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An assessment of false discovery rates and statistical significance in label-free quantitative proteomics with combined filters

机译:使用组合过滤器评估无标签定量蛋白质组学中的错误发现率和统计学意义

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摘要

BackgroundMany studies have provided algorithms or methods to assess a statistical significance in quantitative proteomics when multiple replicates for a protein sample and a LC/MS analysis are available. But, confidence is still lacking in using datasets for a biological interpretation without protein sample replicates. Although a fold-change is a conventional threshold that can be used when there are no sample replicates, it does not provide an assessment of statistical significance such as a false discovery rate (FDR) which is an important indicator of the reliability to identify differentially expressed proteins. In this work, we investigate whether differentially expressed proteins can be detected with a statistical significance from a pair of unlabeled protein samples without replicates and with only duplicate LC/MS injections per sample. A FDR is used to gauge the statistical significance of the differentially expressed proteins.
机译:背景技术许多研究提供了算法或方法,可用于蛋白质样品的多次重复和LC / MS分析时评估定量蛋白质组学的统计学意义。但是,在没有蛋白质样品重复的情况下使用数据集进行生物学解释仍缺乏信心。尽管倍数变化是常规的阈值,可以在没有样品重复的情况下使用,但是它无法提供统计意义的评估,例如错误发现率(FDR),这是识别差异表达的可靠性的重要指标蛋白质。在这项工作中,我们调查了是否可以从一对未标记的蛋白质样品中检测出差异表达的蛋白质,这些蛋白质具有统计学意义,而没有重复且每个样品仅重复LC / MS进样。 FDR用于评估差异表达蛋白质的统计学意义。

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