体内
再现性
谷胱甘肽
皮质(解剖学)
初级运动皮层
离体
医学
运动皮层
视皮层
病理
化学
变异系数
核医学
神经科学
内科学
生物
生物化学
遗传学
酶
色谱法
刺激
作者
Adriana Anton,Richard J. Mead,Pamela J. Shaw,Richard A.E. Edden,Julia Bigley,Thomas M. Jenkins,Jim M. Wild,Nigel Hoggard,Iain D. Wilkinson
摘要
Background Glutathione (GSH) is an important brain antioxidant and a number of studies have reported its measurement by edited and nonedited localized 1 H spectroscopy techniques within a range of applications in healthy volunteers and disease states. Good test–retest reproducibility is key when assessing the efficacy of treatments aimed at modulating GSH levels within the central nervous system or when noninvasively assessing changes in GSH content over time. Purpose To evaluate the intraday (in vitro and in vivo) and 1‐month apart (in vivo) test–retest reproducibility of GSH measurements from GSH‐edited MEGA‐PRESS acquisitions at 3 T in a phantom and in the brain of a cohort of middle‐aged and older healthy volunteers. Study Type Prospective. Subjects/Phantoms A phantom containing physiological concentrations of GSH and metabolites with overlapping spectral signatures and 10 healthy volunteers (4 F, 6 M, 55 ± 14 years old). Field strength/Sequence GSH‐edited spectra were acquired at 3 T using the MEGA‐PRESS sequence. Assessment The phantom was scanned twice and the healthy subjects were scanned three times (on two separate days, 1 month apart). GSH was quantified from each acquisition, with the in vivo voxels placed at the primary motor cortex (PMC) and the occipital cortex (OCC). Statistical Tests Mean coefficients of variation (CV) were used to assess short‐term (in vitro and in vivo) and longer‐term (in vivo) test–retest reproducibility. Results In vitro, the CV was 2.3%. In vivo, the mean intraday CV was 3.3% in the PMC and 2.4% in the OCC, while the CVs at 1 month apart were 4.6% in the PMC and 7.8% in the OCC. Data Conclusion GSH‐edited MEGA‐PRESS spectroscopy allows measurement of GSH with excellent precision. Evidence Level 1 Technical Efficacy Stage 2
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