Suppression of MRI Truncation Artifacts Using Total Variation Constrained Data Extrapolation

The finite sampling of k-space in MRI causes spurious image artifacts, known as Gibbs ringing, which result from signal truncation at the border of k-space. The effect is especially visible for acquisitions at low resolution and commonly reduced by filtering at the expense of image blurring. The pre...

Full description

Bibliographic Details
Main Authors: Kai Tobias Block, Martin Uecker, Jens Frahm
Format: Article
Language:English
Published: Hindawi Limited 2008-01-01
Series:International Journal of Biomedical Imaging
Online Access:http://dx.doi.org/10.1155/2008/184123
id doaj-9bdf0a26de324585a5f01376a81599b0
record_format Article
spelling doaj-9bdf0a26de324585a5f01376a81599b02020-11-25T00:19:09ZengHindawi LimitedInternational Journal of Biomedical Imaging1687-41881687-41962008-01-01200810.1155/2008/184123184123Suppression of MRI Truncation Artifacts Using Total Variation Constrained Data ExtrapolationKai Tobias Block0Martin Uecker1Jens Frahm2Biomedizinische NMR Forschungs GmbH, Max-Planck-Institut für biophysikalische Chemie, 37070 Göttingen, GermanyBiomedizinische NMR Forschungs GmbH, Max-Planck-Institut für biophysikalische Chemie, 37070 Göttingen, GermanyBiomedizinische NMR Forschungs GmbH, Max-Planck-Institut für biophysikalische Chemie, 37070 Göttingen, GermanyThe finite sampling of k-space in MRI causes spurious image artifacts, known as Gibbs ringing, which result from signal truncation at the border of k-space. The effect is especially visible for acquisitions at low resolution and commonly reduced by filtering at the expense of image blurring. The present work demonstrates that the simple assumption of a piecewise-constant object can be exploited to extrapolate the data in k-space beyond the measured part. The method allows for a significant reduction of truncation artifacts without compromising resolution. The assumption translates into a total variation minimization problem, which can be solved with a nonlinear optimization algorithm. In the presence of substantial noise, a modified approach offers edge-preserving denoising by allowing for slight deviations from the measured data in addition to supplementing data. The effectiveness of these methods is demonstrated with simulations as well as experimental data for a phantom and human brain in vivo.http://dx.doi.org/10.1155/2008/184123
collection DOAJ
language English
format Article
sources DOAJ
author Kai Tobias Block
Martin Uecker
Jens Frahm
spellingShingle Kai Tobias Block
Martin Uecker
Jens Frahm
Suppression of MRI Truncation Artifacts Using Total Variation Constrained Data Extrapolation
International Journal of Biomedical Imaging
author_facet Kai Tobias Block
Martin Uecker
Jens Frahm
author_sort Kai Tobias Block
title Suppression of MRI Truncation Artifacts Using Total Variation Constrained Data Extrapolation
title_short Suppression of MRI Truncation Artifacts Using Total Variation Constrained Data Extrapolation
title_full Suppression of MRI Truncation Artifacts Using Total Variation Constrained Data Extrapolation
title_fullStr Suppression of MRI Truncation Artifacts Using Total Variation Constrained Data Extrapolation
title_full_unstemmed Suppression of MRI Truncation Artifacts Using Total Variation Constrained Data Extrapolation
title_sort suppression of mri truncation artifacts using total variation constrained data extrapolation
publisher Hindawi Limited
series International Journal of Biomedical Imaging
issn 1687-4188
1687-4196
publishDate 2008-01-01
description The finite sampling of k-space in MRI causes spurious image artifacts, known as Gibbs ringing, which result from signal truncation at the border of k-space. The effect is especially visible for acquisitions at low resolution and commonly reduced by filtering at the expense of image blurring. The present work demonstrates that the simple assumption of a piecewise-constant object can be exploited to extrapolate the data in k-space beyond the measured part. The method allows for a significant reduction of truncation artifacts without compromising resolution. The assumption translates into a total variation minimization problem, which can be solved with a nonlinear optimization algorithm. In the presence of substantial noise, a modified approach offers edge-preserving denoising by allowing for slight deviations from the measured data in addition to supplementing data. The effectiveness of these methods is demonstrated with simulations as well as experimental data for a phantom and human brain in vivo.
url http://dx.doi.org/10.1155/2008/184123
work_keys_str_mv AT kaitobiasblock suppressionofmritruncationartifactsusingtotalvariationconstraineddataextrapolation
AT martinuecker suppressionofmritruncationartifactsusingtotalvariationconstraineddataextrapolation
AT jensfrahm suppressionofmritruncationartifactsusingtotalvariationconstraineddataextrapolation
_version_ 1725372933398855680