| Literature DB >> 35707402 |
Xujun Ruan1, Yan Wang2, Lirong Zhou2, Qiuling Zheng2, Haiping Hao1, Dandan He3.
Abstract
Discovery of disease biomarker based on untargeted metabolomics is informative for pathological mechanism studies and facilitates disease early diagnosis. Numerous of metabolomic strategies emerge due to different sample properties or experimental purposes, thus, methodological evaluation before sample analysis is essential and necessary. In this study, sample preparation, data processing procedure and metabolite identification strategy were assessed aiming at the discovery of biomarker of breast cancer. First, metabolite extraction by different solvents, as well as the necessity of vacuum-dried and re-dissolution, was investigated. The extraction efficiency was assessed based on the number of eligible components (components with MS/MS data acquired), which was more reasonable for metabolite identification. In addition, a simplified data processing procedure was proposed involving the OPLS-DA, primary screening for eligible components, and secondary screening with constraints including VIP, fold change and p value. Such procedure ensured that only differential candidates were subjected to data interpretation, which greatly reduced the data volume for database search and improved analysis efficiency. Furthermore, metabolite identification and annotation confidence were enhanced by comprehensive consideration of mass and MS/MS errors, isotope similarity, fragmentation match, and biological source confirmation. On this basis, the optimized strategy was applied for the analysis of serum samples of breast cancer, according to which the discovery of differential metabolites highly encouraged the independent biomarkers/indicators used for disease diagnosis and chemotherapy evaluation clinically. Therefore, the optimized strategy simplified the process of differential metabolite exploration, which laid a foundation for biomarker discovery and studies of disease mechanism.Entities:
Keywords: UPLC-MS; biomarker discovery; breast cancer; strategy evaluation; untargeted metabolomics
Year: 2022 PMID: 35707402 PMCID: PMC9189413 DOI: 10.3389/fphar.2022.894099
Source DB: PubMed Journal: Front Pharmacol ISSN: 1663-9812 Impact factor: 5.988
FIGURE 1(A) Total number of components (considering MS1 data) detected with designed conditions; and (B) total number of eligible components detected with designed conditions. Pos: positive ion mode; neg: negative ion mode.
FIGURE 2Data processing procedures. Grey dash line referred to a routine data processing procedure; black solid line referred to the proposed simplified procedure.
FIGURE 3(A) OPLS-DA score plots derived from the serum metabolomics datasets collected from healthy control and breast cancer group; (B) number of components after designed screening steps; (C) heatmap of differential metabolites; (D) ROC analysis; and (E) selected differential metabolites between healthy control and breast cancer group. BC: breast cancer.
FIGURE 4(A) Number of components after designed screening steps; (B) heatmap of differential metabolites; (C) pathway analysis; (D) selected differential metabolites before and after chemotherapy.