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A hierarchical statistical modeling approach to analyze proteomic isobaric tag for relative and absolute quantitation data

机译:用于相对和绝对定量数据分析蛋白质组同量异位标签的分层统计建模方法

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Motivation: Isobaric tag for relative and absolute quantitation (iTRAQ) is a widely used method in quantitative proteomics. A robust data analysis strategy is required to determine protein quantification reliability, i.e. changes due to biological regulation rather than technical variation, so that proteins that are differentially expressed can be identified. Methods: Samples were created by mixing 5, 10, 15 and 20 mu g Escherichia coli cell lysate with 100 mg of cell lysate from mouse, corresponding to expected relative fold changes of one for mouse proteins and from 0.25 to 4 for E. coli proteins. Relative quantification was carried out using eight channel isobaric tagging with iTRAQ reagent, and proteins were identified using a TripleTOF 5600 mass spectrometer. Technical variation inherent in this iTRAQ dataset was systematically investigated. Results: A hierarchical statistical model was developed to use quantitative information at peptide level and protein level simultaneously to estimate variation present in each individual peptide and protein. A novel data analysis strategy for iTRAQ, denoted in short as WHATraq, was subsequently proposed with its performance evaluated by the proportion of E. coli proteins that are successfully identified as differentially expressed. Compared with two benchmark data analysis strategies WHATraq was able to identify at least 62.8% more true positive proteins that are differentially expressed. Further validated using a biological iTRAQ dataset including multiple biological replicates from varied murine cell lines, WHATraq performed consistently and identified 375% more proteins as being differentially expressed among different cell lines than the other data analysis strategies.
机译:动机:相对定量和绝对定量的等压标记(iTRAQ)是定量蛋白质组学中广泛使用的方法。需要强大的数据分析策略来确定蛋白质定量的可靠性,即由于生物调节而不是技术变化引起的变化,以便可以鉴定差异表达的蛋白质。方法:通过将5、10、15和20μg大肠杆菌细胞裂解液与100 mg小鼠细胞裂解液混合,以制备样品,对应于小鼠蛋白质的预期相对倍数变化和大肠杆菌蛋白质从0.25到4的预期相对倍数变化。使用iTRAQ试剂的八通道等压标记进行相对定量,并使用TripleTOF 5600质谱仪鉴定蛋白质。系统研究了此iTRAQ数据集固有的技术差异。结果:建立了分级统计模型,以同时使用肽水平和蛋白质水平的定量信息来估计每个肽和蛋白质中存在的变异。随后提出了iTRAQ的新数据分析策略,简称为WHATraq,其性能通过成功鉴定为差异表达的大肠杆菌蛋白质的比例进行评估。与两种基准数据分析策略相比,WHATraq能够识别出至少62.8%的差异表达真实阳性蛋白。 WHATraq使用包含来自不同鼠类细胞系的多个生物学复制品的生物学iTRAQ数据集进行了进一步验证,与其他数据分析策略相比,WHATraq始终如一地执行并发现在不同细胞系中差异表达的蛋白质多了375%。

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