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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

机译:超高分辨率GC-Orbitrap / MS增强的同位素比值异常值分析(IROA)峰检测和鉴定:在模型生物代谢组研究中的潜在应用

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摘要

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 13C-enriched carbon sources (randomized 95% 12C and 95% 13C) 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 Saccharomyces cerevisiae 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.
机译:识别非注释峰可能会对生物学系统的理解产生重大影响。计算机方法学集中在ESI LC / MS / MS上,用于识别未注释的MS峰。在这项研究中,我们采用计算机模拟方法,利用通过超高分辨率GC-Orbitrap / MS获得的增强质谱数据,开发了同位素比率离群值分析(IROA)工作流程,以确定非注释代谢物的身份。 GC-Orbitrap / MS的较高分离度及其宽动态范围,导致检测到更多的IROA峰对,并提高了化学式生成(CFG)的可靠性。 IROA使用两种不同的富含 13 C的碳源(随机分配的95% 12 C和95% 13 C)来生成镜像同位素对,其质量差异揭示了碳链长度(n),有助于鉴定内源性代谢物。准确的m / z,n和衍生化信息可从我们的GC / MS工作流程中获取,用于未知代谢物的鉴定,并有助于计算机方法学鉴定异构和未注释的代谢物。我们能够使用相同的酿酒酵母生长方案(Qiu等人,Anal.Chem 2016)和超高分辨率的GC-Orbitrap / MS,使用甲烷中10%的氨作为CI反应气来挖掘更多的质谱信息。我们鉴定了244个IROA峰对,与我们以前的报告(使用GC-TOF / MS机器分析了126个IROA峰对)相比,显着提高了IROA检测能力。对于从匹配的IROA CI和EI光谱中鉴定出的55种选定代谢物,使用GC-Orbitrap / MS与GC-TOF / MS进行比较,GC-Orbitrap / MS的平均质量偏差为1.48 ppm,但是,平均质量偏差为32.2 ppm对于GC-TOF / MS机器为ppm。总而言之,GC-Orbitrap / MS的更高分离度和更宽的动态范围实现了更精确的CFG,准确的GC / MS IROA方法与计算机芯片裂解相结合,在未知代谢物鉴定中具有巨大潜力,可用于表征模型生物网络。

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