配体(生物化学)
人工智能
化学
深度学习
计算机科学
计算生物学
生物物理学
结晶学
生物系统
模式识别(心理学)
生物化学
生物
受体
作者
Jiyun Han,Shizhuo Zhang,Mingming Guan,Qiuyu Li,Xin Gao,Juntao Liu
标识
DOI:10.1016/j.str.2024.10.011
摘要
The identification of protein binding residues is essential for understanding their functions in vivo. However, it remains a computational challenge to accurately identify binding sites due to the lack of known residue binding patterns. Local residue spatial distribution and its interactive biophysical environment both determine binding patterns. Previous methods could not capture both information simultaneously, resulting in unsatisfactory performance. Here, we present GeoNet, an interpretable geometric deep learning model for predicting DNA, RNA, and protein binding sites by learning the latent residue binding patterns. GeoNet achieves this by introducing a coordinate-free geometric representation to characterize local residue distributions and generating an eigenspace to depict local interactive biophysical environments. Evaluation shows that GeoNet is superior compared to other leading predictors and it shows a strong interpretability of learned representations. We present three test cases, where interaction interfaces were successfully identified with GeoNet.
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