Mensia Technologies, 130, rue de Lourmel, 75015 Paris, France.
Mensia Technologies, 130, rue de Lourmel, 75015 Paris, France.
Neurophysiol Clin. 2017 Dec;47(5-6):371-391. doi: 10.1016/j.neucli.2017.10.059. Epub 2017 Nov 21.
Due to its high temporal resolution, electroencephalography (EEG) has become a broadly-used technology for real-time brain monitoring applications such as neurofeedback (NFB) and brain-computer interfaces (BCI). However, since EEG signals are prone to artifacts, denoising is a crucial step that enables adequate subsequent data processing and interpretation. The aim of this study is to compare manual denoising to unsupervised online denoising, which is essential to real-time applications.
Denoising EEG for real-time applications requires the implementation of unsupervised and online methods. In order to permit genericity, these methods should not rely on electrooculography (EOG) traces nor on temporal/spatial templates of the artifacts. Two blind source separation (BSS) methods are analyzed in this paper with the aim of automatically correcting online eye-blink artifacts: the algorithm for multiple unknown signals extraction (AMUSE) and the approximate joint diagonalization of Fourier cospectra (AJDC). The chosen gold standard is a manual review of the EEG database carried out retrospectively by a human operator. Comparison is carried out using the spectral properties of the continuous EEG and event-related potentials (ERP).
The AJDC algorithm addresses limitations observed in AMUSE and outperforms it. No statistical difference is found between the manual and automatic approaches on a database composed of 15 healthy individuals, paving the way for an automated, operator-independent, and real-time eye-blink correction technique.
由于脑电图 (EEG) 具有高时间分辨率,因此已成为神经反馈 (NFB) 和脑机接口 (BCI) 等实时脑监测应用中广泛使用的技术。然而,由于 EEG 信号容易受到伪影的影响,因此去噪是至关重要的一步,可实现后续数据的充分处理和解释。本研究旨在比较手动去噪和无监督在线去噪,这对于实时应用至关重要。
实时应用的 EEG 去噪需要实施无监督和在线方法。为了实现通用性,这些方法不应依赖于眼电图 (EOG) 轨迹,也不应依赖于伪影的时间/空间模板。本文分析了两种盲源分离 (BSS) 方法,旨在自动纠正在线眨眼伪影:多个未知信号提取算法 (AMUSE) 和傅里叶余弦谱的近似联合对角化 (AJDC)。所选的金标准是由人工操作员进行回顾性 EEG 数据库手动评估。使用连续 EEG 和事件相关电位 (ERP) 的频谱特性进行比较。
AJDC 算法解决了 AMUSE 中观察到的局限性,并且性能优于 AMUSE。在由 15 名健康个体组成的数据库上,手动和自动方法之间没有发现统计学差异,为实现自动化、操作员独立和实时眨眼校正技术铺平了道路。