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Combined compressed sensing and parallel mri compared for uniform and random cartesian undersampling of K-space

机译:组合压缩感测和并行mri比较K空间的均匀和随机笛卡尔欠采样

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Both compressed sensing (CS) and parallel imaging effectively reconstruct magnetic resonance images from undersampled data. Combining both methods enables imaging with greater undersampling than accomplished previously. This paper investigates the choice of a suitable sampling pattern to accommodate both CS and parallel imaging. A combined method named SpRING is described and extended to handle random undersampling, and both GRAPPA and SpRING are evaluated for uniform and random undersampling using both simulated and real data. For the simulated data, when the undersampling factor is large, SpRING performs better with random undersampling. However, random undersampling is not as beneficial to SpRING for real data with approximate sparsity.
机译:压缩感测(CS)和并行成像都可以从欠采样数据中有效地重建磁共振图像。结合使用这两种方法,可以实现比以前更大的欠采样成像。本文研究了适合CS和并行成像的合适采样模式的选择。描述了一种称为SpRING的组合方法,并将其扩展为处理随机欠采样,并且使用仿真数据和实际数据对GRAPPA和SpRING进行均匀和随机欠采样评估。对于模拟数据,当欠采样因子很大时,SpRING在随机欠采样的情况下表现更好。但是,对于具有稀疏性的真实数据,随机欠采样对SpRING不利。

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