Interdisciplinary Research Center on Biology and Chemistry, and Shanghai Institute of Organic Chemistry, Chinese Academy of Sciences, Shanghai 200032, PR China; University of Chinese Academy of Sciences, Beijing 100049, PR China.
Interdisciplinary Research Center on Biology and Chemistry, and Shanghai Institute of Organic Chemistry, Chinese Academy of Sciences, Shanghai 200032, PR China.
Curr Opin Chem Biol. 2018 Feb;42:34-41. doi: 10.1016/j.cbpa.2017.10.033. Epub 2017 Nov 12.
Metabolomics and lipidomics aim to comprehensively measure the dynamic changes of all metabolites and lipids that are present in biological systems. The use of ion mobility-mass spectrometry (IM-MS) for metabolomics and lipidomics has facilitated the separation and the identification of metabolites and lipids in complex biological samples. The collision cross-section (CCS) value derived from IM-MS is a valuable physiochemical property for the unambiguous identification of metabolites and lipids. However, CCS values obtained from experimental measurement and computational modeling are limited available, which significantly restricts the application of IM-MS. In this review, we will discuss the recently developed machine-learning based prediction approach, which could efficiently generate precise CCS databases in a large scale. We will also highlight the applications of CCS databases to support metabolomics and lipidomics.
代谢组学和脂质组学旨在全面测量存在于生物系统中的所有代谢物和脂质的动态变化。离子淌度-质谱(IM-MS)在代谢组学和脂质组学中的应用促进了复杂生物样品中代谢物和脂质的分离和鉴定。从 IM-MS 得到的碰撞截面(CCS)值是用于明确鉴定代谢物和脂质的有价值的物理化学性质。然而,从实验测量和计算建模获得的 CCS 值是有限的,这极大地限制了 IM-MS 的应用。在这篇综述中,我们将讨论最近开发的基于机器学习的预测方法,该方法可以有效地在大规模下生成精确的 CCS 数据库。我们还将强调 CCS 数据库在支持代谢组学和脂质组学方面的应用。