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High-throughput peptide quantification using mTRAQ reagent triplex

机译:使用MTRAQ试剂三种方式进行高通量肽定量

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Background: Protein quantification is an essential step in many proteomics experiments. A number of labeling approaches have been proposed and adopted in mass spectrometry (MS) based relative quantification. The mTRAQ, one of the stable isotope labeling methods, is amine-specific and available in triplex format, so that the sample throughput could be doubled when compared with duplex reagents. Methods and results: Here we propose a novel data analysis algorithm for peptide quantification in triplex mTRAQ experiments. It improved the accuracy of quantification in two features. First, it identified and separated triplex isotopic clusters of a peptide in each full MS scan. We designed a schematic model of triplex overlapping isotopic clusters, and separated triplex isotopic clusters by solving cubic equations, which are deduced from the schematic model. Second, it automatically determined the elution areas of peptides. Some peptides have similar atomic masses and elution times, so their elution areascan have overlaps. Our algorithm successfully identified the overlaps and found accurate elution areas. We validated our algorithm using standard protein mixture experiments. Conclusions: We showed that our algorithm was able to accurately quantify peptides in triplex mTRAQ experiments. Its software implementation is compatible with Trans-Proteomic Pipeline (TPP), and thus enables high-throughput analysis of proteomics data.
机译:背景:蛋白质量化是许多蛋白质组学实验中的重要步骤。已经提出了许多标记方法并采用质谱法(MS)的相对量化。 MTraq是稳定同位素标记方法之一,是胺特异性的,以三相流形式提供,使得与双相试剂相比,样品通量可能会加倍。方法和结果:在此提出了一种新的三重PTRAQ实验中的肽定量数据分析算法。它提高了两个特征的定量精度。首先,在每个全MS扫描中鉴定并分离肽的三链同位素簇。我们设计了通过求解从示意图推导的立方方程来分离的三重同位素簇的示意图。其次,它自动确定肽的洗脱区域。一些肽具有相似的原子块和洗脱时间,因此它们的洗脱区域具有重叠。我们的算法成功地确定了重叠并找到了精确的洗脱区域。我们使用标准蛋白质混合物实验验证了我们的算法。结论:我们表明,我们的算法能够准确地量化三重PTRAQ实验中的肽。其软件实现与反式蛋白质组学管道(TPP)兼容,从而实现了蛋白质组学数据的高通量分析。

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