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Abstract #2805

Robust Partial Fourier Reconstruction with Zero-shot Deep Untrained Generative Prior

So Hyun Kang*1, Jihoo Kim*1, JaeJin Cho2,3, Clarissa Z. Cooley2,3, Berkin Bilgic2,3,4, and Tae Hyung Kim1
1Department of Computer Engineering, Hongik University, Seoul, Korea, Republic of, 2Athinoula A. Martinos Center for Biomedical Imaging, Massachusetts General Hospital, Charlestown, MA, United States, 3Department of Radiology, Harvard Medical School, Boston, MA, United States, 4Harvard/MIT Health Sciences and Technology, Cambridge, MA, United States

Synopsis

Keywords: Machine Learning/Artificial Intelligence, Machine Learning/Artificial Intelligence, Image Reconstruction, Partial Fourier, Brain, Multi-echo MRI, Low-field MR

Motivation: We introduce a novel partial Fourier reconstruction method.

Goal(s): The objective is to enhance partial Fourier reconstruction by integrating the traditional phase constraint with the recent zero-shot deep learning approach.

Approach: The proposed method combines the virtual conjugate coils (VCC) phase constraint with zero-shot deep untrained generative prior (ZS-DUGP), assuming MRI can be nonlinearly represented by untrained networks, enabling simultaneous image reconstruction and prior learning without external training data. This approach enables robust partial Fourier reconstruction.

Results: Evaluation across diverse datasets, including the fastMRI, the QALAS multi-echo data, and the low-field MR data, validates its enhanced performance compared to existing techniques.

Impact: We propose a novel partial Fourier reconstruction combining virtual conjugate coils with a zero-shot untrained generative network prior. It provides robust reconstruction without external training dataset, evaluated across various scenarios (parallel imaging, multi-echo/contrast imaging, low-field MR) demonstrating its utility.

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Keywords