Accelerating image reconstruction for multi-contrast MRI based on Y-Net3+
Article type: Research Article
Authors: Cai, Xina | Hou, Xuewenb | Sun, Ronga | Chang, Xiaoa | Zhu, Honglina | Jia, Shouqiangc; 1; * | Nie, Shengdonga; 1; *
Affiliations: [a] School of Health Science and Engineering, University of Shanghai for Science and Technology, Shanghai, China | [b] Shanghai Kangda COLORFUL Healthcare Co., Ltd, Shanghai, China | [c] Department of Imaging, Jinan People’s Hospital affiliated to Shandong First Medical University, Shandong, China
Correspondence: [*] Correspondence author: Shengdong Nie, School of Health Science and Engineering, University of Shanghai for Science and Technology, No. 516 Jun-Gong Road, Shanghai, 200093, China. E-mail: nsd4647@163.com and Shouqiang Jia, Department of Imaging, Jinan People’s Hospital affiliated to Shandong First Medical University, Shandong, 271100, China. E-mail: jshqlw@163.com.
Note: [1] Co-Corresponding authors.
Abstract: BACKGROUND:As one of the significant preoperative imaging modalities in medical diagnosis, Magnetic resonance imaging (MRI) takes a long scanning time due to its special imaging principle. OBJECTIVE:We propose an innovative MRI reconstruction strategy and data consistency method based on deep learning to reconstruct high-quality brain MRIs from down-sampled data and accelerate the MR imaging process. METHODS:Sixteen healthy subjects undergoing T1-weighted spin-echo (SE) and T2-weighted fast spin-echo (FSE) sequences by a 1.5T MRI scanner were recruited. A Y-Net3+ network was used to facilitate the high-quality MRI reconstruction through context information. In addition, the existing data consistency fidelity method was improved. The difference between the reconstructed K-space and the original K-space was shorten by the linear regression algorithm. Therefore, the redundant artifacts derived from under-sampling were avoided. The Structural Similarity (SSIM) and Peak Signal to Noise Ratio (PSNR) were applied to quantitatively evaluate image reconstruction performance of different down-sampling patterns. RESULTS:Compared with the classical Y-Net, Y-Net3+ network improved SSIM and PSNR of MRI images from 0.9164±0.0178 and 33.2216±3.2919 to 0.9387±0.0363 and 35.1785±3.3105, respectively, under compressed sensing reconstruction with acceleration factor of 4. The improved network increases signal-to-noise ratio and adds more image texture information in the reconstructed images. Furthermore, in the process of data consistency, linear regression analysis was used to reduce the difference between the reconstructed K-space and the original K-space, so that the SSIM and PSNR were increased to 0.9808±0.0081 and 40.9254±1.1911, respectively. CONCLUSIONS:The improved Y-Net combined with data consistency fidelity method elucidates its potential in reconstructing high-quality T2-weighted images from the down-sampled data by fully exploring the T1-weighted information. With the advantage of avoiding down-sampled artifacts, the improved network exhibits remarkable clinical promise for fast MRI applications.
Keywords: Magnetic resonance imaging, Deep learning, Multi-contrast MRI, Image reconstruction, Data consistency
DOI: 10.3233/XST-230012
Journal: Journal of X-Ray Science and Technology, vol. 31, no. 4, pp. 797-810, 2023