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首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >Adaptive fixed-point iterative shrinkage/thresholding algorithm for MR imaging reconstruction using compressed sensing
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Adaptive fixed-point iterative shrinkage/thresholding algorithm for MR imaging reconstruction using compressed sensing

机译:基于压缩传感的磁共振成像重建的自适应定点迭代收缩/阈值算法

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摘要

Recently compressed sensing (CS) has been applied to under-sampling MR image reconstruction for significantly reducing signal acquisition time. To guarantee the accuracy and efficiency of the CS-based MR image reconstruction, it necessitates determining several regularization and algorithm-introduced parameters properly in practical implementations. The regularization parameter is used to control the trade-off between the sparsity of MR image and the fidelity measures of k-space data, and thus has an important effect on the reconstructed image quality. The algorithm-introduced parameters determine the global convergence rate of the algorithm itself. These parameters make CS-based MR image reconstruction a more difficult scheme than traditional Fourier-based method while implemented on a clinical MR scanner. In this paper, we propose a new approach that reveals that the regularization parameter can be taken as a threshold in a fixed-point iterative shrinkage/thresholding algorithm (FPIST) and chosen by employing minimax threshold selection method. No extra parameter is introduced by FPIST. The simulation results on synthetic and real complex-valued MRI data show that the proposed method can adaptively choose the regularization parameter and effectively achieve high reconstruction quality. The proposed method should prove very useful for practical CS-based MRI applications.
机译:最近,压缩感测(CS)已应用于欠采样MR图像重建,以显着减少信号采集时间。为了保证基于CS的MR图像重建的准确性和效率,在实际实现中有必要确定几个正则化和算法引入的参数。正则化参数用于控制MR图像的稀疏度和k空间数据的保真度之间的权衡,因此对重构图像质量具有重要影响。算法引入的参数确定算法本身的全局收敛速度。这些参数使基于CS的MR图像重建比传统的基于Fourier的方法在临床MR扫描仪上实现时更加困难。在本文中,我们提出了一种新方法,该方法揭示了可将正则化参数作为定点迭代收缩/阈值算法(FPIST)中的阈值,并采用minimax阈值​​选择方法进行选择。 FPIST不会引入额外的参数。对合成和实数复数值MRI数据的仿真结果表明,该方法可以自适应地选择正则化参数,有效地获得较高的重建质量。所提出的方法应被证明对于基于CS的实际MRI应用非常有用。

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