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Performance-based approach for movement artifact removal from electroencephalographic data recorded during locomotion

机译:基于性能的运动过程中从脑电图数据中去除运动伪影的方法

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摘要

The appreciation for the need to record electroencephalographic (EEG) signals from humans while walking has been steadily growing in recent years, particularly in relation to understanding gait disturbances. Movement artefacts (MA) in EEG signals originate from mechanical forces applied to the scalp electrodes, inducing small electrode movements relative to the scalp which, in turn, cause the recorded voltage to change irrespectively of cortical activity. These mechanical forces, and thus MA, may have various sources (e.g., ground reaction forces, head movements, etc.) that are inherent to daily activities, notably walking. In this paper we introduce a systematic, integrated methodology for removing MA from EEG signals recorded during treadmill (TM) and over-ground (OG) walking, as well as quantify the prevalence of MA in different locomotion settings. In our experiments, participants performed walking trials at various speeds both OG and on a TM while wearing a 32-channel EEG cap and a 3-axis accelerometer, placed on the forehead. Data preprocessing included separating the EEG signals into statistically independent additive components using independent component analysis (ICA). We observed an increase in electro-physiological signals (e.g., neck EMG activations for stabilizing the head during heel-strikes) as the walking speed increased. These artefact independent-components (ICs), while not originating from electrode movement, still exhibit a similar spectral pattern to the MA ICs–a peak at the stepping frequency. MA was identified and quantified in each component using a novel method that utilizes the participant’s stepping frequency, derived from a forehead-mounted accelerometer. We then benchmarked the EEG data by applying newly established metrics to quantify the success of our method in cleaning the data. The results indicate that our approach can be successfully applied to EEG data recorded during TM and OG walking, and is offered as a unified methodology for MA removal from EEG collected during gait trials.
机译:近年来,人们对步行时需要记录人的脑电图(EEG)信号的需求一直在稳步增长,尤其是在理解步态障碍方面。 EEG信号中的运动伪像(MA)来自施加到头皮电极的机械力,引起相对于头皮的小电极运动,进而导致记录的电压与皮层活动无关地改变。这些机械力以及因此的MA可能具有日常活动(尤其是步行)所固有的各种来源(例如地面反作用力,头部运动等)。在本文中,我们介绍了一种系统的,集成的方法,用于从跑步机(TM)和地面(OG)行走过程中记录的脑电信号中去除MA,并对不同运动环境下MA的患病率进行量化。在我们的实验中,参与者戴着OG和TM并以不同速度进行步行试验,同时戴着32通道EEG帽和位于前额的3轴加速度计。数据预处理包括使用独立成分分析(ICA)将EEG信号分离为统计独立的加性成分。我们观察到随着步行速度的增加,电生理信号(例如,颈部肌电图激活可稳定脚后跟的头部)增加。这些假象独立成分(IC)虽然不是源于电极运动,但仍显示出与MA IC相似的光谱图-在步进频率处出现峰值。使用一种新颖的方法来识别和量化MA,并利用参与者从前额安装的加速度计得出的参与者的步进频率来对其进行量化。然后,我们通过应用新建立的度量标准对EEG数据进行基准测试,以量化我们清理数据的方法的成功率。结果表明,我们的方法可以成功应用于在TM和OG行走过程中记录的脑电数据,并作为在步态试验中从脑电图中去除MA的统一方法。

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