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PSEA-Quant: A Protein Set Enrichment Analysis on Label-Freeand Label-Based Protein Quantification Data

机译:PSEA-Quant:无标签的蛋白质集富集分析和基于标签的蛋白质定量数据

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摘要

The majority of large-scale proteomics quantification methods yield long lists of quantified proteins that are often difficult to interpret and poorly reproduced. Computational approaches are required to analyze such intricate quantitative proteomics data sets. We propose a statistical approach to computationally identify protein sets (e.g., Gene Ontology (GO) terms) that are significantly enriched with abundant proteins with reproducible quantification measurements across a set of replicates. To this end, we developed PSEA-Quant, a protein set enrichment analysis algorithm for label-free and label-based protein quantification data sets. It offers an alternative approach to classic GO analyses, models protein annotation biases, and allows the analysis of samples originating from a single condition, unlike analogous approaches such as GSEA and PSEA. We demonstrate that PSEA-Quant produces results complementary to GO analyses. We also show that PSEA-Quant provides valuable information about the biological processes involved in cystic fibrosis using label-free protein quantification of a cell line expressing a CFTR mutant. Finally,PSEA-Quant highlights the differences in the mechanisms taking placein the human, rat, and mouse brain frontal cortices based on tandemmass tag quantification. Our approach, which is available online,will thus improve the analysis of proteomics quantification data setsby providing meaningful biological insights.
机译:大多数大规模蛋白质组学定量方法会产生一长串的定量蛋白质,这些蛋白质通常难以解释且再现性很差。需要使用计算方法来分析这种复杂的定量蛋白质组学数据集。我们提出了一种统计方法,可通过计算方法识别蛋白质集(例如基因本体论(GO)术语),这些蛋白质集在一组重复中可重复的定量测量结果中大量富含丰富的蛋白质。为此,我们开发了PSEA-Quant,这是一种用于无标记和基于标记的蛋白质定量数据集的蛋白质集富集分析算法。与GSEA和PSEA等类似方法不同,它为经典的GO分析提供了另一种方法,可以对蛋白质注释偏差进行建模,并可以分析源自单一条件的样品。我们证明PSEA-Quant可以产生与GO分析互补的结果。我们还显示PSEA-Quant使用表达CFTR突变体的细胞系的无标记蛋白质定量,提供了有关囊性纤维化所涉及的生物学过程的有价值的信息。最后,PSEA-Quant着重介绍了发生机制的差异基于串联的人类,大鼠和小鼠大脑额叶皮质质量标签定量。我们的方法可以在线获得,因此将改善蛋白质组学定量数据集的分析通过提供有意义的生物学见解。

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