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Time-Lagged Multidimensional Pattern Connectivity (TL-MDPC): An EEG/MEG pattern transformation based functional connectivity metric()

Functional and effective connectivity methods are essential to study the complex information flow in brain networks underlying human cognition. Only recently have connectivity methods begun to emerge that make use of the full multidimensional information contained in patterns of brain activation, ra...

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Autores principales: Rahimi, Setareh, Jackson, Rebecca, Farahibozorg, Seyedeh-Rezvan, Hauk, Olaf
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Academic Press 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10030313/
https://www.ncbi.nlm.nih.gov/pubmed/36813063
http://dx.doi.org/10.1016/j.neuroimage.2023.119958
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author Rahimi, Setareh
Jackson, Rebecca
Farahibozorg, Seyedeh-Rezvan
Hauk, Olaf
author_facet Rahimi, Setareh
Jackson, Rebecca
Farahibozorg, Seyedeh-Rezvan
Hauk, Olaf
author_sort Rahimi, Setareh
collection PubMed
description Functional and effective connectivity methods are essential to study the complex information flow in brain networks underlying human cognition. Only recently have connectivity methods begun to emerge that make use of the full multidimensional information contained in patterns of brain activation, rather than unidimensional summary measures of these patterns. To date, these methods have mostly been applied to fMRI data, and no method allows vertex-to-vertex transformations with the temporal specificity of EEG/MEG data. Here, we introduce time-lagged multidimensional pattern connectivity (TL-MDPC) as a novel bivariate functional connectivity metric for EEG/MEG research. TL-MDPC estimates the vertex-to-vertex transformations among multiple brain regions and across different latency ranges. It determines how well patterns in ROI [Formula: see text] at time point [Formula: see text] can linearly predict patterns of ROI [Formula: see text] at time point [Formula: see text]. In the present study, we use simulations to demonstrate TL-MDPC's increased sensitivity to multidimensional effects compared to a unidimensional approach across realistic choices of number of trials and signal-to-noise ratios. We applied TL-MDPC, as well as its unidimensional counterpart, to an existing dataset varying the depth of semantic processing of visually presented words by contrasting a semantic decision and a lexical decision task. TL-MDPC detected significant effects beginning very early on, and showed stronger task modulations than the unidimensional approach, suggesting that it is capable of capturing more information. With TL-MDPC only, we observed rich connectivity between core semantic representation (left and right anterior temporal lobes) and semantic control (inferior frontal gyrus and posterior temporal cortex) areas with greater semantic demands. TL-MDPC is a promising approach to identify multidimensional connectivity patterns, typically missed by unidimensional approaches.
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spelling pubmed-100303132023-04-15 Time-Lagged Multidimensional Pattern Connectivity (TL-MDPC): An EEG/MEG pattern transformation based functional connectivity metric() Rahimi, Setareh Jackson, Rebecca Farahibozorg, Seyedeh-Rezvan Hauk, Olaf Neuroimage Article Functional and effective connectivity methods are essential to study the complex information flow in brain networks underlying human cognition. Only recently have connectivity methods begun to emerge that make use of the full multidimensional information contained in patterns of brain activation, rather than unidimensional summary measures of these patterns. To date, these methods have mostly been applied to fMRI data, and no method allows vertex-to-vertex transformations with the temporal specificity of EEG/MEG data. Here, we introduce time-lagged multidimensional pattern connectivity (TL-MDPC) as a novel bivariate functional connectivity metric for EEG/MEG research. TL-MDPC estimates the vertex-to-vertex transformations among multiple brain regions and across different latency ranges. It determines how well patterns in ROI [Formula: see text] at time point [Formula: see text] can linearly predict patterns of ROI [Formula: see text] at time point [Formula: see text]. In the present study, we use simulations to demonstrate TL-MDPC's increased sensitivity to multidimensional effects compared to a unidimensional approach across realistic choices of number of trials and signal-to-noise ratios. We applied TL-MDPC, as well as its unidimensional counterpart, to an existing dataset varying the depth of semantic processing of visually presented words by contrasting a semantic decision and a lexical decision task. TL-MDPC detected significant effects beginning very early on, and showed stronger task modulations than the unidimensional approach, suggesting that it is capable of capturing more information. With TL-MDPC only, we observed rich connectivity between core semantic representation (left and right anterior temporal lobes) and semantic control (inferior frontal gyrus and posterior temporal cortex) areas with greater semantic demands. TL-MDPC is a promising approach to identify multidimensional connectivity patterns, typically missed by unidimensional approaches. Academic Press 2023-04-15 /pmc/articles/PMC10030313/ /pubmed/36813063 http://dx.doi.org/10.1016/j.neuroimage.2023.119958 Text en © 2023 The Author(s) https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Rahimi, Setareh
Jackson, Rebecca
Farahibozorg, Seyedeh-Rezvan
Hauk, Olaf
Time-Lagged Multidimensional Pattern Connectivity (TL-MDPC): An EEG/MEG pattern transformation based functional connectivity metric()
title Time-Lagged Multidimensional Pattern Connectivity (TL-MDPC): An EEG/MEG pattern transformation based functional connectivity metric()
title_full Time-Lagged Multidimensional Pattern Connectivity (TL-MDPC): An EEG/MEG pattern transformation based functional connectivity metric()
title_fullStr Time-Lagged Multidimensional Pattern Connectivity (TL-MDPC): An EEG/MEG pattern transformation based functional connectivity metric()
title_full_unstemmed Time-Lagged Multidimensional Pattern Connectivity (TL-MDPC): An EEG/MEG pattern transformation based functional connectivity metric()
title_short Time-Lagged Multidimensional Pattern Connectivity (TL-MDPC): An EEG/MEG pattern transformation based functional connectivity metric()
title_sort time-lagged multidimensional pattern connectivity (tl-mdpc): an eeg/meg pattern transformation based functional connectivity metric()
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10030313/
https://www.ncbi.nlm.nih.gov/pubmed/36813063
http://dx.doi.org/10.1016/j.neuroimage.2023.119958
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