Kumaravel Velu Prabhakar, Kartsch Victor, Benatti Simone, Vallortigara Giorgio, Farella Elisabetta, Buiatti Marco
Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:333-336. doi: 10.1109/EMBC46164.2021.9629771.
Light-weight, minimally-obtrusive mobile EEG systems with a small number of electrodes (i.e., low-density) allow for convenient monitoring of the brain activity in out-of-the-lab conditions. However, they pose a higher risk for signal contamination with non-stereotypical artifacts due to hardware limitations and the challenging environment where signals are collected. A promising solution is Artifacts Subspace Reconstruction (ASR), a component-based approach that can automatically remove non-stationary transient-like artifacts in EEG data. Since ASR has only been validated with high-density systems, it is unclear whether it is equally efficient on low-density portable EEG. This paper presents a complete analysis of ASR performance based on clean and contaminated datasets acquired with BioWolf, an Ultra-Low-Power system featuring only eight channels, during SSVEP sessions recorded from six adults. Empirical results show that even with such few channels, ASR efficiently corrects artifacts, enabling an overall enhancement of up to 40% in SSVEP response. Furthermore, by choosing the optimal ASR parameters on a single-subject basis, SSVEP response can be further increased to more than 45%. These results suggest that ASR is a viable and robust method for online automatic artifact correction with low-density BCI systems in real-life scenarios.
具有少量电极(即低密度)的轻量级、低干扰移动脑电图系统,便于在实验室外环境中监测大脑活动。然而,由于硬件限制以及信号采集环境具有挑战性,它们存在更高的风险,容易受到非典型伪迹的信号污染。一种有前景的解决方案是伪迹子空间重建(ASR),这是一种基于组件的方法,可以自动去除脑电图数据中的非平稳瞬态类伪迹。由于ASR仅在高密度系统中得到验证,因此尚不清楚它在低密度便携式脑电图上是否同样有效。本文基于在六个成年人进行稳态视觉诱发电位(SSVEP)实验期间,使用仅具有八个通道的超低功耗系统BioWolf采集的干净和受污染数据集,对ASR性能进行了全面分析。实证结果表明,即使通道数量如此之少,ASR仍能有效地校正伪迹,使SSVEP响应整体增强高达40%。此外,通过在单受试者基础上选择最佳ASR参数,SSVEP响应可以进一步提高到超过45%。这些结果表明,ASR是一种在现实场景中对低密度脑机接口系统进行在线自动伪迹校正的可行且强大的方法。