ResBiGAAT: Residual Bi-GRU with attention for protein-ligand binding affinity prediction.

Journal: Computational biology and chemistry
Published Date:

Abstract

Protein-ligand interaction plays a crucial role in drug discovery, facilitating efficient drug development and enabling drug repurposing. Several computational algorithms, such as Graph Neural Networks and Convolutional Neural Networks, have been proposed to predict the binding affinity using the three-dimensional structure of ligands and proteins. However, there are limitations due to the need for experimental characterization of the three-dimensional structure of protein sequences, which is still lacking for some proteins. Moreover, these models often suffer from unnecessary complexity, resulting in extraneous computations. This study presents ResBiGAAT, a novel deep learning model that combines a deep Residual Bidirectional Gated Recurrent Unit with two-sided self-attention mechanisms. ResBiGAAT leverages protein and ligand sequence-level features and their physicochemical properties to efficiently predict protein-ligand binding affinity. Through rigorous evaluation using 5-fold cross-validation, we demonstrate the performance of our proposed approach. The model exhibits competitive performance on an external dataset, highlighting its generalizability. Our publicly available web interface, located at resbigaat.streamlit.app, allows users to conveniently input protein and ligand sequences to estimate binding affinity.

Authors

  • Gelany Aly Abdelkader
    Department of Computer Science and Electronic Engineering, Sun Moon University, Asan 31460, the Republic of Korea.
  • Soualihou Ngnamsie Njimbouom
    Department of Computer and Electronics Convergence Engineering, Sun Moon University, Asan 31460, Korea.
  • Tae-Jin Oh
    Genome-Based BioIT Convergence Institute, Sun Moon University, Asan, 31460, South Korea.
  • Jeong-Dong Kim
    Department of Computer Science and Engineering, Sun Moon University, Asan 31460, Republic of Korea.