Improved machine learning scoring functions for identification of Electrophorus electricus's acetylcholinesterase inhibitors

Mol Divers. 2022 Jun;26(3):1455-1479. doi: 10.1007/s11030-021-10280-w. Epub 2021 Jul 30.

Abstract

Structure-based drug design (SBDD) is an important in silico technique, used for the identification of enzyme inhibitors. Acetylcholinesterase (AChE), obtained from Electrophorus electricus (ee), is widely used for the screening of AChE inhibitors. It shares structural homology with the AChE of human and other organisms. Till date, the three-dimensional crystal structure of enzyme from ee is not available that makes it challenging to use the SBDD approach for the identification of inhibitors. A homology model was developed for eeAChE in the present study, followed by its structural refinement through energy minimisation. The docking protocol was developed using a grid dimension of 84 × 66 × 72 and grid point spacing of 0.375 Å for eeAChE. The protocol was validated by redocking a set of co-crystallised inhibitors obtained from mouse AChE, and their interaction profiles were compared. The results indicated a poor performance of the Autodock scoring function. Hence, a batch of machine learning-based scoring functions were developed. The validation results displayed an accuracy of 81.68 ± 1.73% and 82.92 ± 3.05% for binary and multiclass classification scoring function, respectively. The regression-based scoring function produced [Formula: see text] and [Formula: see text] values of 0.94, 0.635 and 0.634, respectively.

Keywords: Acetylcholinesterase; Electrophorus electricus; Machine learning; Protein ligand scoring function.

MeSH terms

  • Acetylcholinesterase* / chemistry
  • Animals
  • Cholinesterase Inhibitors* / chemistry
  • Cholinesterase Inhibitors* / pharmacology
  • Drug Design
  • Electrophorus
  • Machine Learning
  • Mice

Substances

  • Cholinesterase Inhibitors
  • Acetylcholinesterase