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Kanghyun Ryu
Kanghyun Ryu
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Reconfigurable heterogeneous integration using stackable chips with embedded artificial intelligence
C Choi, H Kim, JH Kang, MK Song, H Yeon, CS Chang, JM Suh, J Shin, ...
Nature Electronics 5 (6), 386-393, 2022
612022
Deep learning in MR image processing
D Lee, J Lee, J Ko, J Yoon, K Ryu, Y Nam
investigative magnetic resonance imaging 23 (2), 81-99, 2019
472019
Artificial neural network for multi‐echo gradient echo–based myelin water fraction estimation
S Jung, H Lee, K Ryu, JE Song, M Park, WJ Moon, DH Kim
Magnetic resonance in medicine 85 (1), 380-389, 2021
222021
Biomedical image analysis competitions: The state of current participation practice
M Eisenmann, A Reinke, V Weru, MD Tizabi, F Isensee, TJ Adler, ...
arXiv preprint arXiv:2212.08568, 2022
212022
Data‐driven synthetic MRI FLAIR artifact correction via deep neural network
K Ryu, Y Nam, SM Gho, J Jang, HJ Lee, J Cha, HJ Baek, J Park, DH Kim
Journal of Magnetic Resonance Imaging 50 (5), 1413-1423, 2019
212019
Synthesizing T1 weighted MPRAGE image from multi echo GRE images via deep neural network
K Ryu, NY Shin, DH Kim, Y Nam
Magnetic Resonance Imaging 64, 13-20, 2019
182019
Regulation of root patterns in mammalian teeth
H Seo, J Kim, JJ Hwang, HG Jeong, SS Han, W Park, K Ryu, H Seomun, ...
Scientific reports 7 (1), 12714, 2017
172017
Why is the winner the best?
M Eisenmann, A Reinke, V Weru, MD Tizabi, F Isensee, TJ Adler, S Ali, ...
Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern ¡¦, 2023
162023
Stenosis detection from time-of-flight magnetic resonance angiography via deep learning 3d squeeze and excitation residual networks
H Chung, KM Kang, MA Al-Masni, CH Sohn, Y Nam, K Ryu, DH Kim
IEEE Access 8, 43325-43335, 2020
132020
Estimating age-related changes in in vivo cerebral magnetic resonance angiography using convolutional neural network
Y Nam, J Jang, HY Lee, Y Choi, NY Shin, KH Ryu, DH Kim, SL Jung, ...
Neurobiology of Aging 87, 125-131, 2020
112020
Reduction of respiratory motion artifact in c-spine imaging using deep learning: Is substitution of navigator possible
H Lee, K Ryu, Y Nam, J Lee, DH Kim
Proceedings of the ISMRM Scientific Meeting & Exhibition, Paris 2660, 2018
112018
Improving phase‐based conductivity reconstruction by means of deep learning–based denoising of phase data for 3T MRI
KJ Jung, S Mandija, JH Kim, K Ryu, S Jung, C Cui, SY Kim, M Park, ...
Magnetic Resonance in Medicine 86 (4), 2084-2094, 2021
92021
Development of a deep learning method for phase unwrapping MR images
K Ryu, SM Gho, Y Nam, K Koch, DH Kim
Proc Int. Soc. Magn. Reson. Med 27, 4707, 2019
72019
Accelerated multicontrast reconstruction for synthetic MRI using joint parallel imaging and variable splitting networks
K Ryu, JH Lee, Y Nam, SM Gho, HS Kim, DH Kim
Medical physics 48 (6), 2939-2950, 2021
62021
Adaptive weighted polynomial fitting in phase-based electrical property tomography
JH Kim, J Shin, HJ Lee, KH Ryu, D Kim
Proc. Intl. Soc. Mag. Reson. Med. 25, 3643, 2017
62017
K-space refinement in deep learning mr reconstruction via regularizing scan specific spirit-based self consistency
K Ryu, C Alkan, C Choi, I Jang, S Vasanawala
Proceedings of the IEEE/CVF International Conference on Computer Vision ¡¦, 2021
52021
Validation of deep learning-based artifact correction on synthetic FLAIR images in a different scanning environment
KH Ryu, HJ Baek, SM Gho, K Ryu, DH Kim, SE Park, JY Ha, SB Cho, ...
Journal of Clinical Medicine 9 (2), 364, 2020
42020
Improving high frequency image features of deep learning reconstructions via k‐space refinement with null‐space kernel
K Ryu, C Alkan, SS Vasanawala
Magnetic resonance in medicine 88 (3), 1263-1272, 2022
32022
Accelerated 3D myelin water imaging using joint spatio‐temporal reconstruction
JH Lee, J Yi, JH Kim, K Ryu, D Han, S Kim, S Lee, DY Kim, DH Kim
Medical physics 49 (9), 5929-5942, 2022
22022
Multi-task accelerated mr reconstruction schemes for jointly training multiple contrasts
V Liu, K Ryu, C Alkan, JM Pauly, S Vasanawala
NeurIPS 2021 Workshop on Deep Learning and Inverse Problems, 2021
22021
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