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Machine Learning of Global Phosphoproteomic Profiles Enables Discrimination of Direct versus Indirect Kinase Substrates

机译:全球磷酸蛋白组图谱的机器学习可区分直接激酶底物和间接激酶底物

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摘要

Mass spectrometry allows quantification of tens of thousands of phosphorylation sites from minute amounts of cellular material. Despite this wealth of information, our understanding of phosphorylation-based signaling is limited, in part because it is not possible to deconvolute substrate phosphorylation that is directly mediated by a particular kinase versus phosphorylation that is mediated by downstream kinases. Here, we describe a framework for assignment of direct in vivo kinase substrates using a combination of selective chemical inhibition, quantitative phosphoproteomics, and machine learning techniques. Our workflow allows classification of phosphorylation events following inhibition of an analog-sensitive kinase into kinase-independent effects of the inhibitor, direct effects on cognate substrates, and indirect effects mediated by downstream kinases or phosphatases. We applied this method to identify many direct targets of Cdc28 and Snf1 kinases in the budding yeast Saccharomyces cerevisiae. Global phosphoproteome analysis of acute time-series demonstrated that dephosphorylation of direct kinase substrates occurs more rapidly compared with indirect substrates, both after inhibitor treatment and under a physiological nutrient shift in wt cells. Mutagenesis experiments revealed a high proportion of functionally relevant phosphorylation sites on Snf1 targets. For example, Snf1 itself was inhibited through autophosphorylation on Ser391 and new phosphosites were discovered that modulate the activity of the Reg1 regulatory subunit of the Glc7 phosphatase and the Gal83 β-subunit of SNF1 complex. This methodology applies to any kinase for which a functional analog sensitive version can be constructed to facilitate the dissection of the global phosphorylation network.
机译:质谱可以从微量的细胞物质中定量分析数万个磷酸化位点。尽管有大量的信息,但是我们对基于磷酸化的信号传导的理解是有限的,部分是因为不可能使由特定激酶直接介导的底物磷酸化与由下游激酶介导的磷酸化解卷积。在这里,我们描述了使用选择性化学抑制,定量磷酸化蛋白质组学和机器学习技术相结合的直接体内激酶底物分配的框架。我们的工作流程可将抑制类似物敏感的激酶后的磷酸化事件分类为抑制剂的激酶独立作用,对同源底物的直接作用以及下游激酶或磷酸酶介导的间接作用。我们应用了这种方法来鉴定出芽酵母中的Cdc28和Snf1激酶的许多直接靶标。急性时间序列的全球磷酸化蛋白质组学分析表明,与间接底物相比,直接激酶底物的去磷酸化作用比间接底物更快,在抑制剂处理后以及在wt细胞​​中发生生理营养改变时均如此。诱变实验显示,Snf1靶标上功能相关的磷酸化位点比例很高。例如,Snf1本身通过在Ser 391 上的自磷酸化而受到抑制,并且发现了新的磷酸位点,该位点可调节Glc7磷酸酶的Reg1调节亚基和SNF1复合体的Gal83β亚基的活性。该方法学适用于可以构建功能类似物敏感版本以促进解剖全局磷酸化网络的任何激酶。

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