Qu Peng, Shen Gary X, Wang Chunsheng, Wu Bing, Yuan Jing
Department of Electrical and Electronic Engineering, The University of Hong Kong, Pokfulam, Hong Kong.
J Magn Reson. 2005 May;174(1):60-7. doi: 10.1016/j.jmr.2005.01.015.
The generalized auto-calibrating partially parallel acquisition (GRAPPA) is an auto-calibrating parallel imaging technique which incorporates multiple blocks of data to derive the missing signals. In the original GRAPPA reconstruction algorithm only the data points in phase encoding direction are incorporated to reconstruct missing points in k-space. It has been recognized that this scheme can be extended so that data points in readout direction are also utilized and the points are selected based on a k-space locality criterion. In this study, an automatic subset selection strategy is proposed which can provide a tailored selection of source points for reconstruction. This novel approach extracts a subset of signal points corresponding to the most linearly independent base vectors in the coefficient matrix of fit, effectively preventing incorporating redundant signals which only bring noise into reconstruction with little contribution to the exactness of fit. Also, subset selection in this way has a regularization effect since the vectors corresponding to the smallest singular values are eliminated and consequently the condition of the reconstruction is improved. Phantom and in vivo MRI experiments demonstrate that this subset selection strategy can effectively improve SNR and reduce residual artifacts for GRAPPA reconstruction.
广义自校准部分并行采集(GRAPPA)是一种自校准并行成像技术,它合并多个数据块以导出缺失信号。在原始的GRAPPA重建算法中,仅合并相位编码方向上的数据点以重建k空间中的缺失点。已经认识到,该方案可以扩展,以便也利用读出方向上的数据点,并且基于k空间局部性标准选择这些点。在本研究中,提出了一种自动子集选择策略,该策略可以为重建提供定制的源点选择。这种新颖的方法提取与拟合系数矩阵中最线性独立的基向量相对应的信号点子集,有效地防止合并仅将噪声带入重建且对拟合精度贡献很小的冗余信号。此外,以这种方式进行子集选择具有正则化效果,因为与最小奇异值相对应的向量被消除,从而改善了重建条件。体模和体内MRI实验表明,这种子集选择策略可以有效地提高GRAPPA重建的信噪比并减少残余伪影。