Shredding artifacts: extracting brain activity in EEG from extreme artifacts during skateboarding using ASR and ICA.

IF 1.5 Q3 ERGONOMICS Frontiers in neuroergonomics Pub Date : 2024-06-26 eCollection Date: 2024-01-01 DOI:10.3389/fnrgo.2024.1358660
Daniel E Callan, Juan Jesus Torre-Tresols, Jamie Laguerta, Shin Ishii
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Abstract

Introduction: To understand brain function in natural real-world settings, it is crucial to acquire brain activity data in noisy environments with diverse artifacts. Electroencephalography (EEG), while susceptible to environmental and physiological artifacts, can be cleaned using advanced signal processing techniques like Artifact Subspace Reconstruction (ASR) and Independent Component Analysis (ICA). This study aims to demonstrate that ASR and ICA can effectively extract brain activity from the substantial artifacts occurring while skateboarding on a half-pipe ramp.

Methods: A dual-task paradigm was used, where subjects were presented with auditory stimuli during skateboarding and rest conditions. The effectiveness of ASR and ICA in cleaning artifacts was evaluated using a support vector machine to classify the presence or absence of a sound stimulus in single-trial EEG data. The study evaluated the effectiveness of ASR and ICA in artifact cleaning using five different pipelines: (1) Minimal cleaning (bandpass filtering), (2) ASR only, (3) ICA only, (4) ICA followed by ASR (ICAASR), and (5) ASR preceding ICA (ASRICA). Three skateboarders participated in the experiment.

Results: Results showed that all ICA-containing pipelines, especially ASRICA (69%, 68%, 63%), outperformed minimal cleaning (55%, 52%, 50%) in single-trial classification during skateboarding. The ASRICA pipeline performed significantly better than other pipelines containing ICA for two of the three subjects, with no other pipeline performing better than ASRICA. The superior performance of ASRICA likely results from ASR removing non-stationary artifacts, enhancing ICA decomposition. Evidenced by ASRICA identifying more brain components via ICLabel than ICA alone or ICAASR for all subjects. For the rest condition, with fewer artifacts, the ASRICA pipeline (71%, 82%, 75%) showed slight improvement over minimal cleaning (73%, 70%, 72%), performing significantly better for two subjects.

Discussion: This study demonstrates that ASRICA can effectively clean artifacts to extract single-trial brain activity during skateboarding. These findings affirm the feasibility of recording brain activity during physically demanding tasks involving substantial body movement, laying the groundwork for future research into the neural processes governing complex and coordinated body movements.

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撕碎伪影:使用 ASR 和 ICA 从滑板运动过程中的极端伪影中提取脑电图中的大脑活动。
简介要了解自然真实世界环境中的大脑功能,就必须在具有各种伪影的嘈杂环境中获取大脑活动数据。脑电图(EEG)虽然容易受到环境和生理伪影的影响,但可以利用伪影子空间重构(ASR)和独立分量分析(ICA)等先进的信号处理技术进行净化。本研究旨在证明 ASR 和 ICA 能够有效地从在半管斜坡上滑板时产生的大量伪像中提取大脑活动:方法:采用双任务范式,在滑板和休息状态下向受试者提供听觉刺激。使用支持向量机对单次脑电图数据中是否存在声音刺激进行分类,从而评估 ASR 和 ICA 在清除伪影方面的效果。研究评估了 ASR 和 ICA 在使用五种不同管道清除伪迹时的效果:(1) 最少清除(带通滤波);(2) 仅 ASR;(3) 仅 ICA;(4) ICA 后 ASR(ICAASR);(5) ICA 前 ASR(ASRICA)。三名滑板运动员参加了实验:结果表明,在滑板运动过程中,所有包含 ICA 的管道,尤其是 ASRICA(69%、68%、63%),在单次试验分类中的表现均优于最小清洗(55%、52%、50%)。在三个受试者中,ASRICA 管道在两个受试者中的表现明显优于其他包含 ICA 的管道,而其他管道的表现均不优于 ASRICA。ASRICA 的优异表现可能是由于 ASR 消除了非稳态伪影,增强了 ICA 分解能力。在所有受试者中,ASRICA 通过 ICLabel 识别出的大脑成分均多于 ICA 或 ICAASR。在其余条件下,由于伪影较少,ASRICA 管道(71%、82%、75%)比最小化清理(73%、70%、72%)略有改善,其中两个受试者的表现明显更好:本研究表明,ASRICA 可以有效清除伪影,提取滑板运动中的单次大脑活动。这些发现证实了在涉及大量身体运动的体力要求较高的任务中记录大脑活动的可行性,为今后研究支配复杂而协调的身体运动的神经过程奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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