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ElemCor: accurate data analysis and enrichment calculation for high-resolution LC-MS stable isotope labeling experiments

机译:ElemCor:用于高分辨率LC-MS稳定同位素标记实验的准确数据分析和富集计算

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The investigation of intracellular metabolism is the mainstay in the biotechnology and physiology settings. Intracellular metabolic rates are commonly evaluated using labeling pattern of the identified metabolites obtained from stable isotope labeling experiments. The labeling pattern or mass distribution vector describes the fractional abundances of all isotopologs with different masses as a result of isotopic labeling, which are typically resolved using mass spectrometry. Because naturally occurring isotopes and isotopic impurity also contribute to measured signals, the measured patterns must be corrected to obtain the labeling patterns. Since contaminant isotopologs with the same nominal mass can be resolved using modern mass spectrometers with high mass resolution, the correction process should be resolution dependent. Here we present a software tool, ElemCor, to perform correction of such data in a resolution-dependent manner. The tool is based on mass difference theory (MDT) and information from unlabeled samples (ULS) to account for resolution effects. MDT is a mathematical theory and only requires chemical formulae to perform correction. ULS is semi-empirical and requires additional measurement of isotopologs from unlabeled samples. We validate both methods and show their improvement in accuracy and comprehensiveness over existing methods using simulated data and experimental data from Saccharomyces cerevisiae. The tool is available at https://github.com/4dsoftware/elemcor . We present a software tool based on two methods, MDT and ULS, to correct LC-MS data from isotopic labeling experiments for natural abundance and isotopic impurity. We recommend MDT for low-mass compounds for cost efficiency in experiments, and ULS for high-mass compounds with relatively large spectral inaccuracy that can be tracked by unlabeled standards.
机译:细胞内代谢的研究是生物技术和生理学研究的主要内容。通常使用从稳定同位素标记实验中获得的已鉴定代谢物的标记模式来评估细胞内代谢率。标记模式或质量分布矢量描述了同位素标记导致的具有不同质量的所有同位素异构体的分数丰度,通常使用质谱法对其进行解析。由于天然存在的同位素和同位素杂质也有助于测量信号,因此必须校正测量模式以获得标记模式。由于可以使用具有高质量分辨率的现代质谱仪来解析具有相同标称质量的污染同位素同位素,因此校正过程应取决于分辨率。在这里,我们介绍了一种软件工具ElemCor,以分辨率相关的方式对此类数据进行校正。该工具基于质量差异理论(MDT)和来自未标记样品(ULS)的信息来说明分离效果。 MDT是一种数学理论,只需要化学公式即可进行校正。 ULS是半经验性的,需要对未标记样品的同位素同位素进行额外测量。我们验证了这两种方法,并使用酿酒酵母的模拟数据和实验数据证明了它们在现有方法上的准确性和全面性的提高。该工具位于https://github.com/4dsoftware/elemcor。我们提供了一种基于MDT和ULS两种方法的软件工具,用于校正来自同位素标记实验的LC-MS数据的自然丰度和同位素杂质。对于实验中的成本效率,我们建议将MDT用于低质量化合物,对于具有相对较大光谱不准确度的高质量化合物,则建议使用ULS,可以通过未标记的标准进行跟踪。

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