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Differential Plasma Glycoproteome of p19 ARF Skin Cancer Mouse Model Using the Corra Label-Free LC-MS Proteomics Platform

机译:使用无Corra标签的LC-MS蛋白质组学平台的p19 ARF皮肤癌小鼠模型的差异血浆糖蛋白组

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h2Abstract/h2 h3Introduction/h3 A proof-of-concept demonstration of the use of label-free quantitative glycoproteomics for biomarker discovery workflow is presented in this paper, using a mouse model for skin cancer as an example. h3Materials and Methods/h3 Blood plasma was collected from ten control mice and ten mice having a mutation in the p19supARF/sup gene, conferring them high propensity to develop skin cancer after carcinogen exposure. We enriched for N-glycosylated plasma proteins, ultimately generating deglycosylated forms of the tryptic peptides for liquid chromatography mass spectrometry (LC-MS) analyses. LC-MS runs for each sample were then performed with a view to identifying proteins that were differentially abundant between the two mouse populations. We then used a recently developed computational framework, Corra, to perform peak picking and alignment, and to compute the statistical significance of any observed changes in individual peptide abundances. Once determined, the most discriminating peptide features were then fragmented and identified by tandem mass spectrometry with the use of inclusion lists. h3Results and Discussions/h3 We assessed the identified proteins to see if there were sets of proteins indicative of specific biological processes that correlate with the presence of disease, and specifically cancer, according to their functional annotations. As expected for such sick animals, many of the proteins identified were related to host immune response. However, a significant number of proteins are also directly associated with processes linked to cancer development, including proteins related to the cell cycle, localization, transport, and cell death. Additional analysis of the same samples in profiling mode, and in triplicate, confirmed that replicate MS analysis of the same plasma sample generated less variation than that observed between plasma samples from different individuals, demonstrating that the reproducibility of the LC-MS platform was sufficient for this application. h3Conclusion/h3 These results thus show that an LC-MS-based workflow can be a useful tool for the generation of candidate proteins of interest as part of a disease biomarker discovery effort.
机译:>摘要 >简介本文针对皮肤癌的小鼠模型,提出了无标签定量糖蛋白组学用于生物标志物发现工作流程的概念验证。一个例子。 >材料和方法从十只对照小鼠和十只p19 ARF 基因突变的小鼠中收集血浆,这使它们在暴露于致癌物后极有可能患上皮肤癌。我们丰富了N-糖基化血浆蛋白,最终生成了胰蛋白酶解肽的去糖基化形式,用于液相色谱质谱(LC-MS)分析。然后针对每个样品进行LC-MS分析,以鉴定在两个小鼠群体之间差异丰富的蛋白质。然后,我们使用最近开发的计算框架Corra进行峰的挑选和比对,并计算出各个肽丰度中任何观察到的变化的统计显着性。一旦确定,然后将最能区分的肽特征片段化,并通过串联质谱法使用夹杂物列表进行鉴定。 >结果与讨论我们根据其功能注释评估了鉴定出的蛋白质,以查看是否存在指示与疾病(尤其是癌症)相关的特定生物过程的蛋白质。如对这种患病动物的预期,鉴定出的许多蛋白质与宿主免疫反应有关。但是,大量蛋白质也与与癌症发展有关的过程直接相关,包括与细胞周期,定位,转运和细胞死亡有关的蛋白质。对相同样品进行概要分析并且一式三份进行的其他分析证实,相同血浆样品的重复质谱分析产生的变化比不同个体血浆样品之间观察到的变化小,表明LC-MS平台的重现性足以这个应用程序。 >结论因此,这些结果表明,基于LC-MS的工作流程可能是有用的工具,可作为疾病生物标志物发现工作的一部分来生成感兴趣的候选蛋白。

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