A Point Cloud Graph Neural Network for Protein–Ligand Binding Site Prediction

Author:

Zhao Yanpeng1ORCID,He Song1ORCID,Xing Yuting2,Li Mengfan1ORCID,Cao Yang1ORCID,Wang Xuanze1,Zhao Dongsheng1,Bo Xiaochen1

Affiliation:

1. Academy of Military Medical Sciences, Beijing 100850, China

2. Defense Innovation Institute, Beijing 100071, China

Abstract

Predicting protein–ligand binding sites is an integral part of structural biology and drug design. A comprehensive understanding of these binding sites is essential for advancing drug innovation, elucidating mechanisms of biological function, and exploring the nature of disease. However, accurately identifying protein–ligand binding sites remains a challenging task. To address this, we propose PGpocket, a geometric deep learning-based framework to improve protein–ligand binding site prediction. Initially, the protein surface is converted into a point cloud, and then the geometric and chemical properties of each point are calculated. Subsequently, the point cloud graph is constructed based on the inter-point distances, and the point cloud graph neural network (GNN) is applied to extract and analyze the protein surface information to predict potential binding sites. PGpocket is trained on the scPDB dataset, and its performance is verified on two independent test sets, Coach420 and HOLO4K. The results show that PGpocket achieves a 58% success rate on the Coach420 dataset and a 56% success rate on the HOLO4K dataset. These results surpass competing algorithms, demonstrating PGpocket’s advancement and practicality for protein–ligand binding site prediction.

Funder

National Key R&D Program of China

National Natural Science Foundation of China

Publisher

MDPI AG

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