Improving the binding affinity estimations of protein-ligand complexes using machine-learning facilitated force field method.

Journal: Journal of computer-aided molecular design
Published Date:

Abstract

Scoring functions are routinely deployed in structure-based drug design to quantify the potential for protein-ligand (PL) complex formation. Here, we present a new scoring function Bappl+ that is designed to predict the binding affinities of non-metallo and metallo PL complexes. Bappl+ outperforms other state-of-the-art scoring functions, achieving a high Pearson correlation coefficient of up to ~ 0.76 with low standard deviations. The biggest contributors to the increased performance are the use of a machine-learning model and the enlarged training dataset. We have also evaluated the performance of Bappl+ on target-specific proteins, which highlighted the limitations of our function and provides a way for further improvements. We believe that Bappl+ methodology could prove valuable in ranking candidate molecules against a target metallo or non-metallo protein by reliably predicting their binding affinities, thus helping in the drug discovery process.

Authors

  • Anjali Soni
    Department of Chemistry, Indian Institute of Technology, Hauz Khas, New Delhi, 110016, India.
  • Ruchika Bhat
    Department of Chemistry, Indian Institute of Technology, Hauz Khas, New Delhi, 110016, India.
  • B Jayaram
    Department of Chemistry, Indian Institute of Technology, Hauz Khas, New Delhi, 110016, India. anjali@scfbio-iitd.res.in.