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A statistical framework for protein quantitation in bottom-up MS-based proteomics

机译:自下而上的基于MS的蛋白质组学中蛋白质定量的统计框架

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Motivation: Quantitative mass spectrometry-based proteomics requires protein-level estimates and associated confidence measures. Challenges include the presence of low quality or incorrectly identified peptides and informative missingness. Furthermore, models are required for rolling peptide-level information up to the protein level.Results: We present a statistical model that carefully accounts for informative missingness in peak intensities and allows unbiased, model-based, protein-level estimation and inference. The model is applicable to both label-based and label-free quantitation experiments. We also provide automated, model-based, algorithms for filtering of proteins and peptides as well as imputation of missing values. Two LC/MS datasets are used to illustrate the methods. In simulation studies, our methods are shown to achieve substantially more discoveries than standard alternatives.Availability: The software has been made available in the open-source proteomics platform DAnTE (http://omics.pnl.gov/software/).Contact: adabneytat.tamu.eduSupplementary information: Supplementary data are available at Bioinformatics online.
机译:动机:基于质谱的定量蛋白质组学需要蛋白质水平的估计和相关的置信度。挑战包括质量低劣或鉴定不正确的肽以及信息缺失。此外,还需要模型来将肽水平的信息滚动到蛋白质水平。结果:我们提供了一个统计模型,该模型仔细考虑了峰强度中的信息缺失,并允许无偏倚,基于模型的蛋白质水平估计和推断。该模型适用于基于标记和无标记的定量实验。我们还提供基于模型的自动化算法,用于过滤蛋白质和多肽以及估算缺失值。使用两个LC / MS数据集来说明这些方法。在仿真研究中,我们的方法被证明比标准方法具有更多的发现。可用性:该软件已在开源蛋白质组学平台DAnTE(http://omics.pnl.gov/software/)中提供。 adabneytat.tamu.edu补充信息:补充数据可从Bioinformatics在线获得。

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