Q Bio Inc., San Carlos, CA, USA.
Magn Reson Med. 2021 Sep;86(3):1573-1585. doi: 10.1002/mrm.28718. Epub 2021 Mar 18.
To develop a general framework for parallel imaging (PI) with the use of Maxwell regularization for the estimation of the sensitivity maps (SMs) and constrained optimization for the parameter-free image reconstruction.
Certain characteristics of both the SMs and the images are routinely used to regularize the otherwise ill-posed optimization-based joint reconstruction from highly accelerated PI data. In this paper, we rely on a fundamental property of SMs-they are solutions of Maxwell equations-we construct the subspace of all possible SM distributions supported in a given field-of-view, and we promote solutions of SMs that belong in this subspace. In addition, we propose a constrained optimization scheme for the image reconstruction, as a second step, once an accurate estimation of the SMs is available. The resulting method, dubbed Maxwell parallel imaging (MPI), works for both 2D and 3D, with Cartesian and radial trajectories, and minimal calibration signals.
The effectiveness of MPI is illustrated for various undersampling schemes, including radial, variable-density Poisson-disc, and Cartesian, and is compared against the state-of-the-art PI methods. Finally, we include some numerical experiments that demonstrate the memory footprint reduction of the constructed Maxwell basis with the help of tensor decomposition, thus allowing the use of MPI for full 3D image reconstructions.
The MPI framework provides a physics-inspired optimization method for the accurate and efficient image reconstruction from arbitrary accelerated scans.
开发一种通用的并行成像(PI)框架,使用麦克斯韦正则化来估计灵敏度图(SMs),并进行无参数的约束优化图像重建。
通常利用 SMs 和图像的某些特征来正则化基于优化的联合重建,以从高加速的 PI 数据中进行重建。在本文中,我们依赖于 SMs 的一个基本特性——它们是麦克斯韦方程的解——我们构建了在给定视场中支持的所有可能 SM 分布的子空间,并促进属于该子空间的 SM 解。此外,我们还提出了一种图像重建的约束优化方案,作为第二步,一旦 SMs 的精确估计可用。由此产生的方法,称为麦克斯韦并行成像(MPI),适用于二维和三维,包括笛卡尔和径向轨迹,以及最小校准信号。
MPI 的有效性在各种欠采样方案中得到了验证,包括径向、变密度泊松盘和笛卡尔,并与最先进的 PI 方法进行了比较。最后,我们包括一些数值实验,展示了张量分解有助于减少构建的麦克斯韦基的内存占用,从而允许使用 MPI 进行全 3D 图像重建。
MPI 框架为从任意加速扫描中进行准确高效的图像重建提供了一种物理启发的优化方法。