Wu Wenjie, Wang Ke, Liu Jianing, So Pui-Kin, Leung Ting-Fan, Wong Man-Sau, Zhao Danyue
Department of Food Science and Nutrition, The Hong Kong Polytechnic University, Hong Kong 999077, China.
Centre for Eye and Vision Research (CEVR), 17W Hong Kong Science Park, Hong Kong China.
Anal Chem. 2025 Feb 11;97(5):2629-2638. doi: 10.1021/acs.analchem.4c03222. Epub 2025 Jan 30.
Sample pretreatment for mass spectrometry (MS)-based metabolomics and lipidomics is normally conducted independently with two sample aliquots and separate matrix cleanup procedures, making the two-step process sample-intensive and time-consuming. Herein, we introduce a high-throughput pretreatment workflow for integrated nontargeted metabolomics and lipidomics leveraging the enhanced matrix removal (EMR)-lipid microelution 96-well plates. The EMR-lipid technique was innovatively employed to effectively separate and isolate non-lipid small metabolites and lipids in sequence using significantly reduced sample amounts and organic solvents. Our proposed methodology enables parallel profiling of metabolome and lipidome within a single sample aliquot using ultrahigh-performance liquid chromatography-high resolution mass spectrometry (UHPLC-HRMS). Following method development and optimization with representative metabolites at levels comparable to those detected in human blood, the optimized workflow was applied to prepare metabolome-lipidome from maternal and umbilical cord-blood sera prior to comprehensive profiling using three different UHPLC columns. Results indicate that, compared with conventional two-step metabolomics-lipidomics sample pretreatment workflow, this new approach substantially reduces sample amount and processing time, while still preserving metabolite profiles and revealing additional MS features. Over 2500 metabolites were annotated in human sera with >1000 shared across maternal and cord blood. The shared metabolites are closely linked to various physiological functions, including nutrient transfer, hormonal regulation, waste product clearance, and metabolic programming, underscoring the significant impact of maternal metabolic activities on neonatal metabolic health. In summary, the proposed workflow enables efficient sample pretreatment for nontargeted metabolomics-lipidomics using one single sample while achieving broad metabolite coverage, highlighting its remarkable applicability in clinical and preclinical research.
基于质谱(MS)的代谢组学和脂质组学的样品预处理通常是使用两份样品等分试样和单独的基质净化程序独立进行的,这使得两步过程样品用量大且耗时。在此,我们介绍一种高通量预处理工作流程,用于整合非靶向代谢组学和脂质组学,该流程利用增强型基质去除(EMR)-脂质微洗脱96孔板。EMR-脂质技术被创新性地用于使用显著减少的样品量和有机溶剂依次有效地分离和分离非脂质小分子代谢物和脂质。我们提出的方法能够使用超高效液相色谱-高分辨率质谱(UHPLC-HRMS)在单个样品等分试样中对代谢组和脂质组进行平行分析。在用与在人血中检测到的水平相当的代表性代谢物进行方法开发和优化之后,将优化后的工作流程应用于从母血和脐带血血清中制备代谢组-脂质组,然后使用三种不同的UHPLC柱进行全面分析。结果表明,与传统的两步代谢组学-脂质组学样品预处理工作流程相比,这种新方法大大减少了样品量和处理时间,同时仍保留了代谢物谱并揭示了额外的质谱特征。在人血清中注释了超过2500种代谢物,母血和脐带血中有超过1000种是共享的。共享的代谢物与各种生理功能密切相关,包括营养物质转移、激素调节、废物清除和代谢编程,强调了母体代谢活动对新生儿代谢健康的重大影响。总之,所提出的工作流程能够使用单个样品对非靶向代谢组学-脂质组学进行高效的样品预处理,同时实现广泛的代谢物覆盖,突出了其在临床和临床前研究中的显著适用性。