Chen Chao-Jung, Lee Der-Yen, Yu Jiaxin, Lin Yu-Ning, Lin Tsung-Min
Graduate Institute of Integrated Medicine, College of Chinese Medicine, China Medical University, Taichung, Taiwan.
Proteomics Core Laboratory, Department of Medical Research, China Medical University Hospital, Taichung, Taiwan.
Mass Spectrom Rev. 2023 Nov-Dec;42(6):2349-2378. doi: 10.1002/mas.21785. Epub 2022 May 29.
The employment of liquid chromatography-mass spectrometry (LC-MS) untargeted and targeted metabolomics has led to the discovery of novel biomarkers and improved the understanding of various disease mechanisms. Numerous strategies have been reported to expand the metabolite coverage in LC-MS-untargeted and targeted metabolomics. To improve the sensitivity of low-abundance or poor-ionized metabolites for reducing the amount of clinical sample, chemical derivatization methods are used to target different functional groups. Proper sample preparation is beneficial for reducing the matrix effect, maintaining the stability of the LC-MS system, and increasing the metabolite coverage. Machine learning has recently been integrated into the workflow of LC-MS metabolomics to accelerate metabolite identification and data-processing automation, and increase the accuracy of disease classification and clinical outcome prediction. Due to the rapidly growing utility of LC-MS metabolomics in discovering disease markers, this review will address the recent advances in the field and offer perspectives on various strategies for expanding metabolite coverage, chemical derivatization, sample preparation, clinical disease markers, and machining learning for disease modeling.
液相色谱-质谱联用(LC-MS)非靶向和靶向代谢组学的应用已促成新型生物标志物的发现,并增进了对各种疾病机制的理解。据报道,有多种策略可扩大LC-MS非靶向和靶向代谢组学中的代谢物覆盖范围。为提高低丰度或离子化程度差的代谢物的灵敏度以减少临床样本量,化学衍生化方法被用于针对不同的官能团。恰当的样品前处理有助于降低基质效应、维持LC-MS系统的稳定性并增加代谢物覆盖范围。机器学习最近已被整合到LC-MS代谢组学的工作流程中,以加速代谢物鉴定和数据处理自动化,并提高疾病分类和临床结局预测的准确性。鉴于LC-MS代谢组学在发现疾病标志物方面的应用迅速增加,本综述将阐述该领域的最新进展,并就扩大代谢物覆盖范围、化学衍生化、样品前处理、临床疾病标志物以及用于疾病建模的机器学习等各种策略提供观点。