| Literature DB >> 21538636 |
B Michael Kelm1, Frederik O Kaster, Anke Henning, Marc-André Weber, Peter Bachert, Peter Boesiger, Fred A Hamprecht, Bjoern H Menze.
Abstract
We propose a Bayesian smoothness prior in the spectral fitting of MRS images which can be used in addition to commonly employed prior knowledge. By combining a frequency-domain model for the free induction decay with a Gaussian Markov random field prior, a new optimization objective is derived that encourages smooth parameter maps. Using a particular parameterization of the prior, smooth damping, frequency and phase maps can be obtained whilst preserving sharp spatial features in the amplitude map. A Monte Carlo study based on two sets of simulated data demonstrates that the variance of the estimated parameter maps can be reduced considerably, even below the Cramér-Rao lower bound, when using spatial prior knowledge. Long-TE (1)H MRSI at 1.5 T of a patient with a brain tumor shows that the use of the spatial prior resolves the overlapping peaks of choline and creatine when a single voxel method fails to do so. Improved and detailed metabolic maps can be derived from high-spatial-resolution, short-TE (1)H MRSI at 3 T. Finally, the evaluation of four series of long-TE brain MRSI data with various signal-to-noise ratios shows the general benefit of the proposed approach.Entities:
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Year: 2011 PMID: 21538636 DOI: 10.1002/nbm.1704
Source DB: PubMed Journal: NMR Biomed ISSN: 0952-3480 Impact factor: 4.044