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Fast Parallel MR Image Reconstruction via B1-based Adaptive Restart Iterative Soft Thresholding Algorithms (BARISTA)

机译:通过基于B1的自适应重启迭代软阈值算法(BARISTA)进行快速并行MR图像重建

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摘要

Sparsity-promoting regularization is useful for combining compressed sensing assumptions with parallel MRI for reducing scan time while preserving image quality. Variable splitting algorithms are the current state-of-the-art algorithms for SENSE-type MR image reconstruction with sparsity-promoting regularization. These methods are very general and have been observed to work with almost any regularizer; however, the tuning of associated convergence parameters is a commonly-cited hindrance in their adoption. Conversely, majorize-minimize algorithms based on a single Lipschitz constant have been observed to be slow in shift-variant applications such as SENSE-type MR image reconstruction since the associated Lipschitz constants are loose bounds for the shift-variant behavior. This paper bridges the gap between the Lipschitz constant and the shift-variant aspects of SENSE-type MR imaging by introducing majorizing matrices in the range of the regularizer matrix. The proposed majorize-minimize methods (called BARISTA) converge faster than state-of-the-art variable splitting algorithms when combined with momentum acceleration and adaptive momentum restarting. Furthermore, the tuning parameters associated with the proposed methods are unitless convergence tolerances that are easier to choose than the constraint penalty parameters required by variable splitting algorithms.
机译:稀疏性促进正则化对于将压缩的传感假设与并行MRI结合使用很有用,以减少扫描时间,同时保持图像质量。可变分割算法是具有稀疏促进正则化的SENSE型MR图像重建的最新算法。这些方法非常通用,并且已经观察到几乎可以与任何正则化方法一起使用。然而,调整相关的收敛参数是采用它们的普遍障碍。相反,已经观察到基于单个Lipschitz常数的主化最小化算法在诸如SENSE型MR图像重建之类的变量变化应用中速度较慢,因为相关的Lipschitz常数是变量变化行为的宽松边界。本文通过引入正则化矩阵范围内的主化矩阵,弥合了Lipschitz常数与SENSE型MR成像的移位变量之间的差距。当结合动量加速度和自适应动量重新启动时,所提出的主化最小化方法(称为BARISTA)的收敛速度比最新的变量分裂算法要快。此外,与所提出的方法相关的调整参数是无单位收敛容限,它比变量分割算法所需的约束惩罚参数更容易选择。

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