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Identification and evaluation of cycling yeast metabolites in two-dimensional comprehensive gas chromatography–time-of-flight mass spectrometry data

机译:二维综合气相色谱-飞行时间质谱数据中循环酵母代谢物的鉴定和评估

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摘要

A yeast metabolome exhibiting oscillatory behavior was analyzed using comprehensive two-dimensional gas chromatography - time-of-flight mass spectrometry (GC × GC–TOF-MS) and in-house developed data analysis software methodology, referred to as a signal ratio method (Sratio method). In this study 44 identified unique metabolites were found to exhibit cycling, with a depth-of-modulation amplitude greater than three. After the initial locations are found using the Sratio software, and identified preliminarily using ChromaTOF software, the refined mass spectra and peak volumes were subsequently obtained using parallel factor analysis (PARAFAC). The peak volumes provided by PARAFAC deconvolution provide a measurement of the cycling depth-of-modulation amplitude that is more accurate than the initial Sratio information (which serves as a rapid screening procedure to find the cycling metabolites while excluding peaks that do not cycle). The Sratio reported is a rapid method to determine the depth-of-modulation while not constraining the search to specific cycling frequencies. The phase delay of the cycling metabolites ranged widely in relation to the oxygen consumption cycling pattern.
机译:使用全面的二维气相色谱-飞行时间质谱(GC×GC–TOF-MS)和内部开发的数据分析软件方法,即信号比法(比例法)。在这项研究中,发现44种独特的代谢物表现出循环性,其调制深度幅度大于3。使用Sratio软件找到初始位置并使用ChromaTOF软件进行初步识别后,随后使用平行因子分析(PARAFAC)获得了精确的质谱和峰体积。 PARAFAC解卷积提供的峰体积提供了比初始Sratio信息更精确的循环调制深度幅度的测量值(该信息可作为快速筛选程序来查找循环代谢物,同时排除不循环的峰)。报告的比例是一种快速的方法,可以确定调制深度,同时不将搜索限制在特定的循环频率上。循环代谢物的相延迟与耗氧循环模式有关。

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