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ACCELERATING MR PARAMETER MAPPING USING SPARSITY-PROMOTING REGULARIZATION IN PARAMETRIC DIMENSION

机译:在参数维度中使用稀疏性促进正则化的MR参数映射

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摘要

MR parameter mapping requires sampling along additional (parametric) dimension, which often limits its clinical appeal due to a several-fold increase in scan times compared to conventional anatomic imaging. Data undersampling combined with parallel imaging is an attractive way to reduce scan time in such applications. However, inherent SNR penalties of parallel MRI due to noise amplification often limit its utility even at moderate acceleration factors, requiring regularization by prior knowledge. In this work, we propose a novel regularization strategy, which utilizes smoothness of signal evolution in the parametric dimension within compressed sensing framework (p-CS) to provide accurate and precise estimation of parametric maps from undersampled data. The performance of the method was demonstrated with variable flip angle T1 mapping and compared favorably to two representative reconstruction approaches, image space-based total variation regularization and an analytical model-based reconstruction. The proposed p-CS regularization was found to provide efficient suppression of noise amplification and preservation of parameter mapping accuracy without explicit utilization of analytical signal models. The developed method may facilitate acceleration of quantitative MRI techniques that are not suitable to model-based reconstruction because of complex signal models or when signal deviations from the expected analytical model exist.
机译:MR参数映射需要沿其他(参数)维采样,由于扫描时间与传统解剖学成像相比增加了数倍,因此通常会限制其临床吸引力。数据欠采样与并行成像相结合是减少此类应用中扫描时间的一种有吸引力的方法。但是,由于噪声放大而导致的并行MRI固有的SNR惩罚常常限制了其效用,即使在中等加速因子下也是如此,这需要先验知识进行正则化。在这项工作中,我们提出了一种新颖的正则化策略,该策略利用压缩感测框架(p-CS)内参数维度中信号演化的平滑度来提供来自欠采样数据的参数图的精确估计。通过可变的翻转角T1映射证明了该方法的性能,并与两种代表性的重建方法(基于图像空间的总变化正则化和基于分析模型的重建)相比具有优势。发现提出的p-CS正则化可有效抑制噪声放大并保持参数映射精度,而无需明确利用分析信号模型。由于复杂的信号模型或当信号与预期分析模型存在偏差时,所开发的方法可能有助于加速不适用于基于模型的重建的定量MRI技术。

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