Institute for Instrumental Analytics and Bioanalytics, Mannheim University of Applied Sciences, Paul-Wittsack-Strasse 10, 68163, Mannheim, Germany.
Institute of Food Chemistry, Hamburg School of Food Science, University of Hamburg, Grindelallee 117, 20146, Hamburg, Germany.
Anal Bioanal Chem. 2020 Oct;412(26):7085-7097. doi: 10.1007/s00216-020-02842-y. Epub 2020 Aug 4.
For the first time, a prototype HS-GC-MS-IMS dual-detection system is presented for the analysis of volatile organic compounds (VOCs) in fields of quality control of brewing hop. With a soft ionization and drift time-based ion separation in IMS and a hard ionization and m/z-based separation in MS, substance identification in the case of co-elution was improved, substantially. Machine learning tools were used for a non-targeted screening of the complex VOC profiles of 65 different hop samples for similarity search by principal component analysis (PCA) followed by hierarchical cluster analysis (HCA). Partial least square regression (PLSR) was applied to investigate the observed correlation between the volatile profile and the α-acid content of hops and resulted in a standard error of prediction of only 1.04% α-acid. This promising volatilomic approach shows clearly the potential of HS-GC-MS-IMS in combination with machine learning for the enhancement of future quality assurance of hops. Graphical abstract.
首次提出了一种 HS-GC-MS-IMS 双检测系统原型,用于分析酿造啤酒花质量控制领域中的挥发性有机化合物 (VOCs)。在 IMS 中采用软电离和基于漂移时间的离子分离,在 MS 中采用硬电离和基于 m/z 的分离,大大提高了共洗脱情况下的物质鉴定能力。使用机器学习工具对 65 种不同啤酒花样品的复杂 VOC 图谱进行非靶向筛选,通过主成分分析 (PCA) 进行相似性搜索,然后进行层次聚类分析 (HCA)。应用偏最小二乘回归 (PLSR) 研究观察到的挥发性图谱与啤酒花α-酸含量之间的相关性,结果表明α-酸的预测标准误差仅为 1.04%。这种很有前途的挥发组学方法清楚地表明,HS-GC-MS-IMS 与机器学习相结合,在提高未来啤酒花质量保证方面具有潜力。