Accelerating dynamic MRI by compressed sensing reconstruction from undersampled k-t space with spiral trajectories

Azar Tolouee, J. Alirezaie, P. Babyn
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引用次数: 2

Abstract

Compressed sensing (CS) is a data-reduction technique that has been applied to speed up the acquisition in MRI. In this work, the feasibility of the CS framework for accelerated dynamic MRI is assessed. The fundamental condition of sparsity required in the CS framework is exploited by applying a wavelet transform and a Fourier transform along spatial and temporal directions. The second condition for CS, random sampling, is done by randomly skipping spiral interleaves in each dynamic frame. The proposed approach was tested in simulated and in vivo cardiac MRI data. Results show that higher acceleration factors, with improved spatial and temporal quality, can be obtained with the proposed approach in comparison to the standard CS reconstruction.
从欠采样k-t空间与螺旋轨迹压缩感知重建加速动态MRI
压缩感知(CS)是一种数据简化技术,用于提高MRI图像的采集速度。在这项工作中,评估了CS框架用于加速动态MRI的可行性。CS框架中所需的稀疏性的基本条件是通过沿空间和时间方向应用小波变换和傅里叶变换来实现的。CS的第二个条件,随机抽样,是通过在每个动态帧中随机跳过螺旋交织来完成的。所提出的方法在模拟和体内心脏MRI数据中进行了测试。结果表明,与标准的CS重建相比,该方法可以获得更高的加速度因子,并改善了时空质量。
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