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An adaptive singular spectrum analysis method for extracting brain rhythms of electroencephalography

机译:提取脑电图心律的自适应奇异谱分析方法

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摘要

Artifacts removal and rhythms extraction from electroencephalography (EEG) signals are important for portable and wearable EEG recording devices. Incorporating a novel grouping rule, we proposed an adaptive singular spectrum analysis (SSA) method for artifacts removal and rhythms extraction. Based on the EEG signal amplitude, the grouping rule determines adaptively the first one or two SSA reconstructed components as artifacts and removes them. The remaining reconstructed components are then grouped based on their peak frequencies in the Fourier transform to extract the desired rhythms. The grouping rule thus enables SSA to be adaptive to EEG signals containing different levels of artifacts and rhythms. The simulated EEG data based on the Markov Process Amplitude (MPA) EEG model and the experimental EEG data in the eyes-open and eyes-closed states were used to verify the adaptive SSA method. Results showed a better performance in artifacts removal and rhythms extraction, compared with the wavelet decomposition (WDec) and another two recently reported SSA methods. Features of the extracted alpha rhythms using adaptive SSA were calculated to distinguish between the eyes-open and eyes-closed states. Results showed a higher accuracy (95.8%) than those of the WDec method (79.2%) and the infinite impulse response (IIR) filtering method (83.3%).
机译:从脑电图(EEG)信号中去除伪像和节律对于便携式和可穿戴式EEG记录设备非常重要。结合一种新颖的分组规则,我们提出了一种自适应奇异谱分析(SSA)方法,用于去除伪影和提取节奏。基于EEG信号幅度,分组规则将前一个或两个SSA重构分量自适应地确定为伪像,并将其删除。然后,在傅立叶变换中根据剩余峰值成分的峰值频率对其进行分组,以提取所需的节奏。因此,分组规则使得SSA能够适应包含不同水平的伪影和节奏的EEG信号。基于马尔可夫过程振幅(MPA)EEG模型的模拟EEG数据以及睁眼和闭眼状态下的实验EEG数据用于验证自适应SSA方法。结果显示,与小波分解(WDec)和最近报道的另外两种SSA方法相比,在伪影去除和节奏提取方面具有更好的性能。计算使用自适应SSA提取的Alpha节律的特征,以区分睁眼和闭眼状态。结果表明,与WDec方法(79.2%)和无限冲激响应(IIR)滤波方法(83.3%)相比,其准确性更高(95.8%)。

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