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使用压缩感知和低秩汉克尔矩阵补全方法评估欠采样31P-MRS数据的重建准确性。

Assessment of reconstruction accuracy for under-sampled 31P-MRS data using compressed sensing and a low rank Hankel matrix completion approach.

作者信息

García Jossian A, Noseworthy Michael D, Santos-Díaz Alejandro

机构信息

Tecnologico de Monterrey, School of Engineering and Sciences, Mexico City, Mexico.

Electrical and Computer Engineering, McMaster University, Hamilton, ON, Canada.

出版信息

Front Endocrinol (Lausanne). 2025 Jun 17;16:1581328. doi: 10.3389/fendo.2025.1581328. eCollection 2025.

Abstract

Phosphorus magnetic resonance spectroscopy and spectroscopic imaging (P-MRS/MRSI) are techniques to evaluate energy metabolism , they are capable of measuring metabolites such as phosphocreatine and inorganic phosphate in muscle and brain tissue. Despite their capability, these techniques are not very often used in clinical settings due to the long acquisition times required. In recent years, compressed sensing has been widely used as an acceleration method for MRI signal acquisition and translated to MRS. In order to use it, one of the main criteria states that the aliasing resulting from the undersampling scheme must be incoherent, which is achieved using a pseudo-random sampling strategy. However, when a set of pseudo-random sampling patterns are applied for the same acceleration factor, there is significant variability in the quality of the reconstructed signal. We present an evaluation of the influence of the undersampling pattern in the quality of the signal reconstruction through a series of experiments in P-MRS data using the low rank Hankel matrix completion as the reconstruction method. Our results demonstrate that the reconstruction accuracy is heavily influenced by the selection of specific samples rather than the undersampling factor. Furthermore, the noise level in the signal has a more pronounced impact on reconstruction quality. Additionally, reconstruction accuracy is significantly correlated with the density of samples collected at early sampling times, making it possible to set large time values to zero without producing any statistical difference in the error distribution means for some cases.

摘要

磷磁共振波谱和波谱成像(P-MRS/MRSI)是评估能量代谢的技术,它们能够测量肌肉和脑组织中的代谢物,如磷酸肌酸和无机磷酸盐。尽管有此能力,但由于所需的采集时间长,这些技术在临床环境中并不常用。近年来,压缩感知已被广泛用作MRI信号采集的加速方法,并已应用于MRS。为了使用它,一个主要标准是欠采样方案导致的混叠必须是不相关的,这可通过伪随机采样策略来实现。然而,当将一组伪随机采样模式应用于相同的加速因子时,重建信号的质量存在显著差异。我们通过一系列使用低秩汉克尔矩阵补全作为重建方法的P-MRS数据实验,对欠采样模式对信号重建质量的影响进行了评估。我们的结果表明,重建精度受特定样本选择的影响远大于欠采样因子。此外,信号中的噪声水平对重建质量的影响更为显著。此外,重建精度与早期采样时间采集的样本密度显著相关,这使得在某些情况下可以将大的时间值设为零,而不会在误差分布均值上产生任何统计差异。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4526/12208845/244c9f593044/fendo-16-1581328-g001.jpg

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