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VME-DWT:一种从单通道 EEG 短段中检测和消除眼动的有效算法。

VME-DWT: An Efficient Algorithm for Detection and Elimination of Eye Blink From Short Segments of Single EEG Channel.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2021;29:408-417. doi: 10.1109/TNSRE.2021.3054733. Epub 2021 Mar 2.

DOI:10.1109/TNSRE.2021.3054733
PMID:33497337
Abstract

OBJECTIVE

Recent advances in development of low-cost single-channel electroencephalography (EEG) headbands have opened new possibilities for applications in health monitoring and brain-computer interface (BCI) systems. These recorded EEG signals, however, are often contaminated by eye blink artifacts that can yield the fallacious interpretation of the brain activity. This paper proposes an efficient algorithm, VME-DWT, to remove eye blinks in a short segment of the single EEG channel.

METHOD

The proposed algorithm: (a) locates eye blink intervals using Variational Mode Extraction (VME) and (b) filters only contaminated EEG interval using an automatic Discrete Wavelet Transform (DWT) algorithm. The performance of VME-DWT is compared with an automatic Variational Mode Decomposition (AVMD) and a DWT-based algorithms, proposed for suppressing eye blinks in a short segment of the single EEG channel.

RESULTS

The VME-DWT detects and filters 95% of the eye blinks from the contaminated EEG signals with SNR ranging from -8 to +3 dB. The VME-DWT shows superiority to the AVMD and DWT with the higher mean value of correlation coefficient (0.92 vs. 0.83, 0.58) and lower mean value of RRMSE (0.42 vs. 0.59, 0.87).

SIGNIFICANCE

The VME-DWT can be a suitable algorithm for removal of eye blinks in low-cost single-channel EEG systems as it is: (a) computationally-efficient, the contaminated EEG signal is filtered in millisecond time resolution, (b) automatic, no human intervention is required, (c) low-invasive, EEG intervals without contamination remained unaltered, and (d) low-complexity, without need to the artifact reference.

摘要

目的

低成本单通道脑电图 (EEG) 头带的最新发展为健康监测和脑机接口 (BCI) 系统中的应用开辟了新的可能性。然而,这些记录的 EEG 信号常常受到眨眼伪影的污染,这可能导致对大脑活动的错误解释。本文提出了一种有效的算法,VME-DWT,用于去除单 EEG 通道短段中的眨眼伪影。

方法

所提出的算法:(a) 使用变分模态提取 (VME) 定位眨眼间隔,(b) 使用自动离散小波变换 (DWT) 算法仅过滤受污染的 EEG 间隔。将 VME-DWT 的性能与用于抑制单 EEG 通道短段中眨眼伪影的自动变分模态分解 (AVMD) 和基于 DWT 的算法进行了比较。

结果

VME-DWT 从受污染的 EEG 信号中检测和过滤了 95%的眨眼,信噪比范围为-8 至+3 dB。VME-DWT 优于 AVMD 和 DWT,相关系数的平均值更高 (0.92 对 0.83、0.58),RRMSE 的平均值更低 (0.42 对 0.59、0.87)。

意义

VME-DWT 可以成为低成本单通道 EEG 系统中去除眨眼伪影的合适算法,因为它是:(a) 计算效率高,受污染的 EEG 信号以毫秒时间分辨率进行滤波,(b) 自动,无需人工干预,(c) 低侵入性,未受污染的 EEG 间隔保持不变,以及 (d) 低复杂性,无需伪影参考。

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