Arshad Madiha, Najeeb Faisal, Khawaja Rameesha, Ammar Amna, Amjad Kashif, Omer Hammad
Medical Image Processing Research Group (MIPRG), Dept. of Elect. & Comp. Engineering, COMSATS University Islamabad, Islamabad, Pakistan.
Dept. of Computer Engineering, National University of Technology, Islamabad, Pakistan.
PLoS One. 2025 Jan 10;20(1):e0313226. doi: 10.1371/journal.pone.0313226. eCollection 2025.
Recovering diagnostic-quality cardiac MR images from highly under-sampled data is a current research focus, particularly in addressing cardiac and respiratory motion. Techniques such as Compressed Sensing (CS) and Parallel Imaging (pMRI) have been proposed to accelerate MRI data acquisition and improve image quality. However, these methods have limitations in high spatial-resolution applications, often resulting in blurring or residual artifacts. Recently, deep learning-based techniques have gained attention for their accuracy and efficiency in image reconstruction. Deep learning-based MR image reconstruction methods are divided into two categories: (a) single domain methods (image domain learning and k-space domain learning) and (b) cross/dual domain methods. Single domain methods, which typically use U-Net in either the image or k-space domain, fail to fully exploit the correlation between these domains. This paper introduces a dual-domain deep learning approach that incorporates multi-coil data consistency (MCDC) layers for reconstructing cardiac MR images from 1-D Variable Density (VD) random under-sampled data. The proposed hybrid dual-domain deep learning models integrate data from both the domains to improve image quality, reduce artifacts, and enhance overall robustness and accuracy of the reconstruction process. Experimental results demonstrate that the proposed methods outperform than conventional deep learning and CS techniques, as evidenced by higher Structural Similarity Index (SSIM), lower Root Mean Square Error (RMSE), and higher Peak Signal-to-Noise Ratio (PSNR).
从高度欠采样的数据中恢复具有诊断质量的心脏磁共振图像是当前的研究重点,尤其是在解决心脏和呼吸运动方面。诸如压缩感知(CS)和平行成像(pMRI)等技术已被提出用于加速磁共振成像数据采集并提高图像质量。然而,这些方法在高空间分辨率应用中存在局限性,常常导致图像模糊或残留伪影。最近,基于深度学习的技术因其在图像重建中的准确性和效率而受到关注。基于深度学习的磁共振图像重建方法分为两类:(a)单域方法(图像域学习和k空间域学习)和(b)交叉/双域方法。单域方法通常在图像或k空间域中使用U-Net,未能充分利用这些域之间的相关性。本文介绍了一种双域深度学习方法,该方法结合了多线圈数据一致性(MCDC)层,用于从一维可变密度(VD)随机欠采样数据中重建心脏磁共振图像。所提出的混合双域深度学习模型整合了来自两个域的数据,以提高图像质量、减少伪影,并增强重建过程的整体鲁棒性和准确性。实验结果表明,所提出的方法优于传统的深度学习和CS技术,结构相似性指数(SSIM)更高、均方根误差(RMSE)更低以及峰值信噪比(PSNR)更高证明了这一点。