Demirel Omer Burak, Ghanbari Fahime, Morales Manuel Antonio, Pierce Patrick, Johnson Scott, Rodriguez Jennifer, Street Jordan Amy, Nezafat Reza
Department of Medicine, Cardiovascular Division, Beth Israel Deaconess Medical Center and Harvard Medical School, Boston, Massachusetts, USA.
Magn Reson Med. 2025 Mar;93(3):1132-1148. doi: 10.1002/mrm.30337. Epub 2024 Oct 21.
To develop an iterative deep learning (DL) reconstruction with spatio-coil regularization and multichannel k-space data consistency for accelerated cine imaging.
This study proposes a Spatio-Coil Regularized DL (SCR-DL) approach for iterative deep learning reconstruction incorporating multicoil information in data consistency and regularizer. SCR-DL uses shift-invariant convolutional kernels to interpolate missing k-space lines and reconstruct individual coil images, followed by a regularizer that operates simultaneously across spatial and coil dimensions using learned image priors. At 8-fold acceleration, SCR-DL was compared with Generalized Autocalibrating Partially Parallel Acquisition (GRAPPA), sensitivity encoding (SENSE)-based DL and spatio-temporal regularized (STR)-DL reconstruction. In the retrospective undersampled cine, images were quantitatively evaluated using normalized mean square error (NMSE) and structural similarity index measure (SSIM). Additionally, agreement for left-ventricular ejection fraction and left-ventricular mass were assessed using prospectively accelerated cine images at 2-fold and 8-fold accelerations.
The SCR-DL algorithm successfully reconstructed highly accelerated cine images. SCR-DL had significant improvements in NMSE (0.03 ± 0.02) and SSIM (91.4% ± 2.7%) compared with GRAPPA (NMSE: 0.09 ± 0.04, SSIM: 69.9% ± 11.1%; p < 0.001), SENSE-DL (NMSE: 0.07 ± 0.04, SSIM: 86.9% ± 3.2%; p < 0.001), and STR-DL (NMSE: 0.04 ± 0.03, SSIM: 90.0% ± 2.5%; p < 0.001) with retrospective undersampled cine. Despite the 3-fold reduction in scan time, there was no difference between left-ventricular ejection fraction (59.8 ± 4.5 vs. 60.8 ± 4.8, p = 0.46) or left-ventricular mass (73.6 ± 19.4 g vs. 73.2 ± 19.7 g, p = 0.95) between R = 2 and R = 8 prospectively accelerated cine images.
SCR-DL enabled highly accelerated cardiac cine imaging, significantly reducing breath-hold time. Compared with GRAPPA or SENSE-DL, images reconstructed with SCR-DL showed superior NMSE and SSIM.
开发一种具有时空线圈正则化和多通道k空间数据一致性的迭代深度学习(DL)重建方法,用于加速电影成像。
本研究提出一种时空线圈正则化DL(SCR-DL)方法,用于在数据一致性和正则化中纳入多线圈信息的迭代深度学习重建。SCR-DL使用平移不变卷积核来插值缺失的k空间线并重建单个线圈图像,随后是一个正则化器,它使用学习到的图像先验在空间和线圈维度上同时运行。在8倍加速下,将SCR-DL与广义自校准部分并行采集(GRAPPA)、基于灵敏度编码(SENSE)的DL以及时空正则化(STR)-DL重建进行比较。在回顾性欠采样电影成像中,使用归一化均方误差(NMSE)和结构相似性指数测量(SSIM)对图像进行定量评估。此外,使用前瞻性加速2倍和8倍的电影图像评估左心室射血分数和左心室质量的一致性。
SCR-DL算法成功重建了高度加速的电影图像。与GRAPPA(NMSE:0.09±0.04,SSIM:69.9%±11.1%;p<0.001)、SENSE-DL(NMSE:0.07±0.04,SSIM:86.9%±3.2%;p<0.