者。结果表明,模型2的性能将大大优于模型1的假设的有效性,对于我们研究的每种机器学习算法,模型2的准确性要高6%至7%。发现卷积神经网络(CNN)比SVM和kNN具有更好的性能。

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