Centre for Human Brain Health and School of Psychology, University of Birmingham, Birmingham, UK.
Centre for Human Brain Health and School of Psychology, University of Birmingham, Birmingham, UK.
Neuroimage. 2023 Aug 15;277:120235. doi: 10.1016/j.neuroimage.2023.120235. Epub 2023 Jun 16.
H Magnetic Resonance Spectroscopy (MRS) is an important non-invasive tool for measuring brain metabolism, with numerous applications in the neuroscientific and clinical domains. In this work we present a new analysis pipeline (SLIPMAT), designed to extract high-quality, tissue-specific, spectral profiles from MR spectroscopic imaging data (MRSI). Spectral decomposition is combined with spatially dependant frequency and phase correction to yield high SNR white and grey matter spectra without partial-volume contamination. A subsequent series of spectral processing steps are applied to reduce unwanted spectral variation, such as baseline correction and linewidth matching, before direct spectral analysis with machine learning and traditional statistical methods. The method is validated using a 2D semi-LASER MRSI sequence, with a 5-minute duration, from data acquired in triplicate across 8 healthy participants. Reliable spectral profiles are confirmed with principal component analysis, revealing the importance of total-choline and scyllo-inositol levels in distinguishing between individuals - in good agreement with our previous work. Furthermore, since the method allows the simultaneous measurement of metabolites in grey and white matter, we show the strong discriminative value of these metabolites in both tissue types for the first time. In conclusion, we present a novel and time efficient MRSI acquisition and processing pipeline, capable of detecting reliable neuro-metabolic differences between healthy individuals, and suitable for the sensitive neurometabolic profiling of in-vivo brain tissue.
H 磁共振波谱(MRS)是一种用于测量脑代谢的重要非侵入性工具,在神经科学和临床领域有许多应用。在这项工作中,我们提出了一种新的分析管道(SLIPMAT),旨在从磁共振波谱成像数据(MRSI)中提取高质量、组织特异性的光谱谱线。光谱分解与空间相关的频率和相位校正相结合,产生高 SNR 的白质和灰质光谱,没有部分容积污染。随后应用一系列光谱处理步骤来减少不必要的光谱变化,如基线校正和线宽匹配,然后使用机器学习和传统统计方法进行直接光谱分析。该方法使用 2D 半 LASER MRSI 序列进行验证,该序列持续 5 分钟,来自 8 名健康参与者重复采集的数据。可靠的光谱谱线通过主成分分析得到证实,揭示了总胆碱和 scyllo-肌醇水平在区分个体方面的重要性,这与我们之前的工作一致。此外,由于该方法允许同时测量灰质和白质中的代谢物,我们首次显示了这些代谢物在两种组织类型中的强判别值。总之,我们提出了一种新颖的、高效的 MRSI 采集和处理管道,能够检测健康个体之间可靠的神经代谢差异,适用于体内脑组织的敏感神经代谢分析。