2019
DOI: 10.1523/eneuro.0170-19.2019
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Quantitative Evaluation in Estimating Sources Underlying Brain Oscillations Using Current Source Density Methods and Beamformer Approaches

Abstract: Brain oscillations from EEG and MEG shed light on neurophysiological mechanisms of human behavior. However, to extract information on cortical processing, researchers have to rely on source localization methods that can be very broadly classified into current density estimates such as exact low-resolution brain electromagnetic tomography (eLORETA), minimum norm estimates (MNE), and beamformers such as dynamic imaging of coherent sources (DICS) and linearly constrained minimum variance (LCMV). These algorithms … Show more

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Cited by 54 publications
(56 citation statements)
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References 44 publications
(56 reference statements)
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“…However, choosing MNE/wMNE comes at the cost of localization errors (i.e., non-zero LE and fLE), a reduced robustness to sensor noise compared to eLORETA, and reduced ability to explain sensor-level data. These results are in line with those of dipole simulations, in which eLORETA largely outperformed MNE with the exception of a measure of leakage ('focal width') (Halder et al, 2019). It should additionally be noted that MNE/wMNE performed poorly on parcellated data (i.e., low r 2 CV , Figure 7).…”
Section: Comparison Of Source Localization Algorithmssupporting
confidence: 86%
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“…However, choosing MNE/wMNE comes at the cost of localization errors (i.e., non-zero LE and fLE), a reduced robustness to sensor noise compared to eLORETA, and reduced ability to explain sensor-level data. These results are in line with those of dipole simulations, in which eLORETA largely outperformed MNE with the exception of a measure of leakage ('focal width') (Halder et al, 2019). It should additionally be noted that MNE/wMNE performed poorly on parcellated data (i.e., low r 2 CV , Figure 7).…”
Section: Comparison Of Source Localization Algorithmssupporting
confidence: 86%
“…MNE invariably explained 100% of the input data, but was unable to predict data from a left-out sensor in the cross validation procedure, suggesting an overfitting to the data that is not necessarily representative of true underlying source dynamics. LCMV exhibited high LE in line with studies using simulated dipoles (Pascual-Marqui et al, 2018;Halder et al, 2019), and was consistently outperformed by its weighted counterpart. Therefore for resting-state MEG source reconstruction, wLCMV is preferred over LCMV.…”
Section: Comparison Of Source Localization Algorithmssupporting
confidence: 71%
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