Modeling SSFP functional MRI contrast in the brain.

Steady-state free precession (SSFP) has recently been proposed for function MRI because of the potential for reducing image distortion and signal dropout. Several different contrast mechanisms have been suggested to explain the reported observations, but there has been limited work comparing theory...

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Main Authors: Miller, K, Jezzard, P
Format: Journal article
Language:English
Published: 2008
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author Miller, K
Jezzard, P
author_facet Miller, K
Jezzard, P
author_sort Miller, K
collection OXFORD
description Steady-state free precession (SSFP) has recently been proposed for function MRI because of the potential for reducing image distortion and signal dropout. Several different contrast mechanisms have been suggested to explain the reported observations, but there has been limited work comparing theory with experiment in the brain. Moreover, the detailed work that has considered oxygen-dependent signal in SSFP outside the brain has focused on R(2) effects in the pass band, and largely neglected the signal contrast that occurs due to off-resonance effects. The article describes a model for SSFP functional contrast based on the convolution of the theoretical SSFP profile with the underlying frequency distribution. It is demonstrated that such a model must account for the effects of diffusion, which can alter the apparent R(2) and linespread. Monte Carlo simulations are used to calibrate corrections for these terms. This new model has the computational efficiency of the convolution model while encapsulating information from more time-consuming Monte Carlo simulations. This corrected convolution model is shown to agree well with experimental data, and model predictions and limitations are discussed.
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spelling oxford-uuid:f32fa5f7-f8ff-4167-a543-d1f9529d17a62022-03-27T12:10:04ZModeling SSFP functional MRI contrast in the brain.Journal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:f32fa5f7-f8ff-4167-a543-d1f9529d17a6EnglishSymplectic Elements at Oxford2008Miller, KJezzard, PSteady-state free precession (SSFP) has recently been proposed for function MRI because of the potential for reducing image distortion and signal dropout. Several different contrast mechanisms have been suggested to explain the reported observations, but there has been limited work comparing theory with experiment in the brain. Moreover, the detailed work that has considered oxygen-dependent signal in SSFP outside the brain has focused on R(2) effects in the pass band, and largely neglected the signal contrast that occurs due to off-resonance effects. The article describes a model for SSFP functional contrast based on the convolution of the theoretical SSFP profile with the underlying frequency distribution. It is demonstrated that such a model must account for the effects of diffusion, which can alter the apparent R(2) and linespread. Monte Carlo simulations are used to calibrate corrections for these terms. This new model has the computational efficiency of the convolution model while encapsulating information from more time-consuming Monte Carlo simulations. This corrected convolution model is shown to agree well with experimental data, and model predictions and limitations are discussed.
spellingShingle Miller, K
Jezzard, P
Modeling SSFP functional MRI contrast in the brain.
title Modeling SSFP functional MRI contrast in the brain.
title_full Modeling SSFP functional MRI contrast in the brain.
title_fullStr Modeling SSFP functional MRI contrast in the brain.
title_full_unstemmed Modeling SSFP functional MRI contrast in the brain.
title_short Modeling SSFP functional MRI contrast in the brain.
title_sort modeling ssfp functional mri contrast in the brain
work_keys_str_mv AT millerk modelingssfpfunctionalmricontrastinthebrain
AT jezzardp modelingssfpfunctionalmricontrastinthebrain