Literature DB >> 31889314

Reconstruction of multicontrast MR images through deep learning.

Won-Joon Do1, Sunghun Seo1, Yoseob Han1, Jong Chul Ye1, Seung Hong Choi2, Sung-Hong Park1.   

Abstract

PURPOSE: Magnetic resonance (MR) imaging with a long scan time can lead to degraded images due to patient motion, patient discomfort, and increased costs. For these reasons, the role of rapid MR imaging is important. In this study, we propose the joint reconstruction of multicontrast brain MR images from down-sampled data to accelerate the data acquisition process using a novel deep-learning network.
METHODS: Twenty-one healthy volunteers (female/male = 7/14, age = 26 ± 4 yr, range 22-35 yr) and 16 postoperative patients (female/male = 7/9, age = 49 ± 9 yr, range 37-62 yr) were scanned on a 3T whole-body scanner for prospective and retrospective studies, respectively, using both T1-weighted spin-echo (SE) and T2-weighted fast spin-echo (FSE) sequences. We proposed a network which we term "X-net" to reconstruct both T1- and T2-weighted images from down-sampled images as well as a network termed "Y-net" which reconstructs T2-weighted images from highly down-sampled T2-weighted images and fully sampled T1-weighted images. Both X-net and Y-net are composed of two concatenated subnetworks. We investigate optimal sampling patterns, the optimal patch size for augmentation, and the optimal acceleration factors for network training. An additional Y-net combined with a generative adversarial network (GAN) was also implemented and tested to investigate the effects of the GAN on the Y-net performance. Single- and joint-reconstruction parallel-imaging and compressed-sensing algorithms along with a conventional U-net were also tested and compared with the proposed networks. For this comparison, the structural similarity (SSIM), normalized mean square error (NMSE), and Fréchet inception distance (FID) were calculated between the outputs of the networks and fully sampled images. The statistical significance of the performance was evaluated by assessing the interclass correlation and in paired t-tests.
RESULTS: The outputs from the two concatenated subnetworks were closer to the fully sampled images compared to those from one subnetwork, with this result showing statistical significance. Uniform down-sampling led to a statically significant improvement in the image quality compared to random or central down-sampling patterns. In addition, the proposed networks provided higher SSIM and NMSE values than U-net, compressed-sensing, and parallel-imaging algorithms, all at statistically significant levels. The GAN-based Y-net showed a better FID and more realistic images compared to a non-GAN-based Y-net. The performance capabilities of the networks were similar between normal subjects and patients.
CONCLUSIONS: The proposed X-net and Y-net effectively reconstructed full images from down-sampled images, outperforming the conventional parallel-imaging, compressed-sensing and U-net methods and providing more realistic images in combination with a GAN. The developed networks potentially enable us to accelerate multicontrast anatomical MR imaging in routine clinical studies including T1-and T2-weighted imaging.
© 2019 American Association of Physicists in Medicine.

Entities:  

Keywords:  deep learning; multicontrast MRI; x-net; y-net

Year:  2020        PMID: 31889314     DOI: 10.1002/mp.14006

Source DB:  PubMed          Journal:  Med Phys        ISSN: 0094-2405            Impact factor:   4.071


  6 in total

1.  Clinical Assessment of Deep Learning-based Super-Resolution for 3D Volumetric Brain MRI.

Authors:  Jeffrey D Rudie; Tyler Gleason; Matthew J Barkovich; David M Wilson; Ajit Shankaranarayanan; Tao Zhang; Long Wang; Enhao Gong; Greg Zaharchuk; Javier E Villanueva-Meyer
Journal:  Radiol Artif Intell       Date:  2022-01-12

Review 2.  The role of generative adversarial networks in brain MRI: a scoping review.

Authors:  Hazrat Ali; Md Rafiul Biswas; Farida Mohsen; Uzair Shah; Asma Alamgir; Osama Mousa; Zubair Shah
Journal:  Insights Imaging       Date:  2022-06-04

3.  Multimodal MRI synthesis using unified generative adversarial networks.

Authors:  Xianjin Dai; Yang Lei; Yabo Fu; Walter J Curran; Tian Liu; Hui Mao; Xiaofeng Yang
Journal:  Med Phys       Date:  2020-10-27       Impact factor: 4.071

4.  Improving Amide Proton Transfer-Weighted MRI Reconstruction Using T2-Weighted Images.

Authors:  Puyang Wang; Pengfei Guo; Jianhua Lu; Jinyuan Zhou; Shanshan Jiang; Vishal M Patel
Journal:  Med Image Comput Comput Assist Interv       Date:  2020-09-29

5.  Enhancing magnetic resonance imaging-driven Alzheimer's disease classification performance using generative adversarial learning.

Authors:  Xiao Zhou; Shangran Qiu; Prajakta S Joshi; Chonghua Xue; Ronald J Killiany; Asim Z Mian; Sang P Chin; Rhoda Au; Vijaya B Kolachalama
Journal:  Alzheimers Res Ther       Date:  2021-03-14       Impact factor: 8.823

6.  QCBCT-NET for direct measurement of bone mineral density from quantitative cone-beam CT: a human skull phantom study.

Authors:  Tae-Hoon Yong; Su Yang; Sang-Jeong Lee; Chansoo Park; Jo-Eun Kim; Kyung-Hoe Huh; Sam-Sun Lee; Min-Suk Heo; Won-Jin Yi
Journal:  Sci Rep       Date:  2021-07-23       Impact factor: 4.379

  6 in total

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