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Evaluation of metabolome sample preparation methods regarding leakage reduction for the oleaginous yeast Yarrowia lipolytica

机译:含油酵母解脂耶氏酵母的代谢组学样品前处理方法的评价

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摘要

Yarrowia lipolytica is the well-known oleaginous yeast able to accumulate amounts of lipids and a variety of high value products. The knowledge of its intracellular metabolites concentrations, which are directly linked to the sample preparation of corresponding intracellular metabolites, is of fundamental importance for the characterization of its metabolism. Therefore, in this study, we evaluated current sampling and extraction methods used in gas chromatography-mass spectrometry (GC-MS) analysis of the intracellular metabolites of microorganism. Mainly, the comparison between the methyl chloroformate (MCF) derivatization and the N-methyl-N-(trimethylsilyl) trifluoroacetamide (MSTFA) derivatization applied to the analysis of a broad variety of Y. lipolytica's metabolites was performed. More importantly, the dimethyl sulfoxide (DMSO) solution quenching method was attempted with the purpose of reducing the intracellular metabolites leakage during quenching and adapting the leakage-free quenching method to both kinds of derivatization. The results obtained showed that the DMSO quenching method permits measurement of the concentration of intracellular metabolites and can be applicable for the analysis of multiple metabolites of important pathways in Y. lipolytica by available routine GC-MS platform.
机译:解脂耶氏酵母是能够积聚大量脂质和多种高价值产品的众所周知的含油酵母。直接与相应细胞内代谢物的样品制备相关的细胞内代谢物浓度的知识对于表征其代谢至关重要。因此,在这项研究中,我们评估了目前用于微生物细胞内代谢产物的气相色谱-质谱(GC-MS)分析的采样和提取方法。主要地,进行了氯甲酸甲酯(MCF)衍生化和N-甲基-N-(三甲基甲硅烷基)三氟乙酰胺(MSTFA)衍生化之间的比较,该衍生化用于分析解脂耶氏酵母的各种代谢物。更重要的是,尝试了二甲基亚砜(DMSO)溶液淬灭方法,目的是减少淬灭过程中细胞内代谢物的泄漏并使无泄漏淬灭方法适用于两种衍生化。所得结果表明,DMSO猝灭法可测量细胞内代谢物的浓度,并可通过可用的常规GC-MS平台用于解脂耶氏酵母中重要途径的多种代谢物的分析。

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