Jaejin Cho, Yohan Jun, Xiaoqing Wang, Caique Kobayashi, B. Bilgiç
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引用次数: 1
摘要
扩散MRI通常使用回波平面成像(EPI)进行,因为它的采集时间快。然而,扩散加权图像的分辨率经常受到与磁场不均匀性相关的伪影和由T2-和T2*-弛豫效应引起的模糊的限制。为了解决这些限制,经常采用多镜头EPI (msEPI)结合并行成像技术。然而,由于多次拍摄之间的相位变化,重建msEPI可能具有挑战性。在本研究中,我们引入了一种新的msEPI重建方法,称为zero-MIRID (zero-shot self-supervised learning of Multi-shot Image reconstruction for Improved Diffusion MRI)。该方法结合基于深度学习的图像正则化技术,对msEPI数据进行联合重构。该网络在k空间和图像空间中结合了CNN去噪器,同时利用虚拟线圈增强图像重建条件。通过采用自监督学习技术并将采样数据分为三组,与最先进的并行成像方法相比,所提出的方法取得了更好的结果,这在体内实验中得到了证明。
Improved Multi-Shot Diffusion-Weighted MRI with Zero-Shot Self-Supervised Learning Reconstruction
Diffusion MRI is commonly performed using echo-planar imaging (EPI) due to its rapid acquisition time. However, the resolution of diffusion-weighted images is often limited by magnetic field inhomogeneity-related artifacts and blurring induced by T2- and T2*-relaxation effects. To address these limitations, multi-shot EPI (msEPI) combined with parallel imaging techniques is frequently employed. Nevertheless, reconstructing msEPI can be challenging due to phase variation between multiple shots. In this study, we introduce a novel msEPI reconstruction approach called zero-MIRID (zero-shot self-supervised learning of Multi-shot Image Reconstruction for Improved Diffusion MRI). This method jointly reconstructs msEPI data by incorporating deep learning-based image regularization techniques. The network incorporates CNN denoisers in both k- and image-spaces, while leveraging virtual coils to enhance image reconstruction conditioning. By employing a self-supervised learning technique and dividing sampled data into three groups, the proposed approach achieves superior results compared to the state-of-the-art parallel imaging method, as demonstrated in an in-vivo experiment.