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首页> 外文期刊>Journal of proteome research >A Peptide-Level Fully Annotated Data Set for Quantitative Evaluation of Precursor-Aware Mass Spectrometry Data Processing Algorithms
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A Peptide-Level Fully Annotated Data Set for Quantitative Evaluation of Precursor-Aware Mass Spectrometry Data Processing Algorithms

机译:用于定量评估前体感知质谱数据处理算法的肽级全注释数据集

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摘要

Modern label-free quantitative mass spectrometry workflows are complex experimental chains for devising the composition of biological samples. With benchtop and in silico experimental steps that each have a significant effect on the accuracy, coverage, and statistical significance of the study result, it is crucial to understand the efficacy and biases of each protocol decision. Although many studies have been conducted on wet lab experimental protocols, postacquisition data processing methods have not been adequately evaluated in large part due to a lack of available ground truth data. In this study, we provide a novel ground truth data set for mass spectrometry data analysis at the precursor (MS1) signal level comprised of isolated peptide signals from UPS2, a popular complex standard for proteomics analysis, requiring more than 1000 h of manual curation. The data set consists of more than 62 million points with 1,294,008 grouped into 57,518 extracted ion chromatograms and those grouped into 14,111 isotopic envelopes. This data set can be used to evaluate many aspects of mass spectrometry data processing, including precursor mapping and signal extraction algorithms.
机译:现代无标签定量质谱工作流是复杂的实验链,用于设计生物样品的组成。通过台式和硅的实验步骤,各自对研究结果的准确性,覆盖率和统计学意义具有显着影响,这对于了解每个协议决定的功效和偏差至关重要。虽然在湿实验室实验方案上进行了许多研究,但由于缺乏可用的地面真理数据,尚未在很大程度上进行足够的评估数据处理方法。在这项研究中,我们提供了一种新的地基真理数据,用于在来自UPS2的分离的肽信号的前体(MS1)信号水平下的质谱数据分析,该方法2是蛋白质组学分析的普遍的复合标准,需要超过1000小时的手动策策。数据集包括超过6200万点,其中1,294,008分为57,518个提取的离子色谱图,分为14,111个同位素包络。该数据集可用于评估质谱数据处理的许多方面,包括前体映射和信号提取算法。

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