Enhanced detection of artifacts in EEG data using higher-order statistics and independent component analysis

被引:1288
作者
Delorme, Arnaud
Sejnowski, Terrence
Makeig, Scott
机构
[1] Univ Calif San Diego, Swartz Ctr Computat Neurosci, Inst Neural Computat, La Jolla, CA 92093 USA
[2] Salk Inst Biol Studies, Computat Neurobiol Lab, La Jolla, CA 92107 USA
关键词
artifact detection; rejection; ICA; EEG; high-order statistical methods;
D O I
10.1016/j.neuroimage.2006.11.004
中图分类号
Q189 [神经科学];
学科分类号
071006 [神经生物学];
摘要
Detecting artifacts produced in EEG data by muscle activity, eye blinks and electrical noise is a common and important problem in EEG research. It is now widely accepted that independent component analysis (ICA) may be a useful too[ for isolating artifacts and/or cortical processes from electroencephalographic (EEG) data. We present results of simulations demonstrating that ICA decomposition, here tested using three popular ICA algorithms, Informax, SOBI, and FastICA, can allow more sensitive automated detection of small non-brain artifacts than applying the same detection methods directly to the scalp channel data. We tested the upper bound performance of five methods for detecting various types of artifacts by separately optimizing and then applying them to artifact-free EEG data into which we had added simulated artifacts of several types, ranging in size from thirty times smaller (-50 dB) to the size of the EEG data themselves (0 dB). Of the methods tested, those involving spectral thresholding were most sensitive. Except for muscle artifact detection where we found no gain of using ICA, all methods proved more sensitive when applied to the ICA-decomposed data than applied to the raw scalp data: the mean performance for ICA was higher and situated at about two standard deviations away from the performance distribution obtained on raw data. We note that ICA decomposition also allows simple subtraction of artifacts accounted for by single independent components, and/or separate and direct examination of the decomposed non-artifact processes themselves. (c) 2006 Elsevier Inc. All rights reserved.
引用
收藏
页码:1443 / 1449
页数:7
相关论文
共 23 条
[1]
Optimization of an independent component analysis approach for artifact identification and removal in magnetoencephalographic signals [J].
Barbati, G ;
Porcaro, C ;
Zappasodi, F ;
Rossini, PM ;
Tecchio, F .
CLINICAL NEUROPHYSIOLOGY, 2004, 115 (05) :1220-1232
[2]
AN INFORMATION MAXIMIZATION APPROACH TO BLIND SEPARATION AND BLIND DECONVOLUTION [J].
BELL, AJ ;
SEJNOWSKI, TJ .
NEURAL COMPUTATION, 1995, 7 (06) :1129-1159
[3]
Robust whitening procedure in blind source separation context [J].
Belouchrani, A ;
Cichocki, A .
ELECTRONICS LETTERS, 2000, 36 (24) :2050-2051
[4]
Interaction of top-down and bottom-up processing in the fast visual analysis of natural scenes [J].
Delorme, A ;
Rousselet, GA ;
Macé, MJM ;
Fabre-Thorpe, M .
COGNITIVE BRAIN RESEARCH, 2004, 19 (02) :103-113
[5]
EEGLAB: an open source toolbox for analysis of single-trial EEG dynamics including independent component analysis [J].
Delorme, A ;
Makeig, S .
JOURNAL OF NEUROSCIENCE METHODS, 2004, 134 (01) :9-21
[6]
EEG changes accompanying learned regulation of 12-Hz EEG activity [J].
Delorme, A ;
Makeig, S .
IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, 2003, 11 (02) :133-137
[7]
Delorme A., 2001, INT WORKSH ICA SAN D
[8]
Independent component analysis:: algorithms and applications [J].
Hyvärinen, A ;
Oja, E .
NEURAL NETWORKS, 2000, 13 (4-5) :411-430
[9]
Independent component analysis as a tool to eliminate artifacts in EEG: A quantitative study [J].
Iriarte, J ;
Urrestarazu, E ;
Valencia, M ;
Alegre, M ;
Malanda, A ;
Viteri, C ;
Artieda, J .
JOURNAL OF CLINICAL NEUROPHYSIOLOGY, 2003, 20 (04) :249-257
[10]
Temporally constrained ICA: An application to artifact rejection in electromagnetic brain signal analysis [J].
James, CJ ;
Gibson, OJ .
IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING, 2003, 50 (09) :1108-1116