作者
Jorge Iriarte, Elena Urrestarazu, Miguel Valencia, Manuel Alegre, Armando Malanda, César Viteri, Julio Artieda
发表日期
2003/7/1
期刊
Journal of clinical neurophysiology
卷号
20
期号
4
页码范围
249-257
出版商
LWW
简介
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 …
引用总数
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J Iriarte, E Urrestarazu, M Valencia, M Alegre… - Journal of clinical neurophysiology, 2003