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MAP: model-based analysis of proteomic data to detect proteins with significant abundance changes

机译:MAP:蛋白质组数据的基于模型的分析以检测丰度变化显着的蛋白质

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摘要

Isotope-labeling-based mass spectrometry (MS) is widely used in quantitative proteomic studies. With this technique, the relative abundance of thousands of proteins can be efficiently profiled in parallel, greatly facilitating the detection of proteins differentially expressed across samples. However, this task remains computationally challenging. Here we present a new approach, termed Model-based Analysis of Proteomic data (MAP), for this task. Unlike many existing methods, MAP does not require technical replicates to model technical and systematic errors, and instead utilizes a novel step-by-step regression analysis to directly assess the significance of observed protein abundance changes. We applied MAP to compare the proteomic profiles of undifferentiated and differentiated mouse embryonic stem cells (mESCs), and found it has superior performance compared with existing tools in detecting proteins differentially expressed during mESC differentiation. A web-based application of MAP is provided for online data processing at .
机译:基于同位素标记的质谱(MS)被广泛用于定量蛋白质组学研究中。使用这种技术,可以有效地并行分析成千上万种蛋白质的相对丰度,极大地方便了检测样品中差异表达的蛋白质。但是,此任务在计算上仍然具有挑战性。在这里,我们为这项任务提出了一种新方法,称为基于模型的蛋白质组数据分析(MAP)。与许多现有方法不同,MAP不需要技术复制来对技术和系统错误进行建模,而是利用新颖的逐步回归分析来直接评估观察到的蛋白质丰度变化的重要性。我们应用MAP来比较未分化和分化的小鼠胚胎干细胞(mESCs)的蛋白质组学特征,发现与现有工具相比,它在检测mESC分化过程中差异表达的蛋白质方面具有优越的性能。提供了一个基于Web的MAP应用程序,用于在处进行在线数据处理。

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