Graph Neural Networks have emerged as a powerful paradigm for artificial intelligence driven drug discovery, offering molecular representation learning that surpasses many conventional approaches. Traditional experimental pipelines are both time and resource-intensive, modern computational strategies-particularly those that integrate curated libraries of FDA-approved drugs-can accelerate target identification and candidate prioritization. In this work we introduce a dual-branch GNN architecture that synergistically combines Graph Convolutional Neural Networks, the GraphSage framework, and Jumping-Knowledge modules. This network jointly encodes structural topology and functional attributes, generating enriched embeddings for molecular graphs. We evaluated the proposed model against 45 state-of-the-art drug and target encoding baselines across well known Davis and KIBA datasets.The Proposed Model demonstrates a quantitative improvement over the GCN model, achieving a reduction in MSE (33.98 vs. 35.24), a slightly higher Pearson index (76.49 vs. 76.19), and a better Concordance index (85.41 vs. 84.41), indicating superior performance in terms of both prediction accuracy and ranking, demonstrating superior accuracy and robustness for candidate screening and establishing a new reference point for cheminformatics tasks. To illustrate practical impact, we performed a case study on COVID-19 drug repurposing: the top-ranked drugs have been also found potential drugs including Imunovir and Remdesivir from existing antiviral drugs.
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Khushnood Abbas
Zhoukou Normal University
Chen Hao
Nanjing University of Information Science and Technology
Dong Shi
Zhoukou Normal University
Scientific Reports
South China University of Technology
University of Electronic Science and Technology of China
Chongqing University
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Abbas et al. (Mon,) studied this question.
synapsesocial.com/papers/69bb9212496e729e6297f530 — DOI: https://doi.org/10.1038/s41598-026-43782-4
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