Iriarte Jorge, Urrestarazu Elena, Valencia Miguel, Alegre Manuel, Malanda Armando, Viteri César, Artieda Julio
Clinical Neurophysiology Section, Clínica Universitaria, University of Navarra, Pamplona, Spain.
J Clin Neurophysiol. 2003 Jul-Aug;20(4):249-57. doi: 10.1097/00004691-200307000-00004.
Independent component analysis (ICA) is a novel technique that calculates independent components from mixed signals. A hypothetical clinical application is to remove artifacts in EEG. The goal of this study was to apply ICA to standard EEG recordings to eliminate well-known artifacts, thus quantifying its efficacy in an objective way. Eighty samples of recordings with spikes and evident artifacts of electrocardiogram (EKG), eye movements, 50-Hz interference, muscle, or electrode artifact were studied. ICA components were calculated using the Joint Approximate Diagonalization of Eigen-matrices (JADE) algorithm. The signal was reconstructed excluding those components related to the artifacts. A normalized correlation coefficient was used as a measure of the changes caused by the suppression of these components. ICA produced an evident clearing-up of signals in all the samples. The morphology and the topography of the spike were very similar before and after the removal of the artifacts. The correlation coefficient showed that the rest of the signal did not change significantly. Two examiners independently looked at the samples to identify the changes in the morphology and location of the discharge and the artifacts. In conclusion, ICA proved to be a useful tool to clean artifacts in short EEG samples, without having the disadvantages associated with the digital filters. The distortion of the interictal activity measured by correlation analysis was minimal.
独立成分分析(ICA)是一种从混合信号中计算独立成分的新技术。一种假设的临床应用是去除脑电图(EEG)中的伪迹。本研究的目的是将ICA应用于标准EEG记录,以消除众所周知的伪迹,从而以客观的方式量化其功效。研究了80个带有尖峰以及明显的心电图(EKG)、眼动、50赫兹干扰、肌肉或电极伪迹的记录样本。使用特征矩阵联合近似对角化(JADE)算法计算ICA成分。在重建信号时排除那些与伪迹相关的成分。使用归一化相关系数作为衡量抑制这些成分所引起变化的指标。ICA在所有样本中都使信号明显清晰。去除伪迹前后尖峰的形态和地形图非常相似。相关系数表明信号的其余部分没有显著变化。两名检查人员独立查看样本,以识别放电和伪迹的形态和位置变化。总之,ICA被证明是一种清理短EEG样本中伪迹的有用工具,且没有与数字滤波器相关的缺点。通过相关分析测量的发作间期活动的失真最小。