Identify compound-protein interaction with knowledge graph embedding of perturbation transcriptomics

Shengkun Ni, Xiangtai Kong,Yingying Zhang, Zhengyang Chen, Zhaokun Wang,Zunyun Fu, Ruifeng Huo, Xiaochu Tong,Ning Qu, Xiaolong Wu,Kun Wang, Wei Zhang,Runze Zhang, Zimei Zhang, Jiangshan Shi, Yitian Wang, Ruirui Yang,Xutong Li, Sulin Zhang,Mingyue Zheng

biorxiv(2024)

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摘要
The emergence of perturbation transcriptomics provides a new perspective and opportunity for drug discovery, but existing analysis methods suffer from inadequate performance and limited applicability. In this work, we present PertKGE, a method designed to improve compound-protein interaction with knowledge graph embedding of perturbation transcriptomics. PertKGE incorporates diverse regulatory elements and accounts for multi-level regulatory events within biological systems, leading to significant improvements compared to existing baselines in two critical “cold-start” settings: inferring binding targets for new compounds and conducting virtual ligand screening for new targets. We further demonstrate the pivotal role of incorporating multi- level regulatory events in alleviating dataset bias. Notably, it enables the identification of ectonucleotide pyrophosphatase/phosphodiesterase-1 as the target responsible for the unique anti- tumor immunotherapy effect of tankyrase inhibitor K-756, and the discovery of five novel hits targeting the emerging cancer therapeutic target, aldehyde dehydrogenase 1B1, with a remarkable hit rate of 10.2%. These findings highlight the potential of PertKGE to accelerate drug discovery by elucidating mechanisms of action and identifying novel therapeutic compounds. ### Competing Interest Statement The authors have declared no competing interest.
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