EEG-assisted retrospective motion correction for fMRI: E-REMCOR
Vadim Zotev, Han Yuan, Raquel Phillips, Jerzy Bodurka

TL;DR
E-REMCOR is a novel EEG-based retrospective motion correction method for fMRI that significantly improves data quality by reducing motion artifacts using EEG signals, applicable to existing datasets without extra equipment.
Contribution
The paper introduces E-REMCOR, a new EEG-assisted method for retrospective motion correction in fMRI that enhances data quality without additional hardware.
Findings
TSNR improved by up to 50% in large brain areas.
Significant motion artifact reduction in patients with head movements.
Compatible with existing EEG-fMRI data and improves subsequent analysis.
Abstract
We propose a method for retrospective motion correction of fMRI data in simultaneous EEG-fMRI that employs the EEG array as a sensitive motion detector. EEG motion artifacts are used to generate motion regressors describing rotational head movements with millisecond temporal resolution. These regressors are utilized for slice-specific motion correction of unprocessed fMRI data. Performance of the method is demonstrated by correction of fMRI data from five patients with major depressive disorder, who exhibited head movements by 1-3 mm during a resting EEG-fMRI run. The fMRI datasets, corrected using eight to ten EEG-based motion regressors, show significant improvements in temporal SNR (TSNR) of fMRI time series, particularly in the frontal brain regions and near the surface of the brain. The TSNR improvements are as high as 50% for large brain areas in single-subject analysis and as…
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