Machine learning-assisted substrate binding pocket engineering based on structural information

Brief Bioinform. 2024 Jul 25;25(5):bbae381. doi: 10.1093/bib/bbae381.

Abstract

Engineering enzyme-substrate binding pockets is the most efficient approach for modifying catalytic activity, but is limited if the substrate binding sites are indistinct. Here, we developed a 3D convolutional neural network for predicting protein-ligand binding sites. The network was integrated by DenseNet, UNet, and self-attention for extracting features and recovering sample size. We attempted to enlarge the dataset by data augmentation, and the model achieved success rates of 48.4%, 35.5%, and 43.6% at a precision of ≥50% and 52%, 47.6%, and 58.1%. The distance of predicted and real center is ≤4 Å, which is based on SC6K, COACH420, and BU48 validation datasets. The substrate binding sites of Klebsiella variicola acid phosphatase (KvAP) and Bacillus anthracis proline 4-hydroxylase (BaP4H) were predicted using DUnet, showing high competitive performance of 53.8% and 56% of the predicted binding sites that critically affected the catalysis of KvAP and BaP4H. Virtual saturation mutagenesis was applied based on the predicted binding sites of KvAP, and the top-ranked 10 single mutations contributed to stronger enzyme-substrate binding varied while the predicted sites were different. The advantage of DUnet for predicting key residues responsible for enzyme activity further promoted the success rate of virtual mutagenesis. This study highlighted the significance of correctly predicting key binding sites for enzyme engineering.

Keywords: acid phosphatase; deep learning; proline 4-hydroxylase; substrate binding sites.

MeSH terms

  • Acid Phosphatase / chemistry
  • Acid Phosphatase / genetics
  • Acid Phosphatase / metabolism
  • Bacillus anthracis / enzymology
  • Bacillus anthracis / genetics
  • Bacterial Proteins / chemistry
  • Bacterial Proteins / genetics
  • Bacterial Proteins / metabolism
  • Binding Sites
  • Klebsiella / enzymology
  • Klebsiella / genetics
  • Ligands
  • Machine Learning*
  • Models, Molecular
  • Neural Networks, Computer
  • Protein Binding
  • Protein Engineering / methods
  • Substrate Specificity

Substances

  • Bacterial Proteins
  • Acid Phosphatase
  • Ligands