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Joint Learning of Cartesian under Sampling Andre Construction for Accelerated MRI

机译:加速MRI采样安德烈建设下笛卡尔联合学习

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Magnetic Resonance Imaging (MRI) is considered today the golden-standard modality for soft tissues. The long acquisition times, however, make it more prone to motion artifacts as well as contribute to the relative high costs of this examination. Over the years, multiple studies concentrated on designing reduced measurement schemes and image reconstruction schemes for MRI, however these problems have been so far addressed separately. On the other hand, recent works in optical computational imaging have demonstrated growing success of simultaneous learning-based design of the acquisition and reconstruction schemes manifesting significant improvement in the reconstruction quality with a constrained time budget. Inspired by these successes, in this work, we propose to learn accelerated MR acquisition schemes (in the form of Cartesian trajectories) jointly with the image reconstruction operator. To this end, we propose an algorithm for training the combined acquisition-reconstruction pipeline end-to-end in a differentiable way. We demonstrate the significance of using the learned Cartesian trajectories at different speed up rates. Code available at https://github.com/tomer196/fastMRI-Cartesian.
机译:磁共振成像(MRI)今天被认为是软组织的金标准模型。然而,长时间的收购时间使其更容易发生运动伪影以及促进该检查的相对高成本。多年来,集中在设计减少的测量方案和MRI的图像重建方案的多项研究,但到目前为止,这些问题已经单独解决。另一方面,最近的光学计算成像的作品已经证明了基于学习的获取和重建方案的同时学习设计的成功,表现出与受约束的时间预算的重建质量的显着改善。在这项工作中,通过这些成功的启发,我们建议与图像重建运营商共同学习加速先生的先生收购计划(以笛卡尔轨迹的形式)。为此,我们提出了一种以可分辨率的方式培训结合采集重建管道的算法。我们展示了在不同速度速度下使用学习的笛卡尔轨迹的重要性。在https://github.com/tomer196/fastmri-cartesian提供的代码。

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