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Enhancing kinase-inhibitor activity and selectivity prediction through contrastive learning

Yanan Tian, Ruiqiang Lu, Xiaoqing Gong, Wei Zhao, Yuquan Li, Xiaorui Wang, Xinming Jia, Qin Li, Yuwei Yang, Henry H. Y. Tong, Joel P. Arrais, Xiaojun Yao, Huanxiang Liu

2025Nature Communications6 citationsDOIOpen Access PDF

Abstract

Developing selective kinase inhibitors is challenging due to the conserved kinase structures and costly kinome profiling experiments, highlighting the need for accurate prediction of kinase-inhibitor affinity and specificity. Here we present MMCLKin, an attention consistency-guided contrastive learning framework that integrates geometric graph and sequence networks with multi-head attention and multimodal, multiscale contrastive learning to accurately and interpretably predict kinase-inhibitor activity and selectivity. MMCLKin outperforms existing methods across two 3D kinase-drug datasets and demonstrates strong generalizability on ten diverse protein-drug and one mutation-aware datasets, and effectively screens on both known and unknown kinase structures. In-depth analysis of attention coefficients reveals that MMCLKin can identify key residues and molecular functional groups critical for kinase-inhibitor binding. Additionally, ADP-Glo assays confirm that five out of 20 MMCLKin-identified compounds inhibit the pathogenic LRRK2 G2019S mutant, with four exhibiting nanomolar-level potency. Collectively, MMCLKin represents a useful tool for discovering potent and selective kinase inhibitors.

Topics & Concepts

KinomeComputer scienceArtificial intelligenceGeneralizability theoryComputational biologyProfiling (computer programming)Machine learningGraphKinaseKey (lock)Supervised learningNatural language processingPattern recognition (psychology)Computational modelDeep learningTraining setComputational Drug Discovery MethodsMelanoma and MAPK PathwaysBioinformatics and Genomic Networks