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Reconstruction methods from hyperpolarized 13C chemical shift imaging spiral 3D data: Comparison between direct summation and gridding method

机译:超极化13 C化学位移成像螺旋3D数据的重建方法:直接求和与网格化方法的比较

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Hyperpolarized 13C chemical shift imaging (CSI) is a spectroscopy technique for magnetic resonance imaging. Due to the fast decay of the hyperpolarized tracer, acquisition speed represents a key issue. Spiral trajectories are usually exploited to fast fill the K-space. Several strategies have been proposed for CSI image reconstruction form spiral trajectories, but the performances in hyperpolarized 13C CSI of these strategies have not been investigated. In hyperpolarized 13C 3D CSI, some of the imaged metabolites may appear with very low signal, so reconstruction methods should keep SNR high to allow better viewing of metabolites' locations. In this study we compared the performances of Direct Summation (DS) and Gridding (GR) reconstruction methods. Methods were compared evaluating SNR on reconstructed images and reconstruction time. In vivo experimental data were obtained from medium-sized animals injected with hyperpolarized 13C. DS obtained higher SNR for all metabolites of interest. On the other hand, GR was much faster. The study results may provide a useful indication on how to choose the appropriate reconstruction method for hyperpolarized 13C in vivo data acquisition.
机译:超极化 13 C化学位移成像(CSI)是一种用于磁共振成像的光谱技术。由于超极化示踪剂的快速衰减,采集速度成为关键问题。通常利用螺旋轨迹快速填充K空间。已经提出了几种从螺旋轨迹重建CSI图像的策略,但尚未研究这些策略在超极化 13 C CSI中的性能。在超极化的 13 C 3D CSI中,某些成像的代谢物可能以非常低的信号出现,因此重建方法应保持较高的SNR,以便更好地查看代谢物的位置。在这项研究中,我们比较了直接求和(DS)和网格化(GR)重建方法的性能。比较了评估重建图像的SNR和重建时间的方法。体内实验数据来自注射了超极化的 13 C的中型动物。 DS对所有感兴趣的代谢物均获得了较高的SNR。另一方面,GR更快。研究结果可能为如何选择合适的重建方法进行超极化 13 C体内数据采集提供有用的指导。

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