Department of Psychology, Downing Street, University of Cambridge, UK.
Russell H. Morgan Department of Radiology and Radiological Science, The Johns Hopkins University School of Medicine, Baltimore, MD, United States; F. M. Kirby Research Center for Functional Brain Imaging, Kennedy Krieger Institute, Baltimore, MD, United States.
Neuroimage. 2021 May 15;232:117900. doi: 10.1016/j.neuroimage.2021.117900. Epub 2021 Feb 27.
Many methods exist for aligning and quantifying magnetic resonance spectroscopy (MRS) data to measure in vivo γ-aminobutyric acid (GABA). Research comparing the performance of these methods is scarce partly due to the lack of ground-truth measurements. The concentration of GABA is approximately two times higher in grey matter than in white matter. Here we use the proportion of grey matter within the MRS voxel as a proxy for ground-truth GABA concentration to compare the performance of four spectral alignment methods (i.e., retrospective frequency and phase drift correction) and six GABA signal modelling methods. We analyse a diverse dataset of 432 MEGA-PRESS scans targeting multiple brain regions and find that alignment to the creatine (Cr) signal produces GABA+ estimates that account for approximately twice as much of the variance in grey matter as the next best performing alignment method. Further, Cr alignment was the most robust, producing the fewest outliers. By contrast, all signal modelling methods, except for the single-Lorentzian model, performed similarly well. Our results suggest that variability in performance is primarily caused by differences in the zero-order phase estimated by each alignment method, rather than frequency, resulting from first-order phase offsets within subspectra. These results provide support for Cr alignment as the optimal method of processing MEGA-PRESS to quantify GABA. However, more broadly, they demonstrate a method of benchmarking quantification of in vivo metabolite concentration from other MRS sequences.
有许多方法可用于对齐和量化磁共振波谱(MRS)数据,以测量体内γ-氨基丁酸(GABA)。由于缺乏真实测量值,因此比较这些方法性能的研究很少。GABA 在灰质中的浓度大约是白质的两倍。在这里,我们使用 MRS 体素内灰质的比例作为 GABA 浓度的真实值的替代物,来比较四种光谱对齐方法(即回顾性频率和相位漂移校正)和六种 GABA 信号建模方法的性能。我们分析了一个针对多个脑区的 432 个 MEGA-PRESS 扫描的多样化数据集,发现与肌酸(Cr)信号对齐产生的 GABA+估计值可以解释灰质中约两倍的方差,而表现第二好的对齐方法则产生的方差更小。此外,Cr 对齐的方法最为稳健,产生的异常值最少。相比之下,除了单洛伦兹模型之外,所有的信号建模方法的性能都相似。我们的结果表明,性能的差异主要是由每个对齐方法估计的零阶相位的差异引起的,而不是由于子谱内的一阶相位偏移引起的频率差异。这些结果为 Cr 对齐作为处理 MEGA-PRESS 以定量 GABA 的最佳方法提供了支持。然而,更广泛地说,它们展示了一种从其他 MRS 序列定量体内代谢物浓度的基准方法。