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Efficient substructure feature encoding based on graph neural network blocks for drug-target interaction prediction

Affiliation
School of Computer Science ,Hangzhou Dianzi University ,Hangzhou ,China
Deng, Guojian;
Affiliation
Department of Interventional Vascular Surgery ,The Third Affiliated Hospital of Wenzhou Medical University ,Wenzhou ,China
Shi, Changsheng;
Affiliation
School of Computer Science ,Hangzhou Dianzi University ,Hangzhou ,China
Ge, Ruiquan;
Affiliation
Jacob School of Engineering ,University of California ,San Diego ,CA ,United States
Hu, Riqian;
Affiliation
Medical Big Data Laboratory ,Shenzhen Research Institute of Big Data ,Shenzhen ,China
Wang, Changmiao;
Affiliation
School of Computer Science ,Hangzhou Dianzi University ,Hangzhou ,China
Qin, Feiwei;
Affiliation
School of General Education ,Sanda University ,Shanghai ,China
Pan, Cheng;
Affiliation
School of Automotive and Transportation Engineering ,Shenzhen Polytechnic University ,Shenzhen ,China
Mao, Haixia;
Affiliation
Department of Gastroenterology ,Ruian People’s Hospital ,The Third Affiliated Hospital of Wenzhou Medical University ,Wenzhou ,China
Yang, Qing

Background Predicting drug-target interaction (DTI) is a crucial phase in drug discovery. The core of DTI prediction lies in appropriate representations learning of drug and target. Previous studies have confirmed the effectiveness of graph neural networks (GNNs) in drug compound feature encoding. However, these GNN-based methods do not effectively balance the local substructural features with the overall structural properties of the drug molecular graph. Methods In this study, we proposed a novel model named GNNBlockDTI to address the current challenges. We combined multiple layers of GNN as a GNNBlock unit to capture the hidden structural patterns from drug graph within local ranges. Based on the proposed GNNBlock, we introduced a feature enhancement strategy to re-encode the obtained structural features, and utilized gating units for redundant information filtering. To simulate the essence of DTI that only protein fragments in the binding pocket interact with drugs, we provided a local encoding strategy for target protein using variant convolutional networks. Results Experimental results on three benchmark datasets demonstrated that GNNBlockDTI is highly competitive compared to the state-of-the-art models. Moreover, the case study of drug candidates ranking against different targets affirms the practical effectiveness of GNNBlockDTI. The source code for this study is available at https://github.com/Ptexys/GNNBlockDTI .

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License Holder: Copyright © 2025 Deng, Shi, Ge, Hu, Wang, Qin, Pan, Mao and Yang.

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