Yang Qinqin, Ma Lingceng, Zhou Zihan, Bao Jianfeng, Yang Qizhi, Huang Haitao, Cai Shuhui, He Hongjian, Chen Zhong, Zhong Jianhui, Cai Congbo
Department of Electronic Science, Xiamen University, Xiamen, Fujian, China.
The Center for Brain Imaging Science and Technology, College of Biomedical Engineering and Instrumental Science, Zhejiang University, Hangzhou, Zhejiang, China.
Magn Reson Med. 2023 Jun;89(6):2157-2170. doi: 10.1002/mrm.29585. Epub 2023 Jan 19.
To develop and evaluate a single-shot quantitative MRI technique called GRE-MOLED (gradient-echo multiple overlapping-echo detachment) for rapid mapping.
In GRE-MOLED, multiple echoes with different TEs are generated and captured in a single shot of the k-space through MOLED encoding and EPI readout. A deep neural network, trained by synthetic data, was employed for end-to-end parametric mapping from overlapping-echo signals. GRE-MOLED uses pure GRE acquisition with a single echo train to deliver maps less than 90 ms per slice. The self-registered B information modulated in image phase was utilized for distortion-corrected parametric mapping. The proposed method was evaluated in phantoms, healthy volunteers, and task-based FMRI experiments.
The quantitative results of GRE-MOLED mapping demonstrated good agreement with those obtained from the multi-echo GRE method (Pearson's correlation coefficient = 0.991 and 0.973 for phantom and in vivo brains, respectively). High intrasubject repeatability (coefficient of variation <1.0%) were also achieved in scan-rescan test. Enabled by deep learning reconstruction, GRE-MOLED showed excellent robustness to geometric distortion, noise, and random subject motion. Compared to the conventional FMRI approach, GRE-MOLED also achieved a higher temporal SNR and BOLD sensitivity in task-based FMRI.
GRE-MOLED is a new real-time technique for quantification with high efficiency and quality, and it has the potential to be a better quantitative BOLD detection method.
开发并评估一种名为GRE-MOLED(梯度回波多重叠回波分离)的单次定量MRI技术,用于快速成像。
在GRE-MOLED中,通过MOLED编码和EPI读出,在k空间的单次采集中生成并捕获具有不同回波时间(TE)的多个回波。利用通过合成数据训练的深度神经网络,对重叠回波信号进行端到端的参数成像。GRE-MOLED采用纯GRE采集和单个回波链,以实现每幅切片小于90毫秒的成像。利用图像相位中调制的自配准B信息进行失真校正的参数成像。在体模、健康志愿者和基于任务的功能磁共振成像(fMRI)实验中对所提出的方法进行了评估。
GRE-MOLED成像的定量结果与多回波GRE方法获得的结果显示出良好的一致性(体模和活体大脑的皮尔逊相关系数分别为0.991和0.973)。在重扫测试中也实现了较高的受试者内重复性(变异系数<1.0%)。得益于深度学习重建,GRE-MOLED对几何失真、噪声和受试者随机运动表现出出色的鲁棒性。与传统的fMRI方法相比,GRE-MOLED在基于任务的fMRI中还实现了更高的时间信噪比和血氧水平依赖(BOLD)敏感性。
GRE-MOLED是一种高效、高质量的新型实时定量技术,有潜力成为一种更好的定量BOLD检测方法。