Institute of Medical Engineering, Graz University of Technology, Kronesgasse 5, Graz, Austria.
MAGMA. 2010 Apr;23(2):103-14. doi: 10.1007/s10334-010-0207-x. Epub 2010 Mar 30.
Subsampling of radially encoded MRI acquisitions in combination with sparsity promoting methods opened a door to significantly increased imaging speed, which is crucial for many important clinical applications. In particular, it has been shown recently that total variation (TV) regularization efficiently reduces undersampling artifacts. The drawback of the method is the long reconstruction time which makes it impossible to use in daily clinical practice, especially if the TV optimization problem has to be solved repeatedly to select a proper regularization parameter.
The goal of this work was to show that for the case of MR Angiography, TV filtering can be performed as a post-processing step, in contrast to the common approach of integrating TV penalties in the image reconstruction process. With this approach, it is possible to use TV algorithms with data fidelity terms in image space, which can be implemented very efficiently on graphic processing units (GPUs). The combination of a special radial sampling trajectory and a full 3D formulation of the TV minimization problem is crucial for the effectiveness of the artifact elimination process.
The computation times of GPU-TV show that interactive elimination of undersampling artifacts is possible even for large volume data sets, in particular allowing the interactive determination of the regularization parameter. Results from phantom measurements and in vivo angiography data sets show that 3D TV, together with the proposed sampling trajectory, leads to pronounced improvements in image quality. However, while artifact removal was very efficient for angiography data sets in this work, it cannot be expected that the proposed method of TV post-processing will work for arbitrary types of scans.
径向编码 MRI 采集的子采样与稀疏促进方法相结合,为显著提高成像速度开辟了道路,这对许多重要的临床应用至关重要。特别是,最近已经表明,全变差(TV)正则化有效地减少欠采样伪影。该方法的缺点是重建时间长,这使得它不可能在日常临床实践中使用,特别是如果必须重复解决 TV 优化问题以选择适当的正则化参数。
本工作的目的是表明,对于磁共振血管造影(MRA)的情况,可以将 TV 滤波作为后处理步骤来执行,与将 TV 惩罚集成到图像重建过程中的常见方法相反。通过这种方法,可以使用具有图像空间中数据保真度项的 TV 算法,这些算法可以在图形处理单元(GPU)上非常有效地实现。特殊的径向采样轨迹和 TV 最小化问题的全 3D 公式的组合对于消除伪影过程的有效性至关重要。
GPU-TV 的计算时间表明,即使对于大容量数据集,也可以实现交互性消除欠采样伪影,特别是允许交互式确定正则化参数。来自体模测量和体内血管造影数据集的结果表明,3D TV 与所提出的采样轨迹相结合,可显著提高图像质量。然而,虽然在这项工作中,3D TV 与所提出的采样轨迹结合可以非常有效地去除血管造影数据集的伪影,但不能期望所提出的 TV 后处理方法将适用于任意类型的扫描。