Literature DB >> 31977603

Deep Learning Approach for Generating MRA Images From 3D Quantitative Synthetic MRI Without Additional Scans.

Shohei Fujita, Akifumi Hagiwara1, Yujiro Otsuka, Masaaki Hori, Naoyuki Takei2, Ken-Pin Hwang3, Ryusuke Irie, Christina Andica1, Koji Kamagata1, Toshiaki Akashi1, Kanako Kunishima Kumamaru1, Michimasa Suzuki1, Akihiko Wada1, Osamu Abe4, Shigeki Aoki1.   

Abstract

OBJECTIVES: Quantitative synthetic magnetic resonance imaging (MRI) enables synthesis of various contrast-weighted images as well as simultaneous quantification of T1 and T2 relaxation times and proton density. However, to date, it has been challenging to generate magnetic resonance angiography (MRA) images with synthetic MRI. The purpose of this study was to develop a deep learning algorithm to generate MRA images based on 3D synthetic MRI raw data.
MATERIALS AND METHODS: Eleven healthy volunteers and 4 patients with intracranial aneurysms were included in this study. All participants underwent a time-of-flight (TOF) MRA sequence and a 3D-QALAS synthetic MRI sequence. The 3D-QALAS sequence acquires 5 raw images, which were used as the input for a deep learning network. The input was converted to its corresponding MRA images by a combination of a single-convolution and a U-net model with a 5-fold cross-validation, which were then compared with a simple linear combination model. Image quality was evaluated by calculating the peak signal-to-noise ratio (PSNR), structural similarity index measurements (SSIMs), and high frequency error norm (HFEN). These calculations were performed for deep learning MRA (DL-MRA) and linear combination MRA (linear-MR), relative to TOF-MRA, and compared with each other using a nonparametric Wilcoxon signed-rank test. Overall image quality and branch visualization, each scored on a 5-point Likert scale, were blindly and independently rated by 2 board-certified radiologists.
RESULTS: Deep learning MRA was successfully obtained in all subjects. The mean PSNR, SSIM, and HFEN of the DL-MRA were significantly higher, higher, and lower, respectively, than those of the linear-MRA (PSNR, 35.3 ± 0.5 vs 34.0 ± 0.5, P < 0.001; SSIM, 0.93 ± 0.02 vs 0.82 ± 0.02, P < 0.001; HFEN, 0.61 ± 0.08 vs 0.86 ± 0.05, P < 0.001). The overall image quality of the DL-MRA was comparable to that of TOF-MRA (4.2 ± 0.7 vs 4.4 ± 0.7, P = 0.99), and both types of images were superior to that of linear-MRA (1.5 ± 0.6, for both P < 0.001). No significant differences were identified between DL-MRA and TOF-MRA in the branch visibility of intracranial arteries, except for ophthalmic artery (1.2 ± 0.5 vs 2.3 ± 1.2, P < 0.001).
CONCLUSIONS: Magnetic resonance angiography generated by deep learning from 3D synthetic MRI data visualized major intracranial arteries as effectively as TOF-MRA, with inherently aligned quantitative maps and multiple contrast-weighted images. Our proposed algorithm may be useful as a screening tool for intracranial aneurysms without requiring additional scanning time.

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Year:  2020        PMID: 31977603     DOI: 10.1097/RLI.0000000000000628

Source DB:  PubMed          Journal:  Invest Radiol        ISSN: 0020-9996            Impact factor:   6.016


  11 in total

1.  Highly accelerated 3D MPRAGE using deep neural network-based reconstruction for brain imaging in children and young adults.

Authors:  Woojin Jung; JeeYoung Kim; Jingyu Ko; Geunu Jeong; Hyun Gi Kim
Journal:  Eur Radiol       Date:  2022-03-22       Impact factor: 7.034

2.  3D Quantitative Synthetic MRI in the Evaluation of Multiple Sclerosis Lesions.

Authors:  S Fujita; K Yokoyama; A Hagiwara; S Kato; C Andica; K Kamagata; N Hattori; O Abe; S Aoki
Journal:  AJNR Am J Neuroradiol       Date:  2021-01-07       Impact factor: 3.825

Review 3.  A review on medical imaging synthesis using deep learning and its clinical applications.

Authors:  Tonghe Wang; Yang Lei; Yabo Fu; Jacob F Wynne; Walter J Curran; Tian Liu; Xiaofeng Yang
Journal:  J Appl Clin Med Phys       Date:  2020-12-11       Impact factor: 2.102

4.  Artificial intelligence in disease diagnosis: a systematic literature review, synthesizing framework and future research agenda.

Authors:  Yogesh Kumar; Apeksha Koul; Ruchi Singla; Muhammad Fazal Ijaz
Journal:  J Ambient Intell Humaniz Comput       Date:  2022-01-13

5.  Generating synthetic contrast enhancement from non-contrast chest computed tomography using a generative adversarial network.

Authors:  Jae Won Choi; Yeon Jin Cho; Ji Young Ha; Seul Bi Lee; Seunghyun Lee; Young Hun Choi; Jung-Eun Cheon; Woo Sun Kim
Journal:  Sci Rep       Date:  2021-10-14       Impact factor: 4.379

6.  fastMRI+, Clinical pathology annotations for knee and brain fully sampled magnetic resonance imaging data.

Authors:  Ruiyang Zhao; Burhaneddin Yaman; Yuxin Zhang; Russell Stewart; Austin Dixon; Florian Knoll; Zhengnan Huang; Yvonne W Lui; Michael S Hansen; Matthew P Lungren
Journal:  Sci Data       Date:  2022-04-05       Impact factor: 8.501

7.  Image Features of Magnetic Resonance Angiography under Deep Learning in Exploring the Effect of Comprehensive Rehabilitation Nursing on the Neurological Function Recovery of Patients with Acute Stroke.

Authors:  Rui Yang; Ying Zhang; Miao Xu; Jing Ma
Journal:  Contrast Media Mol Imaging       Date:  2021-09-10       Impact factor: 3.161

8.  Deep learning-based convolutional neural network for intramodality brain MRI synthesis.

Authors:  Alexander F I Osman; Nissren M Tamam
Journal:  J Appl Clin Med Phys       Date:  2022-01-19       Impact factor: 2.102

Review 9.  Variability and Standardization of Quantitative Imaging: Monoparametric to Multiparametric Quantification, Radiomics, and Artificial Intelligence.

Authors:  Akifumi Hagiwara; Shohei Fujita; Yoshiharu Ohno; Shigeki Aoki
Journal:  Invest Radiol       Date:  2020-09       Impact factor: 10.065

10.  Age-Related Changes in Relaxation Times, Proton Density, Myelin, and Tissue Volumes in Adult Brain Analyzed by 2-Dimensional Quantitative Synthetic Magnetic Resonance Imaging.

Authors:  Akifumi Hagiwara; Kotaro Fujimoto; Koji Kamagata; Syo Murata; Ryusuke Irie; Hideyoshi Kaga; Yuki Someya; Christina Andica; Shohei Fujita; Shimpei Kato; Issei Fukunaga; Akihiko Wada; Masaaki Hori; Yoshifumi Tamura; Ryuzo Kawamori; Hirotaka Watada; Shigeki Aoki
Journal:  Invest Radiol       Date:  2021-03-01       Impact factor: 10.065

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