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An improved detection and identification strategy for untargeted metabolomics based on UPLC-MS.

Authors :
Hou, Yuanlong
He, Dandan
Ye, Ling
Wang, Guangji
Zheng, Qiuling
Hao, Haiping
Source :
Journal of Pharmaceutical & Biomedical Analysis. Nov2020, Vol. 191, pN.PAG-N.PAG. 1p.
Publication Year :
2020

Abstract

• An improved detection and identification strategy was developed for untargeted metabolomics based on UPLC-MS. • Fragment simulation and MS/MS library search were proposed to annotate metabolites based on different databases. • Identification was comprehensively evaluated based on the rationality of fragmentation, biological sources and functions. Untargeted metabolomics provides a comprehensive investigation of metabolites and enables the discovery of biomarkers. Improvements in sample preparation, chromatographic separation and raw data processing procedure greatly enhance the metabolome coverage. In addition, database-dependent software identification is also essential, upon which enhances the identification confidence and benefits downstream biological analysis. Herein, we developed an improved detection and identification strategy for untargeted metabolomics based on UPLC-MS. In this work, sample preparation was optimized by considering chemical properties of different metabolites. Chromatographic separation was done by two different columns and MS detection was performed under positive and negative ion modes regarding to the different polarities of metabolites. According to the characteristics of the collected data, an improved identification and evaluation strategy was developed involving fragment simulation and MS/MS library search based on two commonly used databases, HMDB and METLIN. Such combination integrated information from different databases and was aimed to enhance identification confidence by considering the rationality of fragmentation, biological sources and functions comprehensively. In addition, decision tree analysis and lab-developed database were also introduced to assist the data processing and enhance the identification confidence. Finally, the feasibility of the developed strategy was validated by liver samples of obesity mice and controls. 238 metabolites were accurately detected, which was beneficial for the subsequent biomarker discovery and downstream pathway analysis. Therefore, the developed strategy remarkably facilitated the identification accuracy and the confirmation of metabolites in untargeted metabolomics. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
07317085
Volume :
191
Database :
Academic Search Index
Journal :
Journal of Pharmaceutical & Biomedical Analysis
Publication Type :
Academic Journal
Accession number :
146496332
Full Text :
https://doi.org/10.1016/j.jpba.2020.113531