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Regression analysis for comparing protein samples with O-16/O-18 stable-isotope labeled mass spectrometry

机译:使用O-16 / O-18稳定同位素标记质谱法比较蛋白质样品的回归分析

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Motivation: Using stable isotopes in global proteome scans, labeled molecules from one sample are pooled with unlabeled molecules from another sample and subsequently subjected to mass-spectral analysis. Stable-isotope methodologies make use of the fact that identical molecules of different stable-isotope compositions are differentiated in a mass spectrometer and are represented in a mass spectrum as distinct isotopic clusters with a known mass shift. We describe two multivariable linear regression models for O-16/O-18 stable-isotope labeled data that jointly model pairs of resolved isotopic clusters from the same peptide and quantify the abundance present in each of the two biological samples while concurrently accounting for peptide-specific incorporation rates of the heavy isotope. The abundance measure for each peptide from the two biological samples is then used in downstream statistical analyses, e. g. differential expression analysis. Because the multivariable regression models are able to correct for the abundance of the labeled peptide that appear as an unlabeled peptide due to the inability to exchange the natural C-terminal oxygen for the heavy isotope, they are particularly advantageous for a two-step digestion/labeling procedure. We discuss how estimates from the regression model are used to quantify the variability of the estimated abundance measures for the paired samples. Although discussed in the context of O-16/O-18 stable-isotope labeled data, the multivariable regression models are generalizable to other stable-isotope labeled technologies.
机译:动机:在全局蛋白质组扫描中使用稳定的同位素,将一个样品中的标记分子与另一样品中的未标记分子合并,然后进行质谱分析。稳定同位素方法论利用了以下事实:不同的稳定同位素组成的相同分子在质谱仪中被区分,并在质谱图中表示为具有已知质量偏移的独特同位素簇。我们为O-16 / O-18稳定同位素标记的数据描述了两个多变量线性回归模型,这些模型共同为来自同一肽段的解析同位素簇对建模,并量化了两个生物样品中每个样品中的丰度,同时考虑了肽段-重同位素的具体掺入率。然后,将来自两个生物样品的每种肽的丰度测量值用于下游统计分析,例如G。差异表达分析。由于多元回归模型能够校正由于未将天然C末端氧交换为重同位素而导致未标记肽段出现的未标记肽段的丰度,因此对于两步消化/标签程序。我们讨论了如何使用回归模型的估计值来量化配对样本的估计丰度测度的变异性。尽管在O-16 / O-18稳定同位素标记的数据中进行了讨论,但多变量回归模型可以推广到其他稳定同位素标记的技术。

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