cs.AI updates on arXiv.org 10月07日
冷启动药物-靶点相互作用预测新框架
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本文提出ColdDTI,一种关注蛋白质多级结构进行冷启动药物-靶点相互作用预测的框架,通过层次注意力机制挖掘多级蛋白质结构与药物结构之间的相互作用,并在不同层级结构表示融合后进行预测,实验结果表明ColdDTI在冷启动设置下优于现有方法。

arXiv:2510.04126v1 Announce Type: cross Abstract: Cold-start drug-target interaction (DTI) prediction focuses on interaction between novel drugs and proteins. Previous methods typically learn transferable interaction patterns between structures of drug and proteins to tackle it. However, insight from proteomics suggest that protein have multi-level structures and they all influence the DTI. Existing works usually represent protein with only primary structures, limiting their ability to capture interactions involving higher-level structures. Inspired by this insight, we propose ColdDTI, a framework attending on protein multi-level structure for cold-start DTI prediction. We employ hierarchical attention mechanism to mine interaction between multi-level protein structures (from primary to quaternary) and drug structures at both local and global granularities. Then, we leverage mined interactions to fuse structure representations of different levels for final prediction. Our design captures biologically transferable priors, avoiding the risk of overfitting caused by excessive reliance on representation learning. Experiments on benchmark datasets demonstrate that ColdDTI consistently outperforms previous methods in cold-start settings.

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药物-靶点相互作用 冷启动预测 多级结构 层次注意力机制 结构表示融合
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