Sun Changyu, Thornburgh Cody, Wang Yu, Kumar Senthil, Altes Talissa A
Department of Chemical and Biomedical Engineering, University of Missouri, Columbia, Missouri, USA.
Department of Radiology, University of Missouri, Columbia, Missouri, USA.
Magn Reson Med. 2025 Jul;94(1):362-372. doi: 10.1002/mrm.30422. Epub 2025 Jan 17.
The aim of the work is to develop a cascaded diffusion-based super-resolution model for low-resolution (LR) MR tagging acquisitions, which is integrated with parallel imaging to achieve highly accelerated MR tagging while enhancing the tag grid quality of low-resolution images.
We introduced TagGen, a diffusion-based conditional generative model that uses low-resolution MR tagging images as guidance to generate corresponding high-resolution tagging images. The model was developed on 50 patients with long-axis-view, high-resolution tagging acquisitions. During training, we retrospectively synthesized LR tagging images using an undersampling rate (R) of 3.3 with truncated outer phase-encoding lines. During inference, we evaluated the performance of TagGen and compared it with REGAIN, a generative adversarial network-based super-resolution model that was previously applied to MR tagging. In addition, we prospectively acquired data from 6 subjects with three heartbeats per slice using 10-fold acceleration achieved by combining low-resolution R = 3.3 with GRAPPA-3 (generalized autocalibrating partially parallel acquisitions 3).
For synthetic data (R = 3.3), TagGen outperformed REGAIN in terms of normalized root mean square error, peak signal-to-noise ratio, and structural similarity index (p < 0.05 for all). For prospectively 10-fold accelerated data, TagGen provided better tag grid quality, signal-to-noise ratio, and overall image quality than REGAIN, as scored by two (blinded) radiologists (p < 0.05 for all).
We developed a diffusion-based generative super-resolution model for MR tagging images and demonstrated its potential to integrate with parallel imaging to reconstruct highly accelerated cine MR tagging images acquired in three heartbeats with enhanced tag grid quality.
本研究旨在开发一种基于级联扩散的超分辨率模型,用于低分辨率(LR)磁共振标记采集,该模型与并行成像相结合,以实现高加速磁共振标记,同时提高低分辨率图像的标记网格质量。
我们引入了TagGen,这是一种基于扩散的条件生成模型,它使用低分辨率磁共振标记图像作为指导来生成相应的高分辨率标记图像。该模型是在50例具有长轴视图、高分辨率标记采集的患者身上开发的。在训练过程中,我们使用截断的外相位编码线,以3.3的欠采样率(R)回顾性合成LR标记图像。在推理过程中,我们评估了TagGen的性能,并将其与REGAIN进行了比较,REGAIN是一种基于生成对抗网络的超分辨率模型,先前已应用于磁共振标记。此外,我们前瞻性地从6名受试者获取数据,每片采集三个心动周期,通过将低分辨率R = 3.3与GRAPPA-3(广义自校准部分并行采集3)相结合实现10倍加速。
对于合成数据(R = 3.3),TagGen在归一化均方根误差、峰值信噪比和结构相似性指数方面优于REGAIN(所有p < 0.05)。对于前瞻性10倍加速数据,由两名(盲法)放射科医生评分,TagGen在标记网格质量、信噪比和整体图像质量方面均优于REGAIN(所有p < 0.05)。
我们开发了一种用于磁共振标记图像的基于扩散的生成超分辨率模型,并证明了其与并行成像相结合的潜力,可重建在三个心动周期内采集的高加速电影磁共振标记图像,同时提高标记网格质量。