Issue 9, 2022

A knowledge graph representation learning approach to predict novel kinase–substrate interactions

Abstract

The human proteome contains a vast network of interacting kinases and substrates. Even though some kinases have proven to be immensely useful as therapeutic targets, a majority are still understudied. In this work, we present a novel knowledge graph representation learning approach to predict novel interaction partners for understudied kinases. Our approach uses a phosphoproteomic knowledge graph constructed by integrating data from iPTMnet, protein ontology, gene ontology and BioKG. The representations of kinases and substrates in this knowledge graph are learned by performing directed random walks on triples coupled with a modified SkipGram or CBOW model. These representations are then used as an input to a supervised classification model to predict novel interactions for understudied kinases. We also present a post-predictive analysis of the predicted interactions and an ablation study of the phosphoproteomic knowledge graph to gain an insight into the biology of the understudied kinases.

Graphical abstract: A knowledge graph representation learning approach to predict novel kinase–substrate interactions

Supplementary files

Article information

Article type
Research Article
Submitted
30 Dec 2021
Accepted
22 Jul 2022
First published
17 Aug 2022
This article is Open Access
Creative Commons BY-NC license

Mol. Omics, 2022,18, 853-864

A knowledge graph representation learning approach to predict novel kinase–substrate interactions

S. Gavali, K. Ross, C. Chen, J. Cowart and C. H. Wu, Mol. Omics, 2022, 18, 853 DOI: 10.1039/D1MO00521A

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