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Application of survival analysis methodology to the quantitative analysis of LC-MS proteomics data

机译:存活分析方法的应用在LC-MS蛋白质组学数据的定量分析中的应用

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Protein abundance in quantitative proteomics is often based on observed spectral features derived from LC-MS experiments. Peak intensities are largely non-Normal in distribution. Furthermore, LC-MS data frequently have large proportions of missing peak intensities due to censoring mechanisms on low-abundance spectral features. Recognizing that the observed peak intensities detected with the LC-MS method are all positive, skewed and often left-censored, we propose using survival methodology to carry out differential expression analysis of proteins. Various standard statistical techniques including non-parametric tests such as the Kolmogorov-Smirnov and Wilcoxon-Mann-Whitney rank sum tests, and the parametric survival model, accelerated failure time model with the Weibull distribution were used to detect any differentially expressed proteins. The statistical operating characteristics of each method are explored using both real and simulated data set.
机译:定量蛋白质组学中的蛋白质丰富通常基于来自LC-MS实验的观察到的光谱特征。峰值强度在很大程度上是在分布中非正常的。此外,LC-MS数据通常具有大量比较低丰度光谱特征的污染机制因缺失的峰值强度。识别出用LC-MS方法检测到的观察到的峰值强度是阳性,偏斜的并且经常留下缩小的,我们建议使用存活方法进行蛋白质的差异表达分析。各种标准统计技术,包括非参数测试,例如Kolmogorov-Smirnov和Wilcoxon-Mann-Whitney等级和测试,以及与威布尔分布的加速存活模型加速失效时间模型用于检测任何差异表达的蛋白质。使用真实和模拟数据集探索每个方法的统计操作特性。

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