Sleep Medicine and Psychophysiology (수면정신생리)
- Volume 8 Issue 1
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- Pages.67-71
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- 2001
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- 1225-7354(pISSN)
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- 2713-8631(eISSN)
Independent Component Analysis(ICA) of Sleep Waves
수면파형의 독립성분분석
- Lee, Il-Keun (Department of Neurology, Inha University Medical College)
- 이일근 (인하대학교 의과대학 신경과학교실)
- Published : 2001.06.30
Abstract
Independent Component Analysis (ICA) is a blind source separation method using unsupervised learning and mutual information theory created in the late eighties and developed in the nineties. It has already succeeded in separating eye movement artifacts from human scalp EEG recording. Several characteristic sleep waves such as sleep spindle, K-complex, and positive occipital sharp transient of sleep (POSTS) can be recorded during sleep EEG recording. They are used as stage determining factors of sleep staging and might be reflections of unknown neural sources during sleep. We applied the ICA method to sleep EEG for sleep waves separation. Eighteen channel scalp longitudinal bipolar montage was used for the EEG recording. With the sampling rate of 256Hz, digital EEG data were converted into 18 by n matrix which was used as a original data matrix X. Independent source matrix U (18 by n) was obtained by independent component analysis method (