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Abstract #4799

Accelerated 4D Flow MRI with Low-Rank Modeling and A Deep Generative Prior

Aiqi Sun1, Hengfa Lu2, and Bo Zhao1,2
1Oden Institute for Computational Engineering & Sciences, University of Texas at Austin, Austin, TX, United States, 2Department of Biomedical Engineering, University of Texas at Austin, Austin, TX, United States

Synopsis

Keywords: Sparse & Low-Rank Models, Velocity & Flow

Motivation: Conventional 4D flow MRI provides valuable insights into blood flow but suffers from long scan times. Recent machine learning methods improve MRI reconstruction; however, they often require a large amount of training data to achieve desired performance.

Goal(s): This work is aimed to introduce a novel learning-based image reconstruction method to accelerate 4D flow MRI without using training datasets.

Approach: The proposed method integrates low-rank modelling with a deep generative prior by utilizing an untrained generative neural network to represent the spatial subspace of the model.

Results: The effectiveness of the proposed method has been demonstrated with in-vivo aortic 4D flow experiments.

Impact: This work introduced an innovative learning-based image reconstruction method for accelerating 4D flow MRI, which produces accurate velocity measurements even under high acceleration factor, all without the need for training datasets.

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Keywords