DocumentCode :
1945681
Title :
Improved MRI reconstruction from reduced scans k-space by integrating neural priors in the Bayesian restoration
Author :
Reczko, M. ; Karras, D.A. ; Mertzios, B.G. ; Graveron-Demilly, D. ; van Ormondt, D.
Author_Institution :
Democritus Univ. of Thrace, Xanthi, Greece
Volume :
3
fYear :
2001
fDate :
2001
Firstpage :
2343
Abstract :
The goal of this paper is to present the development of a new reconstruction methodology for restoring magnetic resonance images (MRI) from reduced scans in k-space. The proposed approach considers the combined use of neural network models and Bayesian restoration, in the problem of MRI image extraction from sparsely sampled k-space, following several different sampling schemes, including spiral and radial. Effective solutions to this problem are indispensable especially when dealing with MRI of dynamic phenomena since then, rapid sampling in k-space is required. The goal in such a case is to make the measurement time smaller by reducing scanning trajectories as much as possible. In this way, however, underdetermined equations are introduced and poor image reconstruction follows. It is suggested here that significant improvements could be achieved, concerning quality of the extracted image, by judiciously applying neural network and Bayesian estimation methods to the k-space data. More specifically, it is demonstrated that neural network techniques could construct efficient priors and introduce them in the procedure of Bayesian reconstruction. These ANN priors are independent of specific image properties and probability distributions. They are based on training supervised multilayer perceptron (MLP) neural filters to estimate the missing samples of complex k-space and thus, to improve k-space information capacity. Such a neural filter based prior is integrated to the maximum likelihood procedure involved in the Bayesian reconstruction. It is found that the proposed methodology leads to enhanced image extraction results favorably compared to the ones obtained by the traditional Bayesian MRI reconstruction approach as well as by the pure MLP based reconstruction approach.
Keywords :
Bayes methods; biomedical MRI; image reconstruction; image sampling; learning (artificial intelligence); maximum likelihood estimation; medical image processing; multilayer perceptrons; Bayesian restoration; MRI image extraction; dynamic phenomena; enhanced image extraction; image reconstruction; improved MRI reconstruction; k-space information capacity; magnetic resonance images; maximum likelihood procedure; measurement time; neural network models; neural prior integration; radial sampling; rapid sampling; reduced scans k-space; scanning trajectories; sparsely sampled k-space; spiral sampling; supervised multilayer perceptron neural filters; training; underdetermined equations; Bayesian methods; Data mining; Filters; Image reconstruction; Image restoration; Image sampling; Magnetic resonance; Magnetic resonance imaging; Neural networks; Spirals;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Engineering in Medicine and Biology Society, 2001. Proceedings of the 23rd Annual International Conference of the IEEE
ISSN :
1094-687X
Print_ISBN :
0-7803-7211-5
Type :
conf
DOI :
10.1109/IEMBS.2001.1017247
Filename :
1017247
Link To Document :
بازگشت