MASC: Metal-Aware Sampling and Correction via Reinforcement Learning for Accelerated MRI
Zhengyi Lu, Ming Lu, Chongyu Qu, Junchao Zhu, Junlin Guo, Marilyn Lionts, Yanfan Zhu, Yuechen Yang, Tianyuan Yao, Jayasai Rajagopal, Bennett Allan Landman, Xiao Wang, Xinqiang Yan, and Yuankai Huo

TL;DR
MASC introduces a reinforcement learning framework that jointly optimizes k-space sampling and artifact correction in MRI, significantly improving image quality in the presence of metal implants through end-to-end training and policy learning.
Contribution
It is the first to unify metal-aware sampling and artifact correction in MRI using reinforcement learning with supervised simulation-based training.
Findings
Learned sampling policies outperform traditional strategies.
End-to-end training enhances artifact correction performance.
Model generalizes well to clinical MRI data.
Abstract
Metal implants in MRI cause severe artifacts that degrade image quality and hinder clinical diagnosis. Traditional approaches address metal artifact reduction (MAR) and accelerated MRI acquisition as separate problems. We propose MASC, a unified reinforcement learning framework that jointly optimizes metal-aware k-space sampling and artifact correction for accelerated MRI. To enable supervised training, we construct a paired MRI dataset using physics-based simulation, generating k-space data and reconstructions for phantoms with and without metal implants. This paired dataset provides simulated 3D MRI scans with and without metal implants, where each metal-corrupted sample has an exactly matched clean reference, enabling direct supervision for both artifact reduction and acquisition policy learning. We formulate active MRI acquisition as a sequential decision-making problem, where an…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Advanced X-ray and CT Imaging · Sparse and Compressive Sensing Techniques
