Center for Medical Image Science and Visualization, Linköping University, Linköping, Sweden.
Departments of Radiation Physics and Medical and Health Sciences, Linköping University, Linköping, Sweden.
Magn Reson Med. 2019 Apr;81(4):2223-2237. doi: 10.1002/mrm.27590. Epub 2018 Nov 12.
To develop a method for retrospective artifact elimination of MRS data. This retrospective method was based on an approach that combines jackknife analyses with the correlation of spectral windows, and therefore termed "JKC."
Twelve healthy volunteers performed 3 separate measurement protocols using a 3T MR system. One protocol consisted of 2 cerebellar MEGA-PRESS measurements: 1 reference and 1 measurement including head movements. One-third of the artifact-influenced datasets were treated as training data for the implementation the JKC method, and the rest were used for validation.
The implemented JKC method correctly characterized most of the validation data. Additionally, after elimination of the detected artifacts, the resulting concentrations were much closer to those computed for the reference datasets. Moreover, when the JKC method was applied to the reference data, the estimated concentrations were not affected, compared with standard averaging.
The implemented JKC method can be applied without any extra cost to MRS data, regardless of whether the dataset has been contaminated by artifacts. Furthermore, the results indicate that the JKC method could be used as a quality control of a dataset, or as an indication of whether a shift in voxel placement has occurred during the measurement.
开发一种用于回顾性消除 MRS 数据伪影的方法。该回顾性方法基于一种结合了 Jackknife 分析和谱窗相关性的方法,因此称为“JKC”。
12 名健康志愿者使用 3T MR 系统进行了 3 项独立的测量方案。一项方案包括 2 次小脑 MEGA-PRESS 测量:1 次参考和 1 次包含头部运动的测量。三分之一受伪影影响的数据集被用作实施 JKC 方法的训练数据,其余数据集用于验证。
实施的 JKC 方法正确地描述了大部分验证数据。此外,消除检测到的伪影后,得到的浓度更接近参考数据集计算出的浓度。此外,当将 JKC 方法应用于参考数据时,与标准平均相比,估计的浓度不受影响。
实施的 JKC 方法可以不加任何额外成本应用于 MRS 数据,无论数据集是否受到伪影污染。此外,结果表明 JKC 方法可用作数据集的质量控制,或指示在测量过程中是否发生了体素位置的移动。