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Independent component analysis of sparse-transformed EEG signals for ADHDormal adults' classification

机译:稀疏转换的脑电信号的独立成分分析,用于多动症/正常成年人的分类

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The present study investigates the EEG source differences between adults with ADHD and aged match controls. The processing method is based on sparse representation of electrode signals and complex-valued independent component analysis with a robust measure of sparseness. Combination of scalp topography, estimated dipole source location and spectral patterns of resulted ICs were used to k-means clustering and identification of near-equivalent ICs across subjects. Several frequency features were extracted from clustered ICs and individually submitted to k-nn classifier. The best resulted accuracy was 86.36% using f feature at R-parietal cluster. Eight pairs of features resulted in such accuracy. The method used in this study not only improves the participant's classification accuracy compared to reference analysis, but also better identifies the dynamic of brain source signals than time-domain ICA algorithms.
机译:本研究调查了患有多动症的成年人与年龄匹配的对照组之间的脑电图来源差异。该处理方法基于电极信号的稀疏表示和具有健壮性的稀疏性的复数值独立分量分析。头皮形貌,估计的偶极子源位置和所得IC的光谱图案的组合被用于k均值聚类和跨受试者识别几乎等效的IC。从集群IC中提取了几个频率特征,并分别提交给k-nn分类器。使用R-顶叶簇的f特征,得到的最佳结果精度为86.36%。八对特征导致了这种准确性。与参考分析相比,本研究中使用的方法不仅提高了参与者的分类准确性,而且比时域ICA算法更好地识别了脑源信号的动态。

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