SurfPro-NN: A 3D point cloud neural network for the scoring of protein-protein docking models based on surfaces features and protein language models.

Journal: Computational biology and chemistry
PMID:

Abstract

Protein-protein interactions (PPI) play a crucial role in numerous key biological processes, and the structure of protein complexes provides valuable clues for in-depth exploration of molecular-level biological processes. Protein-protein docking technology is widely used to simulate the spatial structure of proteins. However, there are still challenges in selecting candidate decoys that closely resemble the native structure from protein-protein docking simulations. In this study, we introduce a docking evaluation method based on three-dimensional point cloud neural networks named SurfPro-NN, which represents protein structures as point clouds and learns interaction information from protein interfaces by applying a point cloud neural network. With the continuous advancement of deep learning in the field of biology, a series of knowledge-rich pre-trained models have emerged. We incorporate protein surface representation models and language models into our approach, greatly enhancing feature representation capabilities and achieving superior performance in protein docking model scoring tasks. Through comprehensive testing on public datasets, we find that our method outperforms state-of-the-art deep learning approaches in protein-protein docking model scoring. Not only does it significantly improve performance, but it also greatly accelerates training speed. This study demonstrates the potential of our approach in addressing protein interaction assessment problems, providing strong support for future research and applications in the field of biology.

Authors

  • Qianli Yang
    Institute of Artifical Intelligence, XiaMen University, No. 422, Siming South Road, XiaMen, 361005, Fujian, China. Electronic address: yangqianli@stu.xmu.edu.cn.
  • Xiaocheng Jin
    National Institute of Diagnostics and Vaccine Development in Infectious Diseases, XiaMen University, No. 422, Siming South Road, XiaMen, 361005, Fujian, China; State Key Laboratory of Molecular Vaccinology and Molecular Diagnostics, XiaMen University, No. 422, Siming South Road, XiaMen, 361005, Fujian, China; School of Public Health, XiaMen University, No. 422, Siming South Road, XiaMen, 361005, Fujian, China.
  • Haixia Zhou
    School of Public Health, XiaMen University, No. 422, Siming South Road, XiaMen, 361005, Fujian, China.
  • Junjie Ying
    Institute of Artifical Intelligence, XiaMen University, No. 422, Siming South Road, XiaMen, 361005, Fujian, China.
  • Jiajun Zou
    Guangzhou Xinhua University, Guangzhou, China.
  • Yiyang Liao
    School of Informatics, XiaMen University, No. 422, Siming South Road, XiaMen, 361005, Fujian, China.
  • Xiaoli Lu
    Information and Networking Center, XiaMen University, No. 422, Siming South Road, XiaMen, 361005, Fujian, China.
  • Shengxiang Ge
    National Institute of Diagnostics and Vaccine Development in Infectious Diseases, School of Life Sciences, Xiamen University, Xiamen 361102, Fujian, China.
  • Hai Yu
    ZJU-Bioer Technology Research & Development Center, Hangzhou Bioer Technology, Hangzhou, 310053, China.
  • Xiaoping Min