Functional brain connectivity analysis based on the solution of the inverse problem and on covariance analysis

The Linearly Constrained Minimum Variance (LCMV) beamformer is one of the most accepted techniques used to estimate the solution of the inverse problem in functional brain dynamics studies, using magnetoencephalograms (MEG). However, since it is based on the assumption of uncorrelated brain sources,...

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Main Author: Sanchez De Lucio, Jose Alfonso
Other Authors: Halliday, David
Published: University of York 2015
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Online Access:http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.647083
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spelling ndltd-bl.uk-oai-ethos.bl.uk-6470832017-10-04T03:19:47ZFunctional brain connectivity analysis based on the solution of the inverse problem and on covariance analysisSanchez De Lucio, Jose AlfonsoHalliday, David2015The Linearly Constrained Minimum Variance (LCMV) beamformer is one of the most accepted techniques used to estimate the solution of the inverse problem in functional brain dynamics studies, using magnetoencephalograms (MEG). However, since it is based on the assumption of uncorrelated brain sources, its performance decreases in the presence of correlated brain activity, compromising the accuracy of estimates of brain interactions. This problem has not stopped the use of the beamformer in techniques such as Dynamic Imaging of Coherent Sources (DICS), which estimates the functional brain dynamics in a more direct way than the LCMV, and with less computational cost. In this work it is proposed to use a modified version of the well known Minimum Norm Estimates (MNE) spatial filter to estimate the functional brain dynamics of highly correlated activity. This is achieved by using the filter to estimate the cross-spectral density matrices for the brain activity in the same way that DICS does with the LCMV beamformer. The MNE spatial filter is used as a basis because it is not affected by the presence of correlated brain activity. The results obtained from simulations shown that it is possible to estimate highly correlated brain interactions using the proposed method. However, additional methods and constraints need to be applied because of the distorted and weighted output characteristic of the MNE spatial filter. Methods such as the FOcal Undetermined System Solution (FOCUSS) and Singular Value Decomposition Truncation (SVDT) are used to reduce the distorted output, while the estimation of brain dynamics is limited to cortical surface interactions to avoid weighted solutions.621.38University of Yorkhttp://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.647083http://etheses.whiterose.ac.uk/8938/Electronic Thesis or Dissertation
collection NDLTD
sources NDLTD
topic 621.38
spellingShingle 621.38
Sanchez De Lucio, Jose Alfonso
Functional brain connectivity analysis based on the solution of the inverse problem and on covariance analysis
description The Linearly Constrained Minimum Variance (LCMV) beamformer is one of the most accepted techniques used to estimate the solution of the inverse problem in functional brain dynamics studies, using magnetoencephalograms (MEG). However, since it is based on the assumption of uncorrelated brain sources, its performance decreases in the presence of correlated brain activity, compromising the accuracy of estimates of brain interactions. This problem has not stopped the use of the beamformer in techniques such as Dynamic Imaging of Coherent Sources (DICS), which estimates the functional brain dynamics in a more direct way than the LCMV, and with less computational cost. In this work it is proposed to use a modified version of the well known Minimum Norm Estimates (MNE) spatial filter to estimate the functional brain dynamics of highly correlated activity. This is achieved by using the filter to estimate the cross-spectral density matrices for the brain activity in the same way that DICS does with the LCMV beamformer. The MNE spatial filter is used as a basis because it is not affected by the presence of correlated brain activity. The results obtained from simulations shown that it is possible to estimate highly correlated brain interactions using the proposed method. However, additional methods and constraints need to be applied because of the distorted and weighted output characteristic of the MNE spatial filter. Methods such as the FOcal Undetermined System Solution (FOCUSS) and Singular Value Decomposition Truncation (SVDT) are used to reduce the distorted output, while the estimation of brain dynamics is limited to cortical surface interactions to avoid weighted solutions.
author2 Halliday, David
author_facet Halliday, David
Sanchez De Lucio, Jose Alfonso
author Sanchez De Lucio, Jose Alfonso
author_sort Sanchez De Lucio, Jose Alfonso
title Functional brain connectivity analysis based on the solution of the inverse problem and on covariance analysis
title_short Functional brain connectivity analysis based on the solution of the inverse problem and on covariance analysis
title_full Functional brain connectivity analysis based on the solution of the inverse problem and on covariance analysis
title_fullStr Functional brain connectivity analysis based on the solution of the inverse problem and on covariance analysis
title_full_unstemmed Functional brain connectivity analysis based on the solution of the inverse problem and on covariance analysis
title_sort functional brain connectivity analysis based on the solution of the inverse problem and on covariance analysis
publisher University of York
publishDate 2015
url http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.647083
work_keys_str_mv AT sanchezdeluciojosealfonso functionalbrainconnectivityanalysisbasedonthesolutionoftheinverseproblemandoncovarianceanalysis
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