IASMA Research and Innovation Centre, Fondazione Edmund Mach, Food Quality and Nutrition Area, S. Michele all'Adige (TN), Italy.
J Chromatogr A. 2011 Jul 15;1218(28):4517-24. doi: 10.1016/j.chroma.2011.05.019. Epub 2011 May 14.
A headspace SPME GC-TOF-MS method was developed for the acquisition of metabolite profiles of apple volatiles. As a first step, an experimental design was applied to find out the most appropriate conditions for the extraction of apple volatile compounds by SPME. The selected SPME method was applied in profiling of four different apple varieties by GC-EI-TOF-MS. Full scan GC-MS data were processed by MarkerLynx software for peak picking, normalisation, alignment and feature extraction. Advanced chemometric/statistical techniques (PCA and PLS-DA) were used to explore data and extract useful information. Characteristic markers of each variety were successively identified using the NIST library thus providing useful information for variety classification. The developed HS-SPME sampling method is fully automated and proved useful in obtaining the fingerprint of the volatile content of the fruit. The described analytical protocol can aid in further studies of the apple metabolome.
建立了顶空固相微萃取-气相色谱-飞行时间质谱法(HS-SPME-GC-TOF-MS)用于获取苹果挥发物代谢物图谱。作为第一步,应用实验设计找出通过 SPME 提取苹果挥发物化合物的最佳条件。所选择的 SPME 方法应用于通过 GC-EI-TOF-MS 对四种不同苹果品种进行分析。全扫描 GC-MS 数据通过 MarkerLynx 软件进行峰提取、归一化、对齐和特征提取。采用先进的化学计量学/统计学技术(PCA 和 PLS-DA)来探索数据并提取有用信息。使用 NIST 库对每种品种的特征标志物进行了鉴定,从而为品种分类提供了有用的信息。所开发的 HS-SPME 采样方法完全自动化,可用于获得水果挥发性成分的指纹图谱。所描述的分析方案有助于进一步研究苹果代谢组学。