Statistical Parametric Mapping of fMRI data using Spectral Graph Wavelets

In typical statistical parametric mapping (SPM) of fMRI data, the functional data are pre-smoothed using a Gaussian kernel to reduce noise at the cost of losing spatial specificity. Wavelet approaches have been incorporated in such analysis by enabling an efficient representation of the underlying b...

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Main Author: Behjat, Hamid
Format: Others
Language:English
Published: Linköpings universitet, Medicinsk informatik 2012
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-81143
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spelling ndltd-UPSALLA1-oai-DiVA.org-liu-811432013-01-08T13:43:55ZStatistical Parametric Mapping of fMRI data using Spectral Graph WaveletsengBehjat, HamidLinköpings universitet, Medicinsk informatikLinköpings universitet, Tekniska högskolan2012Statistical parametric mappingfMRISpectral graph theoryGraph wavelet transformWavelet thresholdingIn typical statistical parametric mapping (SPM) of fMRI data, the functional data are pre-smoothed using a Gaussian kernel to reduce noise at the cost of losing spatial specificity. Wavelet approaches have been incorporated in such analysis by enabling an efficient representation of the underlying brain activity through spatial transformation of the original, un-smoothed data; a successful framework is the wavelet-based statistical parametric mapping (WSPM) which enables integrated wavelet processing and spatial statistical testing. However, in using the conventional wavelets, the functional data are considered to lie on a regular Euclidean space, which is far from reality, since the underlying signal lies within the complex, non rectangular domain of the cerebral cortex. Thus, using wavelets that function on more complex domains such as a graph holds promise. The aim of the current project has been to integrate a recently developed spectral graph wavelet transform as an advanced transformation for fMRI brain data into the WSPM framework. We introduce the design of suitable weighted and un-weighted graphs which are defined based on the convoluted structure of the cerebral cortex. An optimal design of spatially localized spectral graph wavelet frames suitable for the designed large scale graphs is introduced. We have evaluated the proposed graph approach for fMRI analysis on both simulated as well as real data. The results show a superior performance in detecting fine structured, spatially localized activation maps compared to the use of conventional wavelets, as well as normal SPM. The approach is implemented in an SPM compatible manner, and is included as an extension to the WSPM toolbox for SPM. Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-81143application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Others
sources NDLTD
topic Statistical parametric mapping
fMRI
Spectral graph theory
Graph wavelet transform
Wavelet thresholding
spellingShingle Statistical parametric mapping
fMRI
Spectral graph theory
Graph wavelet transform
Wavelet thresholding
Behjat, Hamid
Statistical Parametric Mapping of fMRI data using Spectral Graph Wavelets
description In typical statistical parametric mapping (SPM) of fMRI data, the functional data are pre-smoothed using a Gaussian kernel to reduce noise at the cost of losing spatial specificity. Wavelet approaches have been incorporated in such analysis by enabling an efficient representation of the underlying brain activity through spatial transformation of the original, un-smoothed data; a successful framework is the wavelet-based statistical parametric mapping (WSPM) which enables integrated wavelet processing and spatial statistical testing. However, in using the conventional wavelets, the functional data are considered to lie on a regular Euclidean space, which is far from reality, since the underlying signal lies within the complex, non rectangular domain of the cerebral cortex. Thus, using wavelets that function on more complex domains such as a graph holds promise. The aim of the current project has been to integrate a recently developed spectral graph wavelet transform as an advanced transformation for fMRI brain data into the WSPM framework. We introduce the design of suitable weighted and un-weighted graphs which are defined based on the convoluted structure of the cerebral cortex. An optimal design of spatially localized spectral graph wavelet frames suitable for the designed large scale graphs is introduced. We have evaluated the proposed graph approach for fMRI analysis on both simulated as well as real data. The results show a superior performance in detecting fine structured, spatially localized activation maps compared to the use of conventional wavelets, as well as normal SPM. The approach is implemented in an SPM compatible manner, and is included as an extension to the WSPM toolbox for SPM.
author Behjat, Hamid
author_facet Behjat, Hamid
author_sort Behjat, Hamid
title Statistical Parametric Mapping of fMRI data using Spectral Graph Wavelets
title_short Statistical Parametric Mapping of fMRI data using Spectral Graph Wavelets
title_full Statistical Parametric Mapping of fMRI data using Spectral Graph Wavelets
title_fullStr Statistical Parametric Mapping of fMRI data using Spectral Graph Wavelets
title_full_unstemmed Statistical Parametric Mapping of fMRI data using Spectral Graph Wavelets
title_sort statistical parametric mapping of fmri data using spectral graph wavelets
publisher Linköpings universitet, Medicinsk informatik
publishDate 2012
url http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-81143
work_keys_str_mv AT behjathamid statisticalparametricmappingoffmridatausingspectralgraphwavelets
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