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Abstract #0941

Diffusion generative prior-based highly accelerated MR T1ρ mapping

Kangping Wang1, Chentao Cao1, Zhuoxu Cui1, Yuanyuan Liu1, Hairong Zheng1, Dong Liang1, and Yanjie Zhu1
1Shenzhen Institutes of Advanced Technology,Chinese Academy of Sciences, Shenzhen, China

Synopsis

Keywords: Machine Learning/Artificial Intelligence, Image ReconstructionDiffusion-based generative models have been applied to solve the inverse problem of MR reconstruction and show impressive results. However, the diffusion model requires many iterations to produce high-quality samples, prolonging the reconstruction time. It also may lead to stochastic differential equation (SDE) sequence divergence in MR reconstruction and degrades the reconstruction quality. We proposed a new SDE for diffusion-based MR reconstruction that focuses on the diffusion process in high-frequency of k-space to improve reconstruction robustness and reduce the iterations. We applied the proposed method in MR T1ρ mapping, showing that it can achieve a high acceleration of 14X.

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