Measuring functional connectivity in MEG: A multivariate approach insensitive to linear source leakage

A number of recent studies have begun to show the promise of magnetoencephalography (MEG) as a means to non-invasively measure functional connectivity within distributed networks in the human brain. However, a number of problems with the methodology still remain — the biggest of these being how to d...

Full description

Bibliographic Details
Main Authors: Brookes, M.J., Woolrich, M.W., Barnes, G.R.
Format: Online
Language:English
Published: Academic Press 2012
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3459100/
id pubmed-3459100
recordtype oai_dc
spelling pubmed-34591002012-11-01 Measuring functional connectivity in MEG: A multivariate approach insensitive to linear source leakage Brookes, M.J. Woolrich, M.W. Barnes, G.R. Technical Note A number of recent studies have begun to show the promise of magnetoencephalography (MEG) as a means to non-invasively measure functional connectivity within distributed networks in the human brain. However, a number of problems with the methodology still remain — the biggest of these being how to deal with the non-independence of voxels in source space, often termed signal leakage. In this paper we demonstrate a method by which non-zero lag cortico-cortical interactions between the power envelopes of neural oscillatory processes can be reliably identified within a multivariate statistical framework. The method is spatially unbiased, moderately conservative in false positive rate and removes linear signal leakage between seed and target voxels. We demonstrate this methodology in simulation and in real MEG data. The multivariate method offers a powerful means to capture the high dimensionality and rich information content of MEG signals in a single imaging statistic. Given a significant interaction between two areas, we go on to show how classical statistical tests can be used to quantify the importance of the data features driving the interaction. Academic Press 2012-11-01 /pmc/articles/PMC3459100/ /pubmed/22484306 http://dx.doi.org/10.1016/j.neuroimage.2012.03.048 Text en © 2012 Elsevier Inc. https://creativecommons.org/licenses/by/3.0/ Open Access under CC BY 3.0 (https://creativecommons.org/licenses/by/3.0/) license
repository_type Open Access Journal
institution_category Foreign Institution
institution US National Center for Biotechnology Information
building NCBI PubMed
collection Online Access
language English
format Online
author Brookes, M.J.
Woolrich, M.W.
Barnes, G.R.
spellingShingle Brookes, M.J.
Woolrich, M.W.
Barnes, G.R.
Measuring functional connectivity in MEG: A multivariate approach insensitive to linear source leakage
author_facet Brookes, M.J.
Woolrich, M.W.
Barnes, G.R.
author_sort Brookes, M.J.
title Measuring functional connectivity in MEG: A multivariate approach insensitive to linear source leakage
title_short Measuring functional connectivity in MEG: A multivariate approach insensitive to linear source leakage
title_full Measuring functional connectivity in MEG: A multivariate approach insensitive to linear source leakage
title_fullStr Measuring functional connectivity in MEG: A multivariate approach insensitive to linear source leakage
title_full_unstemmed Measuring functional connectivity in MEG: A multivariate approach insensitive to linear source leakage
title_sort measuring functional connectivity in meg: a multivariate approach insensitive to linear source leakage
description A number of recent studies have begun to show the promise of magnetoencephalography (MEG) as a means to non-invasively measure functional connectivity within distributed networks in the human brain. However, a number of problems with the methodology still remain — the biggest of these being how to deal with the non-independence of voxels in source space, often termed signal leakage. In this paper we demonstrate a method by which non-zero lag cortico-cortical interactions between the power envelopes of neural oscillatory processes can be reliably identified within a multivariate statistical framework. The method is spatially unbiased, moderately conservative in false positive rate and removes linear signal leakage between seed and target voxels. We demonstrate this methodology in simulation and in real MEG data. The multivariate method offers a powerful means to capture the high dimensionality and rich information content of MEG signals in a single imaging statistic. Given a significant interaction between two areas, we go on to show how classical statistical tests can be used to quantify the importance of the data features driving the interaction.
publisher Academic Press
publishDate 2012
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3459100/
_version_ 1611912176656711680