This study presents the development and validation of a liquid chromatography-quadrupole-time-of-flight mass spectrometry method with data-independent acquisition (LC-QTOF-MS(E)) for targeted quantification, post-targeted screening, and untargeted metabolite profiling. Using MS(1)-based precursor ion quantification, the method demonstrated excellent analytical performance with linearity (R² > 0.99), accuracy (84â¯%-131â¯%), and precision (1â¯%-17â¯% relative standard deviation (RSD)). Although LC-QTOFâMS(E) sensitivity is at least nine-fold lower than LC-triple quadrupole MS with multiple reaction monitoring, it remains adequate for quantifying urinary metabolites, particularly those that fragment poorly or yield lowâintensity product ions. For postâtargeted screening and untargeted profiling, an inâhouse reference library (the Siriraj Metabolomics Data Warehouse, SiMD), comprising 174 curated metabolite standards, was integrated into the workflow to enhance metabolite identification confidence. The official website for SiMD can be accessed at https://si-simd.com/. To demonstrate the method's utility, 11 amino and organic acids were quantified in urine samples from 100 healthy individuals. Four compounds-L-methionine, L-histidine, L-tryptophan, and trans-ferulic acid-were significantly higher levels in females (Pâ¯<â¯0.05), likely reflecting sex-specific physiological or dietary intake differences. Postâtargeted screening identified 29 additional metabolites and assigned them to level 1 (m/z, RT, isotope pattern, and MS/MS spectra matched to reference standards) based on the Metabolomics Standards Initiative guidelines. Untargeted retrospective profiling revealed level 1 seven metabolites, including ribitol, creatine, glucuronic acid, trans-ferulic acid, succinic acid, dimethylglycine, and 3-hydroxyphenylacetic acid related to sex variation (VIP > 1.5). In summary, the LC-QTOF-MS(E) method coupled with SiMD provides a robust and comprehensive workflow for metabolomics analysis. It enables reliable target quantification and enhances confidence in metabolite identification while also reducing sample and instrumental demands. These features make it particularly well-suited for clinical metabolomics studies.
LC-QTOF-MS(E) with MS(1)-based precursor ion quantification and SiMD-assisted identification enhances human urine metabolite analysis.
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作者:Kurilung Alongkorn, Limjiasahapong Suphitcha, Wanichthanarak Kwanjeera, Manokasemsan Weerawan, Kaewnarin Khwanta, Duangkumpha Kassaporn, Manocheewa Siriphan, Tansawat Rossarin, Chaiteerakij Roongruedee, Nookaew Intawat, Sirivatanauksorn Yongyut, Khoomrung Sakda
| 期刊: | Computational and Structural Biotechnology Journal | 影响因子: | 4.100 |
| 时间: | 2025 | 起止号: | 2025 Jul 10; 27:3079-3089 |
| doi: | 10.1016/j.csbj.2025.07.009 | ||
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