Electrical and Computer Engineering Department, University of Utah, Salt Lake City, UT, United States of America.
Electrical and Computer Engineering Department, University of Utah, Salt Lake City, UT, United States of America.
Magn Reson Imaging. 2020 Feb;66:9-21. doi: 10.1016/j.mri.2019.11.017. Epub 2019 Nov 18.
To develop a kernel optimization method called coil-combined split slice-GRAPPA (CC-SSG) to improve the accuracy of the reconstructed coil-combined images for simultaneous multi-slice (SMS) diffusion weighted imaging (DWI) data.
The CC-SSG method optimizes the tuning parameters in the k-space SSG kernels to achieve an optimal trade-off between the intra-slice artifact and inter-slice leakage after the root-sum-of-squares (rSOS) coil combining of the de-aliased SMS DWI data. A detailed analysis is conducted to evaluate the contributions of the intra-slice artifact and inter-slice leakage to the total reconstruction error after coil combining.
Comparisons of the proposed CC-SSG method with the slice-GRAPPA (SG) and split slice-GRAPPA (SSG) methods are provided using two in-vivo readout-segmented (RS) EPI datasets collected from stroke patients. The CC-SSG method demonstrates improved accuracy of the reconstructed coil-combined images and the estimated diffusion tensor imaging (DTI) maps.
CC-SSG strikes a good balance between the intra-slice artifact and inter-slice leakage for rSOS coil combining, and so can yield better reconstruction performance compared to SG and SSG for rSOS reconstruction. The optimal trade-off between the two artifacts is robust to the contrast of SMS data and the choice of the coil combining method.
开发一种称为线圈组合分裂片-GRAPPA(CC-SSG)的核优化方法,以提高同时多切片(SMS)扩散加权成像(DWI)数据的重建线圈组合图像的准确性。
CC-SSG 方法优化了 k 空间 SSG 核的调谐参数,以在去交错的 SMS DWI 数据的均方根和(rSOS)线圈组合后,在切片内伪影和切片间漏泄之间实现最佳折衷。详细分析了在进行线圈组合后,切片内伪影和切片间漏泄对总重建误差的贡献。
使用来自中风患者的两个体内读出分段(RS)EPI 数据集,对所提出的 CC-SSG 方法与片层-GRAPPA(SG)和分裂片层-GRAPPA(SSG)方法进行了比较。CC-SSG 方法提高了重建线圈组合图像和估计扩散张量成像(DTI)图的准确性。
CC-SSG 在 rSOS 线圈组合中在切片内伪影和切片间漏泄之间取得了良好的平衡,因此与 SG 和 SSG 相比,在 rSOS 重建中可以获得更好的重建性能。两个伪影之间的最佳折衷对 SMS 数据的对比度和线圈组合方法的选择具有鲁棒性。