State Key Laboratory of Natural Medicines, Department of Chinese Medicines Analysis, School of Traditional Chinese Pharmacy, China Pharmaceutical University, No. 24 Tongjia Lane, Nanjing, China.
State Key Laboratory of Chinese Medicine and Molecular Pharmacology (Incubation) and Shenzhen Key Laboratory of Food Biological Safety Control, Shenzhen Research Institute of Hong Kong Polytechnic University, Shenzhen 518057, China.
Analyst. 2022 Mar 14;147(6):1236-1244. doi: 10.1039/d1an02161c.
Collision cross section (CCS) values generated from ion mobility mass spectrometry (IM-MS) have commonly been employed to facilitate lipid identification. However, this is hindered by the limited available lipid standards. Recently, CCS values were predicted by means of computational calculations, though the prediction precision was generally not good and the predicted CCS values of the lipid isomers were almost identical. To address this challenge, a least absolute shrinkage and selection operator (LASSO)-based prediction method was developed for the prediction of lipids' CCS values in this study. In this method, an array of molecular descriptors were screened and optimized to reflect the subtle differences in structures among the different lipid isomers. The use of molecular descriptors together with a wealth of standard CCS values for the lipids (365 in total) significantly improved the accuracy and precision of the LASSO model. Its accuracy was externally validated with median relative errors (MREs) of <1.1% using an independent data set. This approach was demonstrated to allow differentiation of / and sn-positional isomers. The results also indicated that the LASSO-based prediction method could practically reduce false-positive identifications in IM-MS-based lipidomics.
碰撞截面 (CCS) 值是通过离子淌度质谱 (IM-MS) 产生的,通常用于促进脂质鉴定。然而,这受到可用脂质标准品的限制。最近,通过计算计算预测了 CCS 值,尽管预测精度通常不高,而且脂质异构体的预测 CCS 值几乎相同。为了解决这一挑战,本研究开发了一种基于最小绝对收缩和选择算子 (LASSO) 的预测方法,用于预测脂质的 CCS 值。在该方法中,筛选和优化了一系列分子描述符,以反映不同脂质异构体结构之间的细微差异。使用分子描述符以及大量脂质的标准 CCS 值(总共 365 个)显著提高了 LASSO 模型的准确性和精度。使用独立数据集进行外部验证时,其准确性的中位相对误差 (MRE) <1.1%。该方法证明可以区分 / 和 sn-位置异构体。结果还表明,基于 LASSO 的预测方法实际上可以减少基于 IM-MS 的脂质组学中的假阳性鉴定。