TY - JOUR
T1 - Synthetizing SWI from 3T to 7T by generative diffusion network for deep medullary veins visualization
AU - Li, Sui
AU - Deng, Xingguang
AU - Li, Qiwei
AU - Zhen, Zhiming
AU - Han, Luyi
AU - Chen, Kang
AU - Zhou, Chaoyang
AU - Chen, Fengxi
AU - Huang, Peiyu
AU - Zhang, Ruiting
AU - Chen, Hao
AU - Zhang, Tianyu
AU - Chen, Wei
AU - Tan, Tao
AU - Liu, Chen
N1 - Publisher Copyright:
© 2025
PY - 2025/10/15
Y1 - 2025/10/15
N2 - Ultrahigh-field susceptibility-weighted imaging (SWI) provides excellent tissue contrast and anatomical details of brain. However, ultrahigh-field magnetic resonance (MR) scanner often expensive and provides uncomfortable noise experience for patient. Therefore, some deep learning approaches have been proposed to synthesis high-field MR images from low-filed MR images, most existing methods rely on generative adversarial network (GAN) and achieve acceptable results. While the dilemma in train process of GAN, generally recognized, limits the synthesis performance in SWI images for its microvascular structure. Diffusion models, as a promising alternative, indirectly characterize the gaussian noise to the target image with a slow sampling through a considerable number of steps. To address this limitation, we presented a generative diffusion-based deep learning imaging model, named conditional denoising diffusion probabilistic model (CDDPM), for synthesizing high-field (7 Tesla) SWI images form low-field (3 Tesla) SWI images and assess clinical applicability. Crucially, the experiment results demonstrate that the diffusion-based model that synthesizes 7T SWI from 3T SWI images is potentially to providing an alternative way to achieve the advantages of ultra-high field 7T MR images for deep medullary veins visualization.
AB - Ultrahigh-field susceptibility-weighted imaging (SWI) provides excellent tissue contrast and anatomical details of brain. However, ultrahigh-field magnetic resonance (MR) scanner often expensive and provides uncomfortable noise experience for patient. Therefore, some deep learning approaches have been proposed to synthesis high-field MR images from low-filed MR images, most existing methods rely on generative adversarial network (GAN) and achieve acceptable results. While the dilemma in train process of GAN, generally recognized, limits the synthesis performance in SWI images for its microvascular structure. Diffusion models, as a promising alternative, indirectly characterize the gaussian noise to the target image with a slow sampling through a considerable number of steps. To address this limitation, we presented a generative diffusion-based deep learning imaging model, named conditional denoising diffusion probabilistic model (CDDPM), for synthesizing high-field (7 Tesla) SWI images form low-field (3 Tesla) SWI images and assess clinical applicability. Crucially, the experiment results demonstrate that the diffusion-based model that synthesizes 7T SWI from 3T SWI images is potentially to providing an alternative way to achieve the advantages of ultra-high field 7T MR images for deep medullary veins visualization.
KW - 7 Tesla
KW - Diffusion model
KW - Susceptibility-weighted imaging
KW - Synthesize
UR - https://www.scopus.com/pages/publications/105016853366
U2 - 10.1016/j.neuroimage.2025.121475
DO - 10.1016/j.neuroimage.2025.121475
M3 - Article
C2 - 40976490
AN - SCOPUS:105016853366
SN - 1053-8119
VL - 320
JO - NeuroImage
JF - NeuroImage
M1 - 121475
ER -