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Experimental Null Method to Guide the Development of Technical Procedures and to Control False-Positive Discovery in Quantitative Proteomics

机译:实验空方法用于指导技术程序的开发并控制定量蛋白质组学中的假阳性发现

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摘要

Comprehensive and accurate evaluation of data quality and false-positive biomarker discovery is critical to direct the method development/optimization for quantitative proteomics, which nonetheless remains challenging largely due to the high complexity and unique features of proteomic data. Here we describe an experimental null (EN) method to address this need. Because the method experimentally measures the null distribution (either technical or biological replicates) using the same proteomic samples, the same procedures and the same batch as the case-vs-contol experiment, it correctly reflects the collective effects of technical variability (e.g., variation/bias in sample preparation, LC–MS analysis, and data processing) and project-specific features (e.g., characteristics of the proteome and biological variation) on the performances of quantitative analysis. To show a proof of concept, we employed the EN method to assess the quantitative accuracy and precision and the ability to quantify subtle ratio changes between groups using different experimental and data-processing approaches and in various cellular and tissue proteomes. It was found that choices of quantitative features, sample size, experimental design, data-processing strategies, and quality of chromatographic separation can profoundly affect quantitative precision and accuracy of label-free quantification. The EN method was also demonstrated as a practical tool to determine the optimal experimental parameters and rational ratio cutoff for reliable protein quantification in specific proteomic experiments, for example, to identify the necessary number of technical/biological replicates per group that affords sufficient power for discovery. Furthermore, we assessed the ability of EN method to estimate levels of false-positives in the discovery of altered proteins, using two concocted sample sets mimicking proteomic profiling using technical and biological replicates, respectively, where the true-positivesegatives are known and span a wide concentration range. It was observed that the EN method correctly reflects the null distribution in a proteomic system and accurately measures false altered proteins discovery rate (FADR). In summary, the EN method provides a straightforward, practical, and accurate alternative to statistics-based approaches for the development and evaluation of proteomic experiments and can be universally adapted to various types of quantitative techniques.
机译:全面,准确的数据质量评估和假阳性生物标志物发现对于指导定量蛋白质组学方法的开发/优化至关重要,尽管如此,由于蛋白质组学数据的高度复杂性和独特性,在很大程度上仍具有挑战性。在这里,我们描述了一种实验性的null(EN)方法来解决这一需求。因为该方法使用与案例-病例-对照实验相同的蛋白质组学样品,相同的程序和相同的批次,通过实验测量了无效分布(技术或生物学重复),所以它可以正确反映技术可变性(例如变异)的集体影响样品制备,LC-MS分析和数据处理方面的偏见/偏见以及定量分析性能方面的项目特定特征(例如蛋白质组学特征和生物学变异)。为了显示概念验证,我们使用EN方法评估定量准确性和精确度,以及使用不同的实验和数据处理方法以及在各种细胞和组织蛋白质组中量化组之间细微比率变化的能力。发现定量特征,样品大小,实验设计,数据处理策略和色谱分离质量的选择会严重影响定量精度和无标记定量的准确性。还证明了EN方法是确定特定蛋白质组实验中可靠的蛋白质定量的最佳实验参数和合理比率截止值的实用工具,例如,确定每组必要的技术/生物学复制品数量,以便为发现提供足够的能力。此外,我们评估了EN方法估计变异蛋白发现中假阳性水平的能力,使用两个炮制样本集,分别模拟了使用技术和生物学重复进行的蛋白质组学分析,其中真实阳性/阴性的已知和跨度浓度范围广。观察到EN方法正确反映了蛋白质组学系统中的无效分布,并准确测量了错误的蛋白质发现错误率(FADR)。总之,EN方法为蛋白质组学实验的开发和评估提供了一种基于统计的方法的直接,实用和准确的替代方法,并且可以普遍适用于各种类型的定量技术。

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