DocumentCode :
745213
Title :
A resampling method for estimating the signal subspace of spatio-temporal EEG/MEG data
Author :
Maris, Eric
Author_Institution :
Nijmegen Inst. of Cognition & Inf., Univ. of Nijmegen, Netherlands
Volume :
50
Issue :
8
fYear :
2003
Firstpage :
935
Lastpage :
949
Abstract :
Source localization using spatio-temporal electroencephalography (EEG) and magnetoencephalography (MEG) data is usually performed by means of signal subspace methods. The first step of these methods is the estimation of a set of vectors that spans a subspace containing as well as possible the signal of interest. This estimation is usually performed by means of a singular value decomposition (SVD) of the data matrix: The rank of the signal subspace (denoted by r) is estimated from a plot in which the singular values are plotted against their rank order, and the signal subspace itself is estimated by the first r singular vectors. The main problem with this method is that it is strongly affected by spatial covariance in the noise. Therefore, two methods are proposed that are much less affected by this spatial covariance, and old and a new method. The old method involves prewhitening of the data matrix, making use of an estimate of the spatial noise covariance matrix. The new method is based on the matrix product of two average data matrices, resulting from a random partition of a set of stochastically independent replications of the spatio-temporal data matrix. The estimated signal subspace is obtained by first filtering out the asymmetric and negative definite components of this matrix product and then retaining the eigenvectors that correspond to the r largest eigenvalues of this filtered data matrix. The main advantages of the partition-based eigen decomposition over prewhited SVD is that 1) it does not require an estimate of the spatial noise covariance matrix and 2b) that it allows one to make use of a resampling distribution (the so-called partitioning distribution) as a natural quantification of the uncertainty in the estimated rank. The performance of three methods (SVD with and without prewhitening, and the partition-based method) is compared in a simulation study. From this study, it could be concluded that prewhited SVD and the partition-based eigen decompos- - ition perform equally well when the amplitude time series are constant, but that the partition-based method performs better when the amplitude time series are variable.
Keywords :
eigenvalues and eigenfunctions; electroencephalography; magnetoencephalography; medical signal processing; singular value decomposition; time series; amplitude time series; data matrix; eigenvectors; matrix product; negative definite components; partition-based eigen decomposition; resampling method; signal subspace; source localization; spatial noise covariance matrix; spatial noise covariance matrix estimate; spatio-temporal EEG/MEG data; Biomedical measurements; Biosensors; Brain modeling; Covariance matrix; Electroencephalography; Filtering; Magnetoencephalography; Matrix decomposition; Scalp; Singular value decomposition; Algorithms; Brain; Brain Mapping; Computer Simulation; Electroencephalography; Humans; Magnetoencephalography; Models, Neurological; Models, Statistical; Sample Size; Stochastic Processes;
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2003.814293
Filename :
1213846
Link To Document :
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