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RIBAR and xRIBAR: methods for reproducible relative MS/MS-based label-free protein quantification

机译:RIBaR和xRIBaR:基于ms / ms的可重复标记的无标记蛋白质定量方法

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摘要

Mass spectrometry-driven proteomics is increasingly relying on quantitative analyses for biological discoveries. As a result, different methods and algorithms have been developed to perform relative or absolute quantification based on mass spectrometry data. One of the most popular quantification methods are the so-called label-free approaches, which require no special sample processing, and can even be applied retroactively to existing data sets. Of these label-free methods, the MS/MS-based approaches are most often applied, mainly because of their inherent simplicity as compared to MS-based methods. The main application of these approaches is the determination of relative protein amounts between different samples, expressed as protein ratios. However, as we demonstrate here, there are some issues with the reproducibility across replicates of these protein ratio sets obtained from the various, MS/MS-based label-free methods, indicating that the existing methods are not optimally robust. We therefore present two new Methods (called RIBAR and xRIBAR) that use the available MS/MS data more effectively, achieving increased robustness. Both the accuracy and the precision of our novel methods are analyzed and compared to the existing methods to illustrate the increased robustness of our new methods over existing ones.
机译:质谱驱动的蛋白质组学越来越依赖于定量分析来进行生物发现。结果,已经开发了不同的方法和算法以基于质谱数据执行相对或绝对定量。最受欢迎的量化方法之一是所谓的无标记方法,该方法不需要特殊的样品处理,甚至可以追溯应用于现有数据集。在这些无标签方法中,基于MS / MS的方法最常用,主要是因为与基于MS的方法相比,它们固有的简便性。这些方法的主要应用是确定不同样品之间的相对蛋白质含量,以蛋白质比例表示。但是,正如我们在此处论证的那样,从各种基于MS / MS的无标记方法获得的这些蛋白质比率集的复制品之间的可重复性存在一些问题,这表明现有方法并不是最理想的方法。因此,我们提出了两种新方法(称为RIBAR和xRIBAR),它们可以更有效地使用可用的MS / MS数据,从而提高了鲁棒性。分析了我们新方法的准确性和精确度,并将其与现有方法进行了比较,以说明我们的新方法相对于现有方法具有更高的鲁棒性。

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