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- Enhanced Isotopic Ratio Outlier Analysis (IROA) Peak Detection and Identification with Ultra-High Resolution GC-Orbitrap/MS: Potential Application for Investigation of Model Organism Metabolomes.
Enhanced Isotopic Ratio Outlier Analysis (IROA) Peak Detection and Identification with Ultra-High Resolution GC-Orbitrap/MS: Potential Application for Investigation of Model Organism Metabolomes.
Citation | “Enhanced Isotopic Ratio Outlier Analysis (Iroa) Peak Detection And Identification With Ultra-High Resolution Gc-Orbitrap/Ms: Potential Application For Investigation Of Model Organism Metabolomes.”. Metabolites. . |
Center | Albert Einstein College of Medicine |
Author | Yunping Qiu, Robyn D Moir, Ian M Willis, Suresh Seethapathy, Robert C Biniakewitz, Irwin J Kurland |
Keywords | GC-Orbitrap/MS, S. cerevisiae, in silico fragmentation, isotopic ratio outlier analysis, positive chemical ionization, unknown metabolite identification |
Abstract |
Identifying non-annotated peaks may have a significant impact on the understanding of biological systems. In silico methodologies have focused on ESI LC/MS/MS for identifying non-annotated MS peaks. In this study, we employed in silico methodology to develop an Isotopic Ratio Outlier Analysis (IROA) workflow using enhanced mass spectrometric data acquired with the ultra-high resolution GC-Orbitrap/MS to determine the identity of non-annotated metabolites. The higher resolution of the GC-Orbitrap/MS, together with its wide dynamic range, resulted in more IROA peak pairs detected, and increased reliability of chemical formulae generation (CFG). IROA uses two different C-enriched carbon sources (randomized 95% C and 95% C) to produce mirror image isotopologue pairs, whose mass difference reveals the carbon chain length (n), which aids in the identification of endogenous metabolites. Accurate m/z, n, and derivatization information are obtained from our GC/MS workflow for unknown metabolite identification, and aids in silico methodologies for identifying isomeric and non-annotated metabolites. We were able to mine more mass spectral information using the same growth protocol (Qiu et al. Anal. Chem 2016) with the ultra-high resolution GC-Orbitrap/MS, using 10% ammonia in methane as the CI reagent gas. We identified 244 IROA peaks pairs, which significantly increased IROA detection capability compared with our previous report (126 IROA peak pairs using a GC-TOF/MS machine). For 55 selected metabolites identified from matched IROA CI and EI spectra, using the GC-Orbitrap/MS vs. GC-TOF/MS, the average mass deviation for GC-Orbitrap/MS was 1.48 ppm, however, the average mass deviation was 32.2 ppm for the GC-TOF/MS machine. In summary, the higher resolution and wider dynamic range of the GC-Orbitrap/MS enabled more accurate CFG, and the coupling of accurate mass GC/MS IROA methodology with in silico fragmentation has great potential in unknown metabolite identification, with applications for characterizing model organism networks. |
Year of Publication |
2018
|
Journal |
Metabolites
|
Volume |
8
|
Issue |
1
|
Date Published |
01/2018
|
ISSN Number |
2218-1989
|
DOI |
10.3390/metabo8010009
|
Alternate Journal |
Metabolites
|
PMID |
29346327
|
PMCID |
PMC5875999
|
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