European Molecular Biology Laboratory-European Bioinformatics Institute, Hinxton CB10 1SD, UK.
Centre for Genomics and Computational Biology, Queen Mary University of London, London EC1M 6BQ, UK.
Cell Syst. 2020 May 20;10(5):384-396.e9. doi: 10.1016/j.cels.2020.04.005.
Complex networks of regulatory relationships between protein kinases comprise a major component of intracellular signaling. Although many kinase-kinase regulatory relationships have been described in detail, these tend to be limited to well-studied kinases whereas the majority of possible relationships remains unexplored. Here, we implement a data-driven, supervised machine learning method to predict human kinase-kinase regulatory relationships and whether they have activating or inhibiting effects. We incorporate high-throughput data, kinase specificity profiles, and structural information to produce our predictions. The results successfully recapitulate previously annotated regulatory relationships and can reconstruct known signaling pathways from the ground up. The full network of predictions is relatively sparse, with the vast majority of relationships assigned low probabilities. However, it nevertheless suggests denser modes of inter-kinase regulation than normally considered in intracellular signaling research. A record of this paper's transparent peer review process is included in the Supplemental Information.
蛋白激酶之间的调控关系是细胞内信号传递的主要组成部分。虽然许多激酶-激酶的调控关系已经被详细描述,但这些关系往往仅限于研究充分的激酶,而大多数可能的关系仍然没有被探索。在这里,我们采用数据驱动的、有监督的机器学习方法来预测人类激酶-激酶的调控关系及其是否具有激活或抑制作用。我们整合了高通量数据、激酶特异性谱和结构信息来进行预测。研究结果成功地再现了先前注释的调控关系,并能够从头开始重建已知的信号通路。预测的完整网络相对稀疏,绝大多数关系的概率较低。然而,它仍然表明激酶之间的调控比细胞内信号研究中通常考虑的更为密集。本文的透明同行评审过程记录包含在补充信息中。