Estimation of high-dimensional connectivity in FMRI data via subspace autoregressive models

We consider the challenge in estimating effective connectivity of brain networks with a large number of nodes from fMRI data. The classical vector autoregressive (VAR) modeling tends to produce unreliable estimates for large dimensions due to the huge number of parameters. We propose a subspace esti...

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主要な著者: Ting, C. M., Seghouane, A. K., Salleh, S. H.
フォーマット: Conference or Workshop Item
出版事項: IEEE Computer Society 2016
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オンライン・アクセス:http://eprints.utm.my/id/eprint/73097/
https://www.scopus.com/inward/record.uri?eid=2-s2.0-84987892034&doi=10.1109%2fSSP.2016.7551799&partnerID=40&md5=32b51c62976b05b5c2a2865f1f2a45e3
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record_format eprints
spelling my.utm.730972017-11-27T02:00:04Z http://eprints.utm.my/id/eprint/73097/ Estimation of high-dimensional connectivity in FMRI data via subspace autoregressive models Ting, C. M. Seghouane, A. K. Salleh, S. H. QH Natural history We consider the challenge in estimating effective connectivity of brain networks with a large number of nodes from fMRI data. The classical vector autoregressive (VAR) modeling tends to produce unreliable estimates for large dimensions due to the huge number of parameters. We propose a subspace estimator for large-dimensional VAR model based on a latent variable model. We derive a subspace VAR model with the observational and noise process driven by a few latent variables, which allows for a lower-dimensional subspace of the dependence structure. We introduce a fitting procedure by first estimating the latent space by principal component analysis (PCA) of the residuals and then reconstructing the subspace estimators from the PCs. Simulation results show superiority of the subspace VAR estimator over the conventional least squares (LS) under high-dimensional settings, with improved accuracy and consistency. Application to estimating large-scale effective connectivity from resting-state fMRI shows the ability of our method in identifying interesting modular structure of human brain networks during rest. IEEE Computer Society 2016 Conference or Workshop Item PeerReviewed Ting, C. M. and Seghouane, A. K. and Salleh, S. H. (2016) Estimation of high-dimensional connectivity in FMRI data via subspace autoregressive models. In: 19th IEEE Statistical Signal Processing Workshop, SSP 2016, 25 June 2016 through 29 June 2016, Spain. https://www.scopus.com/inward/record.uri?eid=2-s2.0-84987892034&doi=10.1109%2fSSP.2016.7551799&partnerID=40&md5=32b51c62976b05b5c2a2865f1f2a45e3
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic QH Natural history
spellingShingle QH Natural history
Ting, C. M.
Seghouane, A. K.
Salleh, S. H.
Estimation of high-dimensional connectivity in FMRI data via subspace autoregressive models
description We consider the challenge in estimating effective connectivity of brain networks with a large number of nodes from fMRI data. The classical vector autoregressive (VAR) modeling tends to produce unreliable estimates for large dimensions due to the huge number of parameters. We propose a subspace estimator for large-dimensional VAR model based on a latent variable model. We derive a subspace VAR model with the observational and noise process driven by a few latent variables, which allows for a lower-dimensional subspace of the dependence structure. We introduce a fitting procedure by first estimating the latent space by principal component analysis (PCA) of the residuals and then reconstructing the subspace estimators from the PCs. Simulation results show superiority of the subspace VAR estimator over the conventional least squares (LS) under high-dimensional settings, with improved accuracy and consistency. Application to estimating large-scale effective connectivity from resting-state fMRI shows the ability of our method in identifying interesting modular structure of human brain networks during rest.
format Conference or Workshop Item
author Ting, C. M.
Seghouane, A. K.
Salleh, S. H.
author_facet Ting, C. M.
Seghouane, A. K.
Salleh, S. H.
author_sort Ting, C. M.
title Estimation of high-dimensional connectivity in FMRI data via subspace autoregressive models
title_short Estimation of high-dimensional connectivity in FMRI data via subspace autoregressive models
title_full Estimation of high-dimensional connectivity in FMRI data via subspace autoregressive models
title_fullStr Estimation of high-dimensional connectivity in FMRI data via subspace autoregressive models
title_full_unstemmed Estimation of high-dimensional connectivity in FMRI data via subspace autoregressive models
title_sort estimation of high-dimensional connectivity in fmri data via subspace autoregressive models
publisher IEEE Computer Society
publishDate 2016
url http://eprints.utm.my/id/eprint/73097/
https://www.scopus.com/inward/record.uri?eid=2-s2.0-84987892034&doi=10.1109%2fSSP.2016.7551799&partnerID=40&md5=32b51c62976b05b5c2a2865f1f2a45e3
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