Translational Research Exchange @ Exeter, University of Exeter, Exeter, United Kingdom.
PLoS Comput Biol. 2022 May 13;18(5):e1010110. doi: 10.1371/journal.pcbi.1010110. eCollection 2022 May.
Phosphoproteomic experiments routinely observe thousands of phosphorylation sites. To understand the intracellular signaling processes that generated this data, one or more causal protein kinases must be assigned to each phosphosite. However, limited knowledge of kinase specificity typically restricts assignments to a small subset of a kinome. Starting from a statistical model of a high-throughput, in vitro kinase-substrate assay, I have developed an approach to high-coverage, multi-label kinase-substrate assignment called IV-KAPhE ("In vivo-Kinase Assignment for Phosphorylation Evidence"). Tested on human data, IV-KAPhE outperforms other methods of similar scope. Such computational methods generally predict a densely connected kinase-substrate network, with most sites targeted by multiple kinases, pointing either to unaccounted-for biochemical constraints or significant cross-talk and signaling redundancy. I show that such predictions can potentially identify biased kinase-site misannotations within families of closely related kinase isozymes and they provide a robust basis for kinase activity analysis.
磷酸化蛋白质组学实验通常会观察到数千个磷酸化位点。为了理解产生这些数据的细胞内信号转导过程,必须将一个或多个因果蛋白激酶分配给每个磷酸化位点。然而,激酶特异性的知识有限通常将分配限制在激酶组的一小部分。从高通量、体外激酶-底物测定的统计模型出发,我开发了一种称为 IV-KAPhE(“基于磷酸化证据的体内激酶分配”)的高覆盖率、多标签激酶-底物分配方法。在人体数据上的测试表明,IV-KAPhE 优于其他具有类似范围的方法。此类计算方法通常预测出一个密集连接的激酶-底物网络,其中大多数位点都被多个激酶靶向,这要么指向未被考虑的生化限制,要么指向显著的串扰和信号冗余。我表明,这些预测可以潜在地识别出密切相关的激酶同工酶家族中具有偏向性的激酶-位点错误注释,并且为激酶活性分析提供了一个稳健的基础。