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arXiv 提交日期: 2026-02-05
📄 Abstract - Phi-Former: A Pairwise Hierarchical Approach for Compound-Protein Interactions Prediction

Drug discovery remains time-consuming, labor-intensive, and expensive, often requiring years and substantial investment per drug candidate. Predicting compound-protein interactions (CPIs) is a critical component in this process, enabling the identification of molecular interactions between drug candidates and target proteins. Recent deep learning methods have successfully modeled CPIs at the atomic level, achieving improved efficiency and accuracy over traditional energy-based approaches. However, these models do not always align with chemical realities, as molecular fragments (motifs or functional groups) typically serve as the primary units of biological recognition and binding. In this paper, we propose Phi-former, a pairwise hierarchical interaction representation learning method that addresses this gap by incorporating the biological role of motifs in CPIs. Phi-former represents compounds and proteins hierarchically and employs a pairwise pre-training framework to model interactions systematically across atom-atom, motif-motif, and atom-motif levels, reflecting how biological systems recognize molecular partners. We design intra-level and inter-level learning pipelines that make different interaction levels mutually beneficial. Experimental results demonstrate that Phi-former achieves superior performance on CPI-related tasks. A case study shows that our method accurately identifies specific atoms or motifs activated in CPIs, providing interpretable model explanations. These insights may guide rational drug design and support precision medicine applications.

顶级标签: medical machine learning model training
详细标签: compound-protein interaction drug discovery hierarchical representation interpretable ai pairwise pre-training 或 搜索:

Phi-Former:一种用于预测化合物-蛋白质相互作用的成对分层方法 / Phi-Former: A Pairwise Hierarchical Approach for Compound-Protein Interactions Prediction


1️⃣ 一句话总结

这篇论文提出了一种名为Phi-Former的新方法,它通过分层建模原子和分子片段(功能基团)之间的相互作用,来更符合生物实际地预测药物候选分子与靶蛋白之间的相互作用,从而提升预测准确性和可解释性,助力药物研发。

源自 arXiv: 2602.05479