Large-scale cortical travelling waves predict localized future cortical signals.

Predicting future brain signal is highly sought-after, yet difficult to achieve. To predict the future phase of cortical activity at localized ECoG and MEG recording sites, we exploit its predominant, large-scale, spatiotemporal dynamics. The dynamics are extracted from the brain signal through Four...

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Main Authors: David M Alexander, Tonio Ball, Andreas Schulze-Bonhage, Cees van Leeuwen
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-11-01
Series:PLoS Computational Biology
Online Access:https://doi.org/10.1371/journal.pcbi.1007316
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spelling doaj-4bd00724520a4303b57323668e9e8e882021-04-21T15:08:06ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582019-11-011511e100731610.1371/journal.pcbi.1007316Large-scale cortical travelling waves predict localized future cortical signals.David M AlexanderTonio BallAndreas Schulze-BonhageCees van LeeuwenPredicting future brain signal is highly sought-after, yet difficult to achieve. To predict the future phase of cortical activity at localized ECoG and MEG recording sites, we exploit its predominant, large-scale, spatiotemporal dynamics. The dynamics are extracted from the brain signal through Fourier analysis and principal components analysis (PCA) only, and cast in a data model that predicts future signal at each site and frequency of interest. The dominant eigenvectors of the PCA that map the large-scale patterns of past cortical phase to future ones take the form of smoothly propagating waves over the entire measurement array. In ECoG data from 3 subjects and MEG data from 20 subjects collected during a self-initiated motor task, mean phase prediction errors were as low as 0.5 radians at local sites, surpassing state-of-the-art methods of within-time-series or event-related models. Prediction accuracy was highest in delta to beta bands, depending on the subject, was more accurate during episodes of high global power, but was not strongly dependent on the time-course of the task. Prediction results did not require past data from the to-be-predicted site. Rather, best accuracy depended on the availability in the model of long wavelength information. The utility of large-scale, low spatial frequency traveling waves in predicting future phase activity at local sites allows estimation of the error introduced by failing to account for irreducible trajectories in the activity dynamics.https://doi.org/10.1371/journal.pcbi.1007316
collection DOAJ
language English
format Article
sources DOAJ
author David M Alexander
Tonio Ball
Andreas Schulze-Bonhage
Cees van Leeuwen
spellingShingle David M Alexander
Tonio Ball
Andreas Schulze-Bonhage
Cees van Leeuwen
Large-scale cortical travelling waves predict localized future cortical signals.
PLoS Computational Biology
author_facet David M Alexander
Tonio Ball
Andreas Schulze-Bonhage
Cees van Leeuwen
author_sort David M Alexander
title Large-scale cortical travelling waves predict localized future cortical signals.
title_short Large-scale cortical travelling waves predict localized future cortical signals.
title_full Large-scale cortical travelling waves predict localized future cortical signals.
title_fullStr Large-scale cortical travelling waves predict localized future cortical signals.
title_full_unstemmed Large-scale cortical travelling waves predict localized future cortical signals.
title_sort large-scale cortical travelling waves predict localized future cortical signals.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2019-11-01
description Predicting future brain signal is highly sought-after, yet difficult to achieve. To predict the future phase of cortical activity at localized ECoG and MEG recording sites, we exploit its predominant, large-scale, spatiotemporal dynamics. The dynamics are extracted from the brain signal through Fourier analysis and principal components analysis (PCA) only, and cast in a data model that predicts future signal at each site and frequency of interest. The dominant eigenvectors of the PCA that map the large-scale patterns of past cortical phase to future ones take the form of smoothly propagating waves over the entire measurement array. In ECoG data from 3 subjects and MEG data from 20 subjects collected during a self-initiated motor task, mean phase prediction errors were as low as 0.5 radians at local sites, surpassing state-of-the-art methods of within-time-series or event-related models. Prediction accuracy was highest in delta to beta bands, depending on the subject, was more accurate during episodes of high global power, but was not strongly dependent on the time-course of the task. Prediction results did not require past data from the to-be-predicted site. Rather, best accuracy depended on the availability in the model of long wavelength information. The utility of large-scale, low spatial frequency traveling waves in predicting future phase activity at local sites allows estimation of the error introduced by failing to account for irreducible trajectories in the activity dynamics.
url https://doi.org/10.1371/journal.pcbi.1007316
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