Wang Bin, Lian Yusheng, Xiong Xingchuang, Zhou Han, Liu Zilong, Zhou Xiaohao
National Institute of Metrology, Beijing 100029, China; Key Laboratory of Metrology Digitalization and Digital Metrology for State Market Regulation, Beijing 100029, China; School of Printing and Packaging Engineering, Beijing Institute of Graphic Communication, Beijing 102600, China.
School of Printing and Packaging Engineering, Beijing Institute of Graphic Communication, Beijing 102600, China.
Magn Reson Imaging. 2024 Apr;107:69-79. doi: 10.1016/j.mri.2024.01.007. Epub 2024 Jan 17.
Current challenges in Magnetic Resonance Imaging (MRI) include long acquisition times and motion artifacts. To address these issues, under-sampled k-space acquisition has gained popularity as a fast imaging method. However, recovering fine details from under-sampled data remains challenging. In this study, we introduce a pioneering deep learning approach, namely DCT-Net, designed for dual-domain MRI reconstruction. DCT-Net seamlessly integrates information from the image domain (IRM) and frequency domain (FRM), utilizing a novel Cross Attention Block (CAB) and Fusion Attention Block (FAB). These innovative blocks enable precise feature extraction and adaptive fusion across both domains, resulting in a significant enhancement of the reconstructed image quality. The adaptive interaction and fusion mechanisms of CAB and FAB contribute to the method's effectiveness in capturing distinctive features and optimizing image reconstruction. Comprehensive ablation studies have been conducted to assess the contributions of these modules to reconstruction quality and accuracy. Experimental results on the FastMRI (2023) and Calgary-Campinas datasets (2021) demonstrate the superiority of our MRI reconstruction framework over other typical methods (most are illustrated in 2023 or 2022) in both qualitative and quantitative evaluations. This holds for knee and brain datasets under 4× and 8× accelerated imaging scenarios.
磁共振成像(MRI)当前面临的挑战包括采集时间长和运动伪影。为了解决这些问题,欠采样k空间采集作为一种快速成像方法已受到广泛关注。然而,从欠采样数据中恢复精细细节仍然具有挑战性。在本研究中,我们引入了一种开创性的深度学习方法,即DCT-Net,用于双域MRI重建。DCT-Net通过一种新颖的交叉注意力模块(CAB)和融合注意力模块(FAB),无缝集成了图像域(IRM)和频率域(FRM)的信息。这些创新模块能够在两个域之间进行精确的特征提取和自适应融合,从而显著提高重建图像的质量。CAB和FAB的自适应交互与融合机制有助于该方法有效捕捉独特特征并优化图像重建。我们进行了全面的消融研究,以评估这些模块对重建质量和准确性的贡献。在FastMRI(2023)和卡尔加里-坎皮纳斯数据集(2021)上的实验结果表明,在定性和定量评估中,我们的MRI重建框架均优于其他典型方法(大多数在2023年或2022年有所阐述)。这在4倍和8倍加速成像场景下的膝盖和脑部数据集上均成立。