Huang Jinhong, Li Xinzhen, Zhou Genjiao, Hu Wenyu
School of Mathematics and Computer Science, Gannan Normal University, China; Key Laboratory of Data Science and Artificial Intelligence of Jiangxi Education Institutes, Gannan Normal University, China.
School of Mathematics and Computer Science, Gannan Normal University, China.
Magn Reson Imaging. 2025 Sep;121:110404. doi: 10.1016/j.mri.2025.110404. Epub 2025 May 3.
In recent years, significant advancements have been achieved in applying deep learning (DL) to magnetic resonance imaging (MRI) reconstruction, which traditionally relies on fully sampled data. However, real-world clinical scenarios often demonstrate that the fully sampled data can be challenging or impossible to obtain due to physiological constraints, such as organ motion, and physical constraints, such as signal decay. In this paper, we introduce a self-supervised DL approach, termed randomly self-supervised learning via data undersampling (abbreviated as RSSDU), which is proficient in efficiently and accurately reconstructing images from undersampled MRI data without requiring fully sampled datasets as references. The proposed method involves resampling the acquired k-space data twice to generate two subsets using the same undersampling pattern as the original acquisitions, albeit with different acceleration factors. Subsequently, a network is trained to learn to map from one of the sets to the other in a supervised manner. Extensive experiments demonstrate that the RSSDU method outperforms several well-known self-supervised methods, including SSDU and K-band, regarding peak signal-to-noise ratio and structural similarity index measurement.
近年来,将深度学习(DL)应用于磁共振成像(MRI)重建取得了重大进展,传统的MRI重建依赖于全采样数据。然而,实际临床场景常常表明,由于生理限制(如器官运动)和物理限制(如信号衰减),全采样数据可能具有挑战性或无法获取。在本文中,我们介绍了一种自监督深度学习方法,称为通过数据欠采样的随机自监督学习(简称为RSSDU),它能够在不需要全采样数据集作为参考的情况下,高效且准确地从欠采样的MRI数据中重建图像。所提出的方法包括对采集到的k空间数据进行两次重采样,使用与原始采集相同的欠采样模式生成两个子集,尽管加速因子不同。随后,训练一个网络以监督的方式学习从其中一个集合映射到另一个集合。大量实验表明,在峰值信噪比和结构相似性指数测量方面,RSSDU方法优于几种著名的自监督方法,包括SSDU和K波段。