基于split - bregman的多维光谱成像数据群稀疏重建

Brian L. Burns, N. Wilson, M. Thomas
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引用次数: 0

摘要

4D磁共振波谱成像数据提供了有价值的体内生化信息,但其采集时间过长,无法用于临床。本文采用4X、6X和8X欠采样的4D幻像MRSI数据进行回顾性分析,然后利用压缩感知和群稀疏性进行重构。在Split-Bregman框架内,提供了组稀疏问题解决方案的推导,它允许任意的,重叠的变换系数组。结果表明,在每个欠采样率下,具有重叠组的群稀疏重建比具有更好的峰值线形和振幅再现能力的压缩感知重建更准确。这些实验中使用的加速因子可能会将扫描时间从40分钟减少到5分钟。
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Split-Bregman-based group-sparse reconstruction of multidimensional spectroscopic imaging data
4D Magnetic Resonance Spectroscopic Imaging data provides valuable biochemical information in vivo, however, its acquisition time is too long to be used clinically. In this paper, 4D phantom MRSI data are retrospectively under-sampled 4X, 6X, and 8X then reconstructed with Compressed Sensing and Group Sparsity. A derivation for the Group Sparse problem solution within the Split-Bregman framework is provided which allows for arbitrary, over-lapping groups of transform coefficients. Results show that Group Sparse reconstruction with over-lapping groups is more accurate at each under-sampling rate than Compressed Sensing reconstruction with superior peak line-shape and amplitude reproduction. The acceleration factors used in these experiments could potentially reduce scan times from 40 minutes to 5 minutes.
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