4.5 Article

Multi-scale graph-cut algorithm for efficient water-fat separation

Journal

MAGNETIC RESONANCE IN MEDICINE
Volume 78, Issue 3, Pages 941-949

Publisher

WILEY
DOI: 10.1002/mrm.26479

Keywords

chemical shift imaging; Dixon; fat suppression; graph cuts; multi-scale processing; water-fat separation

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PurposeTo improve the accuracy and robustness to noise in water-fat separation by unifying the multiscale and graph cut based approaches to B-0-correction. MethodsA previously proposed water-fat separation algorithm that corrects for B-0 field inhomogeneity in 3D by a single quadratic pseudo-Boolean optimization (QPBO) graph cut was incorporated into a multi-scale framework, where field map solutions are propagated from coarse to fine scales for voxels that are not resolved by the graph cut. The accuracy of the single-scale and multi-scale QPBO algorithms was evaluated against benchmark reference datasets. The robustness to noise was evaluated by adding noise to the input data prior to water-fat separation. ResultsBoth algorithms achieved the highest accuracy when compared with seven previously published methods, while computation times were acceptable for implementation in clinical routine. The multi-scale algorithm was more robust to noise than the single-scale algorithm, while causing only a small increase (+10%) of the reconstruction time. ConclusionThe proposed 3D multi-scale QPBO algorithm offers accurate water-fat separation, robustness to noise, and fast reconstruction. The software implementation is freely available to the research community. Magn Reson Med 78:941-949, 2017. (c) 2016 International Society for Magnetic Resonance in Medicine

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