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Abstract #4670

Accelerated Convergent Reconstruction for MRI with High and Low Frequency

Chen Luo1, Zhuo-xu Cui2, Huayu Wang1, Taofeng Xie1,3, Qiyu Jin1, Guoqing Chen1, and Dong Liang2
1Inner Mongolia University, Hohhot, China, 2Shenzhen Institute of Advanced Technology,Chinese Academy of Sciences, Shenzhen, China, 3lnner Mongolia Medical University, Hohhot, China

Synopsis

Keywords: AI/ML Image Reconstruction, Brain

Motivation: Theoretically, results of general unfolding network are not a convergence point of the ill-posed problem for MRI reconstruction.

Goal(s): Our goal was to design an accelerated convergence unfolding network that is easier to approach the convergence point.

Approach: Using accelerated gradient descent method as the framework, the proximal gradient descents of MRI high-frequency and low-frequency information are completed in a single iteration, which achieves faster convergence.

Results: The reconstructed MRI of our unrolled network performs better than others.

Impact: The convergence point can be effectively approximated by accelerating convergence rate, but it is still not guaranteed to be the optimal point, and further work should seek the optimal value.

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