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Semi-inductive dataset construction and framework optimization for practical drug target interaction prediction with ScopeDTI

Nature Communications. 2025-12; 
Yigang Chen; Xiang Ji; Ziyue Zhang; Zihao Zhu; Yuming Zhou; Chang Su; Yang-Chi-Dung Lin; Hsi-Yuan Huang; Kangping Wei; Yi Lai; Ke Chen; Xingqiao Lin; Yangyi Zhang; Jiehui Fu; Yixian Huang; Shidong Cui; Shih-Chung Yen; Tao Zhang; Arieh Warshel; Hsien-Da Huang
Products/Services Used Details Operation
Protein Electrophoresis and Western min, then 110 V for 40 min). Proteins were transferred onto PVDF membranes (Millipore, cat. no. ISEQ00010) using a rapid transfer apparatus (eBlot L1, GenScript, cat. no. L00686C) after membrane activation with methanol and equilibration buffer (Genescript, cat. no. L00734C). Membranes were blocked with QuickBlock Get A Quote

摘要

Deep learning-based drug-target interaction (DTI) prediction methods have demonstrated strong performance; however, real-world applicability remains constrained by limited data diversity and modeling complexity. To address these challenges, we propose SCOPE-DTI, a unified framework combining a large-scale, balanced semi-inductive human DTI dataset with advanced deep learning modeling. SCOPE-DTI is constructed from 13 public repositories and expands data volume by up to 100-fold compared to common benchmarks such as the Human dataset. The SCOPE model integrates three-dimensional protein and compound representations, graph neural networks, and bilinear attention mechanisms to effectively capture cross domain inte... More

关键词

Target identification, Computational models, Data integration, Machine learning, Virtual drug screening