论文标题
快速低等级柱的加速动态MRI的压缩感测
Fast Low Rank column-wise Compressive Sensing for Accelerated Dynamic MRI
论文作者
论文摘要
这项工作开发了一组新型的算法,交替的梯度下降(GD)和MRI的最小化(Altgdmin-MRI1和AltGdmin-MRI2),用于通过假设由序列化序列图像形成的矩阵形成的矩阵模型,以加速动态MRI。 LR模型本身在MRI文献中是众所周知的。我们的贡献是一种基于GD的新型算法,与现有工作相比,它更快,有效和一般。并仔细使用3级分层LR模型。总的来说,我们的意思是,我们的方法可以单一选择参数,为多个加速动态MRI应用,多个采样率和采样方案提供了准确的重建。 我们表明,我们的方法的表现要优于许多流行的现有方法,同时平均也比所有方法都快。该主张基于对8种不同回顾性的比较,在采样的多型动力学MRI应用下,以多个采样率在采样率下使用1D笛卡尔或2D伪radial进行了采样。还提供了对一些样本数据集的前瞻性评估。我们的第二个贡献是一个迷你批次子空间跟踪扩展,可以在它们到达后短暂延迟内处理新的测量结果并返回重建。恢复算法本身也比批处理对应物快。
This work develops a novel set of algorithms, alternating Gradient Descent (GD) and minimization for MRI (altGDmin-MRI1 and altGDmin-MRI2), for accelerated dynamic MRI by assuming an approximate low-rank (LR) model on the matrix formed by the vectorized images of the sequence. The LR model itself is well-known in the MRI literature; our contribution is the novel GD-based algorithms which are much faster, memory efficient, and general compared with existing work; and careful use of a 3-level hierarchical LR model. By general, we mean that, with a single choice of parameters, our method provides accurate reconstructions for multiple accelerated dynamic MRI applications, multiple sampling rates and sampling schemes. We show that our methods outperform many of the popular existing approaches while also being faster than all of them, on average. This claim is based on comparisons on 8 different retrospectively under sampled multi-coil dynamic MRI applications, sampled using either 1D Cartesian or 2D pseudo radial under sampling, at multiple sampling rates. Evaluations on some prospectively under sampled datasets are also provided. Our second contribution is a mini-batch subspace tracking extension that can process new measurements and return reconstructions within a short delay after they arrive. The recovery algorithm itself is also faster than its batch counterpart.