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Abstract #0043

Deep Learning Reconstruction for Free-Breathing Radial Cine Imaging

Mahmut Yurt1, Kanghyun Ryu2, Zhitao Li3, Xucheng Zhu4, Xianglun Mao4, Kawin Setsompop5, Martin Janich4, John Pauly1, Ali Syed5, and Shreyas Vasanawala5,6
1Department of Electrical Engineering, Stanford University, Stanford, CA, United States, 2Korea Institute of Science and Technology, Seoul, Korea, Republic of, 3Department of Radiology, Northwestern University, Chicago, IL, United States, 4GE Healthcare, Stanford, CA, United States, 5Department of Radiology, Stanford University, Stanford, CA, United States, 6Stanford Cardiovascular Institute, Stanford University, Stanford, CA, United States

Synopsis

Keywords: Image Reconstruction, Cardiovascular

Motivation: We aim to introduce a cardiac cine imaging protocol to address the issues of motion susceptibility and robustness in the previous techniques.

Goal(s): Our objective is to demonstrate an accelerated acquisition and high-quality reconstruction framework based on free-breathing radial cardiac cine imaging that shows enhanced patient comfort and robustness against respiratory motion.

Approach: We synergistically leverage a raw k-space preprocessing module, region optimized coil compression, and deep learning reconstruction based on memory efficient unrolled neural networks.

Results: Our experiments indicate that the proposed framework achieves high reconstruction quality at large acceleration factors (e.g., 8x), in terms of spatial and temporal accuracy.

Impact: Conventional cardiac protocols use Cartesian k-space sampling and are susceptible to motion artifacts. We provide an acquisition and reconstruction framework based on a free-breathing protocol and deep learning reconstruction for enhanced patient comfort and robustness against motion artifacts.

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Keywords