Abstract
I introduce two new methods, QFVina and QFVinardo, for protein-ligand docking that leverage
precomputed high-quality conformational libraries with QM-optimized geometries and ab initio
DFT-D4-based conformational rankings and strain energies. These methods provide greater
accuracy in docking-based virtual screening by addressing the inaccuracies in intramolecular
relative energies of conformations, a critical component often misrepresented in flexible ligand
docking calculations.
I demonstrate that numerous force field-based methods widely used today exhibit substantial errors
in conformational relative energies, and that it is unrealistic to expect better accuracy from the
faster scoring functions typically employed in docking. Consistent with these findings, I show that
traditional flexible ligand docking often produces geometries with significant strain energies and
large deviations, with magnitudes comparable to the protein-ligand binding energies themselves
and much larger than the differences we aim to estimate in docking hitlists.
By using physically realistic ligand conformations with accurate strain energies in the scoring
function, QFVina and QFVinardo produce markedly different docking results, even with the same
docking parameters and scoring functions for protein-ligand interaction energies. I analyzed these
differences in docking hitlists and selected protein-ligand interactions using three protein targets
from COVID-19 research.
Supplementary materials
Title
CSV files of top100 condensed docking hitlists
Description
These are the collection of all CSV files for the condensed top 100 hitlists for QFVina and QFVinardo docking results by using FDA approved drugs and natural products from the COCONUT database. Traditional flexible ligand docking hitlists are also included for the FDA approved drugs category with both Vina and Vinardo scoring functions. To untar and uncompress on Linux type the command of
tar -xvzf filename.tar.gz
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