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Knowledge-Based Analysis for Detecting Key Signaling Events from Time-Series Phosphoproteomics Data

机译:基于知识的分析可从时序蛋白质组学数据中检测关键信号事件

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摘要

Cell signaling underlies transcription/epigenetic control of a vast majority of cell-fate decisions. A key goal in cell signaling studies is to identify the set of kinases that underlie key signaling events. In a typical phosphoproteomics study, phosphorylation sites (substrates) of active kinases are quantified proteome-wide. By analyzing the activities of phosphorylation sites over a time-course, the temporal dynamics of signaling cascades can be elucidated. Since many substrates of a given kinase have similar temporal kinetics, clustering phosphorylation sites into distinctive clusters can facilitate identification of their respective kinases. Here we present a knowledge-based CLUster Evaluation (CLUE) approach for identifying the most informative partitioning of a given temporal phosphoproteomics data. Our approach utilizes prior knowledge, annotated kinase-substrate relationships mined from literature and curated databases, to first generate biologically meaningful partitioning of the phosphorylation sites and then determine key kinases associated with each cluster. We demonstrate the utility of the proposed approach on two time-series phosphoproteomics datasets and identify key kinases associated with human embryonic stem cell differentiation and insulin signaling pathway. The proposed approach will be a valuable resource in the identification and characterizing of signaling networks from phosphoproteomics data.
机译:细胞信号传导是绝大多数细胞命运决定的转录/表观遗传控制的基础。细胞信号传导研究的关键目标是确定构成关键信号传导事件基础的激酶。在典型的磷酸蛋白质组学研究中,活性激酶的磷酸化位点(底物)在整个蛋白质组范围内进行定量。通过分析一段时间内的磷酸化位点的活性,可以阐明信号级联的时间动态。由于给定激酶的许多底物具有相似的时间动力学,因此将磷酸化位点聚集成独特的簇可以促进其各自激酶的鉴定。在这里,我们提出了一种基于知识的聚类评估(CLUE)方法,用于识别给定的时间磷酸化蛋白质组学数据的信息最丰富的分区。我们的方法利用了先验知识,从文献和策划的数据库中提取的带注释的激酶与底物的关系,首先生成磷酸化位点的生物学上有意义的分区,然后确定与每个簇相关的关键激酶。我们在两个时间序列的磷酸蛋白质组学数据集上证明了该方法的实用性,并确定了与人类胚胎干细胞分化和胰岛素信号通路相关的关键激酶。所提出的方法将是从磷酸蛋白质组学数据鉴定和表征信号网络的宝贵资源。

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