| Literature DB >> 29807420 |
Xinjie Zhao1, Zhongda Zeng1,2, Aiming Chen2, Xin Lu1, Chunxia Zhao1, Chunxiu Hu1, Lina Zhou1, Xinyu Liu1, Xiaolin Wang1, Xiaoli Hou1, Yaorui Ye1, Guowang Xu1.
Abstract
Identification of the metabolites is an essential step in metabolomics study to interpret the regulatory mechanism of pathological and physiological processes. However, it is still difficult in LC-MS n-based studies because of the complexity of mass spectrometry, chemical diversity of metabolites, and deficiency of standards database. In this work, a comprehensive strategy is developed for accurate and batch metabolite identification in nontargeted metabolomics studies. First, a well-defined procedure was applied to generate reliable and standard LC-MS2 data, including tR, MS1, and MS2 information at a standard operational procedure. An in-house database including about 2000 metabolites was constructed and used to identify the metabolites in nontargeted metabolic profiling by retention time calibration using internal standards, precursor ion alignment and ion fusion, auto-MS2 information extraction and selection, and database batch searching and scoring. As an application example, a pooled serum sample was analyzed to deliver the strategy, and 202 metabolites were identified in the positive ion mode. It shows our strategy is useful for LC-MS n-based nontargeted metabolomics study.Entities:
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Year: 2018 PMID: 29807420 DOI: 10.1021/acs.analchem.8b01482
Source DB: PubMed Journal: Anal Chem ISSN: 0003-2700 Impact factor: 6.986