Literature DB >> 11942726

Cardiac artifact subspace identification and elimination in cognitive MEG data using time-delayed decorrelation.

Tilmann H Sander1, Gerd Wübbeler, Andreas Lueschow, Gabriel Curio, Lutz Trahms.   

Abstract

To reduce physiological artifacts in magnetoencephalographic (MEG) and electroencephalographic recordings, a number of methods have been applied in the past such as principal component analysis, signal-space projection, regression using secondary information, and independent component analysis. This method has become popular as it does not have constraints such as orthogonality between artifact and signal or the need for a priori information. Applying the time-delayed decorrelation algorithm to raw data from a visual stimulation MEG experiment, we show that several of the independent components can be attributed to the cardiac artifact. Calculating an average cardiac activity shows that physiologically different excitation states of the heart produce similar field distributions in the MEG sensor system. This is equivalent to differing spectral properties of cardiac field distributions in the raw data. As a consequence, the algorithm combines, e.g., the R peak and the T wave of the cardiac cycle into a single component and the one-to-one assignment of each independent component with a physiological source is not justified in this case. To improve the signal quality of visually evoked fields, the multidimensional cardiac artifact subspace is suppressed from the data. To assess the preservation of the evoked signal after artifact suppression, a geometrical and a temporal measure are introduced. The suppression of cardiac and alpha wave artifacts allows, in our experimental setting, the reduction of the number of epochs to one half while preserving the visually evoked signal.

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Year:  2002        PMID: 11942726     DOI: 10.1109/10.991162

Source DB:  PubMed          Journal:  IEEE Trans Biomed Eng        ISSN: 0018-9294            Impact factor:   4.538


  10 in total

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Authors:  Srikantan S Nagarajan; Hagai T Attias; Kenneth E Hild; Kensuke Sekihara
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5.  Denoising based on spatial filtering.

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6.  Removing Cardiac Artefacts in Magnetoencephalography with Resampled Moving Average Subtraction.

Authors:  Limin Sun; Seppo P Ahlfors; Hermann Hinrichs
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7.  The 170ms Response to Faces as Measured by MEG (M170) Is Consistently Altered in Congenital Prosopagnosia.

Authors:  Andreas Lueschow; Joachim E Weber; Claus-Christian Carbon; Iris Deffke; Tilmann Sander; Thomas Grüter; Martina Grüter; Lutz Trahms; Gabriel Curio
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8.  Improving Localization Accuracy of Neural Sources by Pre-processing: Demonstration With Infant MEG Data.

Authors:  Maggie D Clarke; Eric Larson; Erica R Peterson; Daniel R McCloy; Alexis N Bosseler; Samu Taulu
Journal:  Front Neurol       Date:  2022-03-23       Impact factor: 4.003

9.  Sex-differences of face coding: evidence from larger right hemispheric M170 in men and dipole source modelling.

Authors:  Hannes O Tiedt; Joachim E Weber; Alfred Pauls; Klaus M Beier; Andreas Lueschow
Journal:  PLoS One       Date:  2013-07-09       Impact factor: 3.240

10.  Altered Autonomic Function in Individuals at Clinical High Risk for Psychosis.

Authors:  Anna Kocsis; Ruchika Gajwani; Joachim Gross; Andrew I Gumley; Stephen M Lawrie; Matthias Schwannauer; Frauke Schultze-Lutter; Tineke Grent-'t-Jong; Peter J Uhlhaas
Journal:  Front Psychiatry       Date:  2020-11-06       Impact factor: 4.157

  10 in total

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