arf3DS4: An Integrated Framework for Localization and Connectivity Analysis of fMRI Data

In standard fMRI analysis all voxels are tested in a massive univariate approach, that is, each voxel is tested independently. This requires stringent corrections for multiple comparisons to control the number of false positive tests (i.e., marking voxels as active while they are actually not). As a...

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Main Authors: Hilde M. Huizenga, Wouter D. Weeda, Raoul Grasman, Lourens J. Waldorp, Frank de Vos
Format: Article
Language:English
Published: Foundation for Open Access Statistics 2011-10-01
Series:Journal of Statistical Software
Subjects:
Online Access:http://www.jstatsoft.org/v44/i14/paper
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spelling doaj-4b74a623a86a41d68894803983284fea2020-11-24T22:55:21ZengFoundation for Open Access StatisticsJournal of Statistical Software1548-76602011-10-014414arf3DS4: An Integrated Framework for Localization and Connectivity Analysis of fMRI DataHilde M. HuizengaWouter D. WeedaRaoul GrasmanLourens J. WaldorpFrank de VosIn standard fMRI analysis all voxels are tested in a massive univariate approach, that is, each voxel is tested independently. This requires stringent corrections for multiple comparisons to control the number of false positive tests (i.e., marking voxels as active while they are actually not). As a result, fMRI analyses may suffer from low power to detect activation, especially in studies with high levels of noise in the data, for example developmental or single-subject studies. Activated region fitting (ARF) yields a solution by modeling fMRI data by multiple Gaussian shaped regions. ARF only requires a small number of parameters and therefore has increased power to detect activation. If required, the estimated regions can be directly used as regions of interest in a functional connectivity analysis. ARF is implemented in the R package arf3DS4. In this paper ARF and its implementation are described and illustrated with an example.http://www.jstatsoft.org/v44/i14/paperfMRIspatial modelfunctional connectivity.
collection DOAJ
language English
format Article
sources DOAJ
author Hilde M. Huizenga
Wouter D. Weeda
Raoul Grasman
Lourens J. Waldorp
Frank de Vos
spellingShingle Hilde M. Huizenga
Wouter D. Weeda
Raoul Grasman
Lourens J. Waldorp
Frank de Vos
arf3DS4: An Integrated Framework for Localization and Connectivity Analysis of fMRI Data
Journal of Statistical Software
fMRI
spatial model
functional connectivity.
author_facet Hilde M. Huizenga
Wouter D. Weeda
Raoul Grasman
Lourens J. Waldorp
Frank de Vos
author_sort Hilde M. Huizenga
title arf3DS4: An Integrated Framework for Localization and Connectivity Analysis of fMRI Data
title_short arf3DS4: An Integrated Framework for Localization and Connectivity Analysis of fMRI Data
title_full arf3DS4: An Integrated Framework for Localization and Connectivity Analysis of fMRI Data
title_fullStr arf3DS4: An Integrated Framework for Localization and Connectivity Analysis of fMRI Data
title_full_unstemmed arf3DS4: An Integrated Framework for Localization and Connectivity Analysis of fMRI Data
title_sort arf3ds4: an integrated framework for localization and connectivity analysis of fmri data
publisher Foundation for Open Access Statistics
series Journal of Statistical Software
issn 1548-7660
publishDate 2011-10-01
description In standard fMRI analysis all voxels are tested in a massive univariate approach, that is, each voxel is tested independently. This requires stringent corrections for multiple comparisons to control the number of false positive tests (i.e., marking voxels as active while they are actually not). As a result, fMRI analyses may suffer from low power to detect activation, especially in studies with high levels of noise in the data, for example developmental or single-subject studies. Activated region fitting (ARF) yields a solution by modeling fMRI data by multiple Gaussian shaped regions. ARF only requires a small number of parameters and therefore has increased power to detect activation. If required, the estimated regions can be directly used as regions of interest in a functional connectivity analysis. ARF is implemented in the R package arf3DS4. In this paper ARF and its implementation are described and illustrated with an example.
topic fMRI
spatial model
functional connectivity.
url http://www.jstatsoft.org/v44/i14/paper
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