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婴儿脑电图中的眼动伪迹校正:独立成分分析与伪迹阻断的系统比较

Eye-movement artifact correction in infant EEG: A systematic comparison between ICA and Artifact Blocking.

作者信息

Srishyla Diksha, Webb Sara Jane, Elsabbagh Mayada, O'Reilly Christian

机构信息

Montreal Neurological Institute, McGill University, Montreal, Quebec, Canada; Computer Science and Engineering, University of South Carolina, Columbia, SC, USA; Artificial Intelligence Institute, University of South Carolina, Columbia, SC, USA; Carolina Autism and Neurodevelopment Research Center, University of South Carolina, Columbia, SC, USA.

Center on Child Health, Behavior and Development, Seattle Children's Research Institute, Seattle, WA, USA.

出版信息

J Neurosci Methods. 2025 Jun;418:110405. doi: 10.1016/j.jneumeth.2025.110405. Epub 2025 Mar 22.

Abstract

BACKGROUND

Independent Component Analysis (ICA) is a well-established approach to clean EEG and remove the impact of signals of non-neural origin, such as those from muscular activity and eye movements. However, evidence suggests that ICA removes artifacts less effectively in infants than in adults. This study systematically compares ICA and Artifact Blocking (AB), an alternative approach proposed to improve eye-movement artifact correction in infant EEG.

METHODS

We analyzed EEG collected from 50 infants between 6 and 18 months of age as part of the International Infant EEG Data Integration Platform (EEG-IP), a longitudinal multi-study dataset. EEG was recorded while infants sat on their caregivers' laps and watched videos. We used ICA and AB to correct for eye-movement artifacts in the EEG and calculated the proportion of effectively corrected segments, signal-to-noise ratio (SNR), power-spectral density (PSD), and multiscale entropy (MSE) in manually selected EEG segments with and without eye-movement artifacts.

RESULTS

On the one hand, the proportion of effectively corrected segments indicated that ICA corrected eye-movement artifacts (sensitivity) better than AB. SNR and PSD indicated that both AB and ICA correct eye-movement artifacts with equal sensitivity. MSE gave mixed results. On the other hand, AB caused less distortion to the clean segments (specificity) for SNR, PSD, and MSE.

CONCLUSION

Our results suggest that ICA is more sensitive (i.e., it better removes artifacts) but less specific (it distorts clean signals) than AB for correcting eye-movement artifacts in infant EEG.

摘要

背景

独立成分分析(ICA)是一种成熟的用于清理脑电图(EEG)并消除非神经源性信号影响的方法,例如来自肌肉活动和眼球运动的信号。然而,有证据表明,ICA在婴儿中去除伪迹的效果不如在成人中有效。本研究系统地比较了ICA和伪迹阻断(AB),后者是一种为改善婴儿脑电图中眼球运动伪迹校正而提出的替代方法。

方法

作为国际婴儿脑电图数据整合平台(EEG-IP)(一个纵向多研究数据集)的一部分,我们分析了从50名6至18个月大的婴儿收集的脑电图。当婴儿坐在其照顾者腿上观看视频时记录脑电图。我们使用ICA和AB来校正脑电图中的眼球运动伪迹,并计算了在手动选择的有无眼球运动伪迹的脑电图段中有效校正段的比例、信噪比(SNR)、功率谱密度(PSD)和多尺度熵(MSE)。

结果

一方面,有效校正段的比例表明ICA校正眼球运动伪迹(敏感性)比AB更好。SNR和PSD表明AB和ICA校正眼球运动伪迹的敏感性相同。MSE给出了混合结果。另一方面,对于SNR、PSD和MSE,AB对干净段(特异性)造成的失真较小。

结论

我们的结果表明,在校正婴儿脑电图中的眼球运动伪迹方面,ICA比AB更敏感(即,它能更好地去除伪迹)但特异性较低(它会使干净信号失真)。

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