Ouyang Binyu, Yang Qizhi, Wang Xiaoyin, He Hongjian, Ma Lingceng, Yang Qinqin, Zhou Zihan, Cai Shuhui, Chen Zhong, Wu Zhigang, Zhong Jianhui, Cai Congbo
Department of Electronic Science, Fujian Provincial Key Laboratory of Plasma and Magnetic Resonance, Xiamen University, Xiamen, Fujian, 361005, China.
Center for Brain Imaging Science and Technology, College of Biomedical Engineering and Instrumental Science, Zhejiang University, Hangzhou, Zhejiang, 310058, China.
Med Phys. 2022 Nov;49(11):7095-7107. doi: 10.1002/mp.15820. Epub 2022 Jul 10.
Quantitative magnetic resonance imaging provides robust biomarkers in clinics. Nevertheless, the lengthy scan time reduces imaging throughput and increases the susceptibility of imaging results to motion. In this context, a single-shot T mapping method based on multiple overlapping-echo detachment (MOLED) planar imaging was presented, but the relatively small echo time range limits its accuracy, especially in tissues with large T .
In this work we proposed a novel single-shot method, Multi-Echo-Train Multiple OverLapping-Echo Detachment (METMOLED) planar imaging, to accommodate a large range of T quantification without additional measurements to rectify signal degeneration arisen from refocusing pulse imperfection.
Multiple echo-train techniques were integrated into the MOLED sequence to capture larger TE information. Maps of T , B , and spin density were reconstructed synchronously from acquired METMOLED data via multitask deep learning. A typical U-Net was trained with 3000/600 synthetic data with geometric/brain patterns to learn the mapping relationship between METMOLED signals and quantitative maps. The refocusing pulse imperfection was settled through the inherent information of METMOLED data and auxiliary tasks.
Experimental results on the digital brain (structural similarity (SSIM) index = 0.975/0.991/0.988 for MOLED/METMOLED-2/METMOLED-3, hyphenated number denotes the number of echo-trains), physical phantom (the slope of linear fitting with reference T map = 1.047/1.017/1.006 for MOLED/METMOLED-2/METMOLED-3), and human brain (Pearson's correlation coefficient (PCC) = 0.9581/0.9760/0.9900 for MOLED/METMOLED-2/METMOLED-3) demonstrated that the METMOLED improved the quantitative accuracy and the tissue details in contrast to the MOLED. These improvements were more pronounced in tissues with large T and in application scenarios with high temporal resolution (PCC = 0.8692/0.9465/0.9743 for MOLED/METMOLED-2/METMOLED-3). Moreover, the METMOLED could rectify the signal deviations induced by the non-ideal slice profiles of refocusing pulses without additional measurements. A preliminary measurement also demonstrated that the METMOLED is highly repeatable (mean coefficient of variation (CV) = 1.65%).
METMOLED breaks the restriction of echo-train length to TE and implements unbiased T estimates in an extensive range. Furthermore, it corrects the effect of refocusing pulse inaccuracy without additional measurements or signal post-processing, thus retaining its single-shot characteristic. This technique would be beneficial for accurate T quantification.
定量磁共振成像在临床中提供了强大的生物标志物。然而,冗长的扫描时间降低了成像通量,并增加了成像结果对运动的敏感性。在此背景下,提出了一种基于多重叠回波分离(MOLED)平面成像的单次T映射方法,但相对较小的回波时间范围限制了其准确性,尤其是在具有大T值的组织中。
在这项工作中,我们提出了一种新颖的单次方法,即多回波链多重叠回波分离(METMOLED)平面成像,以适应大范围的T定量,而无需额外测量来校正由于重聚焦脉冲不完善而产生的信号退化。
将多个回波链技术集成到MOLED序列中,以捕获更大的TE信息。通过多任务深度学习从采集的METMOLED数据中同步重建T、B和自旋密度图。使用具有几何/脑模式的3000/600合成数据训练典型的U-Net,以学习METMOLED信号与定量图之间的映射关系。通过METMOLED数据的固有信息和辅助任务解决重聚焦脉冲不完善的问题。
在数字脑(MOLED/METMOLED-2/METMOLED-3的结构相似性(SSIM)指数分别为0.975/0.991/0.988,连字符后的数字表示回波链的数量)、物理体模(与参考T图的线性拟合斜率对于MOLED/METMOLED-2/METMOLED-3分别为1.047/1.017/1.006)和人脑(MOLED/METMOLED-2/METMOLED-3的皮尔逊相关系数(PCC)分别为0.9581/0.9760/0.9900)上的实验结果表明,与MOLED相比,METMOLED提高了定量准确性和组织细节。这些改进在具有大T值的组织和具有高时间分辨率的应用场景中更为明显(MOLED/METMOLED-2/METMOLED-3的PCC分别为0.8692/0.9465/0.9743)。此外,METMOLED可以校正由重聚焦脉冲的非理想切片轮廓引起的信号偏差,而无需额外测量。初步测量还表明,METMOLED具有高度可重复性(平均变异系数(CV)=1.65%)。
METMOLED打破了回波链长度对TE的限制,并在广泛范围内实现了无偏T估计。此外,它无需额外测量或信号后处理即可校正重聚焦脉冲不准确的影响,从而保留了其单次特性。该技术将有利于准确的T定量。