Schlögl A, Keinrath C, Zimmermann D, Scherer R, Leeb R, Pfurtscheller G
Institute of Human-Computer Interfaces, Graz University of Technology, Krenngasse 37/IV, A-8010 Graz, Austria.
Clin Neurophysiol. 2007 Jan;118(1):98-104. doi: 10.1016/j.clinph.2006.09.003. Epub 2006 Nov 7.
A fully automated method for reducing EOG artifacts is presented and validated.
The correction method is based on regression analysis and was applied to 18 recordings with 22 channels and approx. 6 min each. Two independent experts scored the original and corrected EEG in a blinded evaluation.
The expert scorers identified in 5.9% of the raw data some EOG artifacts; 4.7% were corrected. After applying the EOG correction, the expert scorers identified in another 1.9% of the data some EOG artifacts, which were not recognized in the uncorrected data.
The advantage of a fully automated reduction of EOG artifacts justifies the small additional effort of the proposed method and is a viable option for reducing EOG artifacts. The method has been implemented for offline and online analysis and is available through BioSig, an open source software library for biomedical signal processing.
Visual identification and rejection of EOG-contaminated EEG segments can miss many EOG artifacts, and is therefore not sufficient for removing EOG artifacts. The proposed method was able to reduce EOG artifacts by 80%.
提出并验证一种用于减少眼电伪迹的全自动方法。
该校正方法基于回归分析,应用于18份记录,每份记录有22个通道,时长约6分钟。两名独立专家在盲态评估中对原始脑电图和校正后的脑电图进行评分。
专家评分者在5.9%的原始数据中识别出一些眼电伪迹;4.7%的伪迹得到了校正。应用眼电校正后,专家评分者在另外1.9%的数据中识别出一些眼电伪迹,这些伪迹在未校正的数据中未被识别。
全自动减少眼电伪迹的优势证明了所提出方法的额外工作量较小,是减少眼电伪迹的可行选择。该方法已实现离线和在线分析,可通过BioSig获得,BioSig是一个用于生物医学信号处理的开源软件库。
通过视觉识别和排除受眼电污染的脑电图片段可能会遗漏许多眼电伪迹,因此不足以去除眼电伪迹。所提出的方法能够将眼电伪迹减少80%。