Suzuki Yuriko, Koktzoglou Ioannis, Li Ziyu, Jezzard Peter, Okell Thomas
Wellcome Centre for Integrative Neuroimaging, FMRIB, Nuffield Department of Clinical Neurosciences, University of Oxford, Oxford, UK.
Department of Radiology, NorthShore University HealthSystem, Evanston, Illinois, USA.
Magn Reson Med. 2024 Dec;92(6):2491-2505. doi: 10.1002/mrm.30245. Epub 2024 Aug 18.
To develop a novel framework to improve the visualization of distal arteries in arterial spin labeling (ASL) dynamic MRA.
The attenuation of ASL blood signal due to the repetitive application of excitation RF pulses was minimized by splitting the acquisition volume into multiple thin 2D (M2D) slices, thereby reducing the exposure of the arterial blood magnetization to RF pulses while it flows within the brain. To improve the degraded vessel visualization in the slice direction due to the limited minimum achievable 2D slice thickness, a super-resolution (SR) convolutional neural network (CNN) was trained by using 3D time-of-flight (TOF)-MRA images from a large public dataset. And then, we applied domain transfer from 3D TOF-MRA to M2D ASL-MRA, while avoiding acquiring a large number of ASL-MRA data required for CNN training.
Compared to the conventional 3D ASL-MRA, far more distal arteries were visualized with higher signal intensity by using M2D ASL-MRA. In general, however, the vessel visualization with a conventional interpolation was prone to be blurry and unclear due to the limited spatial resolution in the slice direction, particularly in small vessels. Application of CNN-based SR transferred from 3D TOF-MRA to M2D ASL-MRA successfully addressed such a limitation and achieved clearer visualization of small vessels than conventional interpolation.
This study demonstrated that the proposed framework provides improved visualization of distal arteries in later dynamic phases, which will particularly benefit the application of this approach in patients with cerebrovascular disease who have slow blood flow.
开发一种新型框架,以改善动脉自旋标记(ASL)动态磁共振血管造影(MRA)中远端动脉的可视化。
通过将采集体积分割成多个薄的二维(M2D)切片,使由于重复施加激发射频脉冲而导致的ASL血液信号衰减最小化,从而减少动脉血磁化在脑内流动时暴露于射频脉冲的时间。由于可实现的最小二维切片厚度有限,切片方向上血管可视化会退化,因此使用来自大型公共数据集的三维时间飞跃(TOF)-MRA图像训练了一个超分辨率(SR)卷积神经网络(CNN)。然后,我们将从三维TOF-MRA到M2D ASL-MRA进行域转移,同时避免获取CNN训练所需的大量ASL-MRA数据。
与传统的三维ASL-MRA相比,使用M2D ASL-MRA可以看到更多远端动脉,且信号强度更高。然而,一般来说,由于切片方向上空间分辨率有限,传统插值法进行的血管可视化容易模糊不清,尤其是在小血管中。将基于CNN的超分辨率从三维TOF-MRA转移到M2D ASL-MRA成功解决了这一限制,并且比传统插值法更清晰地显示了小血管。
本研究表明,所提出的框架在后期动态阶段能改善远端动脉的可视化,这将特别有利于该方法在血流缓慢的脑血管疾病患者中的应用。