论文标题

3D平面:可行的学习轨迹,用于加速MRI

3D FLAT: Feasible Learned Acquisition Trajectories for Accelerated MRI

论文作者

Alush-Aben, Jonathan, Ackerman-Schraier, Linor, Weiss, Tomer, Vedula, Sanketh, Senouf, Ortal, Bronstein, Alex

论文摘要

磁共振成像(MRI)长期以来一直被认为是当今诊断成像的黄金标准之一。 MRI的最重要的缺点是长期获取时间,禁止其在某些应用中使用标准实践。压缩传感(CS)建议将K空间(傅立叶结构域二重为双重空间坐标的物理空间),从而显着加速采集。但是,压缩感应的好处尚未得到充分利用。通过CS获得的大多数采样密度都不会产生轨迹,从而遵守实践中施加的MRI机器的严格约束。受到深度学习方法的成功启发,用于图像重建和来自基于学习的成像系统设计的计算成像的思想,我们引入了3D Flat,这是MRI中3D非卡特斯式加速轨迹的数据驱动设计的新颖协议。我们的建议利用整个3D K空间同时使用重建方法学习了物理上可行的采集轨迹。作为概念验证的实验结果表明,与标准轨迹相比,3D Flat在给定的读数时间内实现了更高的图像质量,例如径向,堆栈 - 明星或2D学习的轨迹(仅在2D平面中演变而在沿第三维完全采样的轨迹演变)。此外,我们证明了证据,支持使用非cartesian 3D轨迹在2D非 - 非洲轨迹上获得切片的显着益处。

Magnetic Resonance Imaging (MRI) has long been considered to be among the gold standards of today's diagnostic imaging. The most significant drawback of MRI is long acquisition times, prohibiting its use in standard practice for some applications. Compressed sensing (CS) proposes to subsample the k-space (the Fourier domain dual to the physical space of spatial coordinates) leading to significantly accelerated acquisition. However, the benefit of compressed sensing has not been fully exploited; most of the sampling densities obtained through CS do not produce a trajectory that obeys the stringent constraints of the MRI machine imposed in practice. Inspired by recent success of deep learning based approaches for image reconstruction and ideas from computational imaging on learning-based design of imaging systems, we introduce 3D FLAT, a novel protocol for data-driven design of 3D non-Cartesian accelerated trajectories in MRI. Our proposal leverages the entire 3D k-space to simultaneously learn a physically feasible acquisition trajectory with a reconstruction method. Experimental results, performed as a proof-of-concept, suggest that 3D FLAT achieves higher image quality for a given readout time compared to standard trajectories such as radial, stack-of-stars, or 2D learned trajectories (trajectories that evolve only in the 2D plane while fully sampling along the third dimension). Furthermore, we demonstrate evidence supporting the significant benefit of performing MRI acquisitions using non-Cartesian 3D trajectories over 2D non-Cartesian trajectories acquired slice-wise.

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