IEEE J Biomed Health Inform. 2021 Aug;25(8):2895-2905. doi: 10.1109/JBHI.2021.3057891. Epub 2021 Aug 5.
Eye blink is one of the most common artifacts in electroencephalogram (EEG) and significantly affects the performance of the EEG related applications, such as epilepsy recognition, spike detection, encephalitis diagnosis, etc. To achieve an accurate and efficient eye blink detection, a novel unsupervised learning algorithm based on a hybrid thresholding followed with a Gaussian mixture model (GMM) is presented in this paper. The EEG signal is priliminarily screened by a cascaded thresholding method built on the distributions of signal amplitude, amplitude displacement, as well as the cross channel correlation. Then, the channel correlation of the two frontal electrodes (FP1, FP2), the fractal dimension, and the mean of amplitude difference between FP1 and FP2, are extracted to characterize the filtered EEGs. The GMM trained on these features is applied for the eye blink detection. The performance of the proposed algorithm is studied on two EEG datasets collected by the Temple University Hospital (TUH) and the Children's Hospital, Zhejiang University School of Medicine (CHZU), where the datasets are recorded from epilepsy and encephalitis patients, and contain a lot of eye blink artifacts. Experimental results show that the proposed algorithm can achieve the highest detection precision and F1 score over the state-of-the-art methods.
眨眼是脑电图 (EEG) 中最常见的伪迹之一,会显著影响 EEG 相关应用的性能,例如癫痫识别、棘波检测、脑炎诊断等。为了实现准确高效的眨眼检测,本文提出了一种基于混合闽值和高斯混合模型 (GMM) 的新型无监督学习算法。该算法通过基于信号幅度、幅度位移以及通道间相关分布的级联闽值方法对 EEG 信号进行初步筛选。然后,提取两个额部电极 (FP1、FP2) 的通道相关性、分形维数以及 FP1 和 FP2 之间的幅度差均值,以特征化滤波后的 EEG。在这些特征上训练的 GMM 用于眨眼检测。该算法在 Temple 大学医院 (TUH) 和浙江大学医学院附属儿童医院 (CHZU) 采集的两个 EEG 数据集上进行了性能研究,这些数据集记录了癫痫和脑炎患者的数据,其中包含大量眨眼伪迹。实验结果表明,与最先进的方法相比,该算法可以实现最高的检测精度和 F1 得分。