Translational Medicine Branch, National Institutes of Health/National Heart, Lung and Blood Institute (NHLBI), Department of Health and Human Services (DHHS), Bethesda, Maryland 20892-1061, USA.
Magn Reson Med. 2010 Jul;64(1):306-12. doi: 10.1002/mrm.22351.
A real-time implementation of self-calibrating Generalized Autocalibrating Partially Parallel Acquisitions (GRAPPA) operator gridding for radial acquisitions is presented. Self-calibrating GRAPPA operator gridding is a parallel-imaging-based, parameter-free gridding algorithm, where coil sensitivity profiles are used to calculate gridding weights. Self-calibrating GRAPPA operator gridding's weight-set calculation and image reconstruction steps are decoupled into two distinct processes, implemented in C++ and parallelized. This decoupling allows the weights to be updated adaptively in the background while image reconstruction threads use the most recent gridding weights to grid and reconstruct images. All possible combinations of two-dimensional gridding weights G(x)(m)G(y)(n) are evaluated for m,n = {-0.5, -0.4, ..., 0, 0.1, ..., 0.5} and stored in a look-up table. Consequently, the per-sample two-dimensional weights calculation during gridding is eliminated from the reconstruction process and replaced by a simple look-up table access. In practice, up to 34x faster reconstruction than conventional (parallelized) self-calibrating GRAPPA operator gridding is achieved. On a 32-coil dataset of size 128 x 64, reconstruction performance is 14.5 frames per second (fps), while the data acquisition is 6.6 fps.
本文提出了一种用于径向采集的自校准广义自动校准部分并行采集(GRAPPA)算子网格化的实时实现。自校准 GRAPPA 算子网格化是一种基于并行成像的、无参数的网格化算法,其中使用线圈灵敏度谱来计算网格化权重。自校准 GRAPPA 算子网格化的权重集计算和图像重建步骤被解耦为两个不同的过程,用 C++实现并并行化。这种解耦允许在后台自适应地更新权重,而图像重建线程则使用最新的网格化权重对图像进行网格化和重建。对于 m,n = {-0.5,-0.4,...,0,0.1,...,0.5},评估了二维网格化权重 G(x)(m)G(y)(n)的所有可能组合,并将其存储在查找表中。因此,在网格化过程中,每个样本的二维权重计算被从重建过程中消除,并被简单的查找表访问所取代。在实践中,与传统的(并行化)自校准 GRAPPA 算子网格化相比,重建速度提高了 34 倍。在一个 32 线圈的大小为 128 x 64 的数据集上,重建性能为每秒 14.5 帧(fps),而数据采集速度为每秒 6.6 帧。