Multivariate EEG analyses support high-resolution tracking of feature-based attentional selection
Abstract The primary electrophysiological marker of feature-based selection is the N2pc, a lateralized posterior negativity emerging around 180–200 ms. As it relies on hemispheric differences, its ability to discriminate the locus of focal attention is severely limited. Here we demonstrate that mult...
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doaj-10df2ae668ad437a86a518a4533e52be2020-12-08T01:00:37ZengNature Publishing GroupScientific Reports2045-23222017-05-017111510.1038/s41598-017-01911-0Multivariate EEG analyses support high-resolution tracking of feature-based attentional selectionJohannes Jacobus Fahrenfort0Anna Grubert1Christian N. L. Olivers2Martin Eimer3Department of Experimental and Applied Psychology & Institute for Brain and Behavior Amsterdam (iBBA), Vrije UniversiteitDepartment of Psychology, Durham UniversityDepartment of Experimental and Applied Psychology & Institute for Brain and Behavior Amsterdam (iBBA), Vrije UniversiteitDepartment of Psychological Sciences, Birkbeck, University of LondonAbstract The primary electrophysiological marker of feature-based selection is the N2pc, a lateralized posterior negativity emerging around 180–200 ms. As it relies on hemispheric differences, its ability to discriminate the locus of focal attention is severely limited. Here we demonstrate that multivariate analyses of raw EEG data provide a much more fine-grained spatial profile of feature-based target selection. When training a pattern classifier to determine target position from EEG, we were able to decode target positions on the vertical midline, which cannot be achieved using standard N2pc methodology. Next, we used a forward encoding model to construct a channel tuning function that describes the continuous relationship between target position and multivariate EEG in an eight-position display. This model can spatially discriminate individual target positions in these displays and is fully invertible, enabling us to construct hypothetical topographic activation maps for target positions that were never used. When tested against the real pattern of neural activity obtained from a different group of subjects, the constructed maps from the forward model turned out statistically indistinguishable, thus providing independent validation of our model. Our findings demonstrate the power of multivariate EEG analysis to track feature-based target selection with high spatial and temporal precision.https://doi.org/10.1038/s41598-017-01911-0 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Johannes Jacobus Fahrenfort Anna Grubert Christian N. L. Olivers Martin Eimer |
spellingShingle |
Johannes Jacobus Fahrenfort Anna Grubert Christian N. L. Olivers Martin Eimer Multivariate EEG analyses support high-resolution tracking of feature-based attentional selection Scientific Reports |
author_facet |
Johannes Jacobus Fahrenfort Anna Grubert Christian N. L. Olivers Martin Eimer |
author_sort |
Johannes Jacobus Fahrenfort |
title |
Multivariate EEG analyses support high-resolution tracking of feature-based attentional selection |
title_short |
Multivariate EEG analyses support high-resolution tracking of feature-based attentional selection |
title_full |
Multivariate EEG analyses support high-resolution tracking of feature-based attentional selection |
title_fullStr |
Multivariate EEG analyses support high-resolution tracking of feature-based attentional selection |
title_full_unstemmed |
Multivariate EEG analyses support high-resolution tracking of feature-based attentional selection |
title_sort |
multivariate eeg analyses support high-resolution tracking of feature-based attentional selection |
publisher |
Nature Publishing Group |
series |
Scientific Reports |
issn |
2045-2322 |
publishDate |
2017-05-01 |
description |
Abstract The primary electrophysiological marker of feature-based selection is the N2pc, a lateralized posterior negativity emerging around 180–200 ms. As it relies on hemispheric differences, its ability to discriminate the locus of focal attention is severely limited. Here we demonstrate that multivariate analyses of raw EEG data provide a much more fine-grained spatial profile of feature-based target selection. When training a pattern classifier to determine target position from EEG, we were able to decode target positions on the vertical midline, which cannot be achieved using standard N2pc methodology. Next, we used a forward encoding model to construct a channel tuning function that describes the continuous relationship between target position and multivariate EEG in an eight-position display. This model can spatially discriminate individual target positions in these displays and is fully invertible, enabling us to construct hypothetical topographic activation maps for target positions that were never used. When tested against the real pattern of neural activity obtained from a different group of subjects, the constructed maps from the forward model turned out statistically indistinguishable, thus providing independent validation of our model. Our findings demonstrate the power of multivariate EEG analysis to track feature-based target selection with high spatial and temporal precision. |
url |
https://doi.org/10.1038/s41598-017-01911-0 |
work_keys_str_mv |
AT johannesjacobusfahrenfort multivariateeeganalysessupporthighresolutiontrackingoffeaturebasedattentionalselection AT annagrubert multivariateeeganalysessupporthighresolutiontrackingoffeaturebasedattentionalselection AT christiannlolivers multivariateeeganalysessupporthighresolutiontrackingoffeaturebasedattentionalselection AT martineimer multivariateeeganalysessupporthighresolutiontrackingoffeaturebasedattentionalselection |
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