Lyu Jingyuan, Chang Yuchou, Ying Leslie
Department of Biomedical Engineering, Department of Electrical Engineering, The State University of New York at Buffalo, Buffalo, New York, USA.
Neuroimaging Research, Barrow Neurological Institute, Phoenix, Arizona, USA.
Magn Reson Med. 2015 Jul;74(1):71-80. doi: 10.1002/mrm.25373. Epub 2014 Jul 17.
To address the issue of computational complexity in generalized autocalibrating partially parallel acquisition (GRAPPA) when several calibration data are used.
GRAPPA requires fully sampled data for accurate calibration with increasing data needed for higher reduction factors to maintain accuracy, which leads to longer computational time, especially in a three-dimensional (3D) setting and with higher channel count coils. Channel reduction methods have been developed to address this issue when massive array coils are used. In this study, the complexity problem was addressed from a different prospective. Instead of compressing to fewer channels, we propose the use of random projections to reduce the dimension of the linear equation in the calibration phase. The equivalence before and after the reduction is supported by the Johnson-Lindenstrauss lemma. The proposed random projection method can be integrated with channel reduction sequentially for even higher computational efficiency.
Experimental results show that GRAPPA with random projection can achieve comparable image quality with much less computational time when compared with conventional GRAPPA without random projection.
The proposed random projection method is able to reduce the computational time of GRAPPA, especially in a 3D setting, without compromising the image quality, or to improve the reconstruction quality by allowing more data for calibration when the computational time is a limiting factor. Magn Reson Med 74:71-80, 2015. © 2014 Wiley Periodicals, Inc.
解决在使用多个校准数据时广义自校准部分并行采集(GRAPPA)中的计算复杂性问题。
GRAPPA需要全采样数据进行精确校准,随着加速因子的提高,为保持精度所需的数据量增加,这导致计算时间延长,特别是在三维(3D)情况下以及使用通道数较多的线圈时。当使用大规模阵列线圈时,已经开发了通道缩减方法来解决这个问题。在本研究中,从不同的角度解决了复杂性问题。我们不是将通道压缩到更少,而是建议在校准阶段使用随机投影来降低线性方程的维度。约简前后的等价性由约翰逊 - 林登施特劳斯引理支持。所提出的随机投影方法可以与通道缩减顺序集成,以实现更高的计算效率。
实验结果表明,与没有随机投影的传统GRAPPA相比,具有随机投影的GRAPPA能够以少得多的计算时间实现相当的图像质量。
所提出的随机投影方法能够减少GRAPPA的计算时间,特别是在3D情况下,而不影响图像质量,或者在计算时间是限制因素时,通过允许更多数据进行校准来提高重建质量。《磁共振医学》74:71 - 80, 2015。©2014威利期刊公司。