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Time-Dependent Profiling of Metabolites from Snf1 Mutant and Wild Type Yeast Cells

机译:Snf1突变和野生型酵母细胞的代谢产物的时间依赖性分析

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The effect of sampling time in the context of growth conditions on a dynamic metabolic system was investigated in order to assess to what extent a single sampling time may be sufficient for general application, as well as to determine if useful kinetic information could be obtained. A wild type yeast strain (W) was compared to a snf1DELTA mutant yeast strain (S) grown in high-glucose medium (R) and in low-glucose medium containing ethanol (DR). Under these growth conditions, different metabolic pathways for utilizing the different carbon sources are expected to be active. Thus, changes in metabolite levels relating to the carbon source in the growth medium were anticipated. Furthermore, the Snf1 protein kinase complex is required to adapt cellular metabolism from fermentative R conditions to oxidative DR conditions. So, differences in intracellular metabolite levels between the W and S yeast strains were also anticipated. Cell extracts were collected at four time points (0.5, 2, 4, 6 h) after shifting half of the cells from R to DR conditions, resulting in 16 sample classes (WR, WDR, SR, SDR) X (0.5, 2, 4, 6 h). The experimental design provided time course data, so temporal dependencies could be monitored in addition to carbon source and strain dependencies. Comprehensive two-dimensional (2D) gas chromatography coupled to time-of-flight mass spectrometry (GC X GC-TOFMS) was used with discovery-based data mining algorithms (Anal. Chem. 2006, 78, 5068-5075 (ref 1); J. Chromatogr., A 2008, 1186, 401-411 (ref 2)) to locate regions within the 2D chromatograms (i.e., metabolites) that provided chemical selectivity between the 16 sample classes. These regions were mathematically resolved using parallel factor analysis to positively identify the metabolites and to acquire quantitative results. With these tools, 51 unique metabolites were identified and quantified. Various time course patterns emerged from these data, and principal component analysis (PCA) was utilized as a comparison tool to determine the sources of variance between these 51 metabolites. The effect of sampling time was investigated with separate PCA analyses using various subsets of the data. PCA utilizing all of the time course data, averaged time course data, and each individual time point data set independently were performed to discern the differences. For the yeast strains examined in the current study, data collection at either 4 or 6 h provided information comparable to averaged time course data, albeit with a few metabolites missing using a single sampling time point.
机译:研究了在生长条件下采样时间对动态代谢系统的影响,以评估单个采样时间在多大程度上可用于一般应用,以及确定是否可以获得有用的动力学信息。将野生型酵母菌株(W)与在高葡萄糖培养基(R)和含乙醇的低葡萄糖培养基(DR)中生长的snf1DELTA突变酵母菌株(S)进行了比较。在这些生长条件下,利用不同碳源的不同代谢途径有望活跃。因此,预计与生长培养基中碳源有关的代谢物水平将发生变化。此外,需要Snf1蛋白激酶复合物使细胞代谢从发酵的R条件适应于氧化的DR条件。因此,还预期了W和S酵母菌株之间的细胞内代谢产物水平的差异。将一半细胞从R移至DR条件后的四个时间点(0.5、2、4、6 h)收集细胞提取物,得到16种样品类别(WR,WDR,SR,SDR)X(0.5、2, 4、6小时)。实验设计提供了时程数据,因此除了碳源和应变依赖性外,还可以监视时间依赖性。综合二维(2D)气相色谱与飞行时间质谱(GC X GC-TOFMS)结合使用基于发现的数据挖掘算法(Anal。Chem。2006,78,5068-5075(ref 1) ; J. Chromatogr。,A 2008,1186,401-411(ref 2))来定位2D色谱图中的区域(即代谢产物),该区域提供了16种样品类别之间的化学选择性。使用并行因子分析对这些区域进行数学解析,以准确鉴定代谢物并获得定量结果。利用这些工具,鉴定并定量了51种独特的代谢物。从这些数据中得出了各种时程模式,主成分分析(PCA)被用作比较工具来确定这51种代谢物之间的差异来源。使用不同的数据子集,通过单独的PCA分析研究了采样时间的影响。执行PCA,利用所有时程数据,平均时程数据和独立的每个单独的时间点数据集来识别差异。对于本研究中检查的酵母菌株,在4或6 h的数据收集可提供与平均时程数据相当的信息,尽管使用单个采样时间点会丢失一些代谢产物。

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