Large-Scale Validation of a Quantum Mechanics Based Scoring Function: Predicting the Binding Affinity and the Binding Mode of a Diverse Set of Protein-Ligand Complexes
June 21, 2005 Filed In:QMScore
Abstract: Computational methods to
calculate binding affinity in protein-ligand
interaction are of immense interest because of
obvious practical applications in structure-based
drug design. Scoring functions attempt to calculate
the variation in binding affinity of
ligands-inhibitors bound to protein targets at
various levels of theory. In this study we use
semiempirical quantum mechanics to design a scoring
function that can calculate the electrostatic
interactions and solvation free energy expected
during complexation. This physically based approach
has the ability to capture binding affinity trends in
a diverse range of protein-ligand complexes. We also
show the predictive power of this scoring function
within protein targets and its ability to score
ligand poses docked to a protein target. We also
demonstrate the ability of this scoring function to
discriminate between native and decoy poses and
highlight the crucial role played by electrostatic
interactions in molecular recognition. Finally we
compare the performance of our scoring function with
other available scoring functions in the literature.
Authors: Kaushik Raha and Kenneth M. Merz, Jr.
Reference: J. Med. Chem. 2005, 48, 4558-4575. (see link for full paper).
Authors: Kaushik Raha and Kenneth M. Merz, Jr.
Reference: J. Med. Chem. 2005, 48, 4558-4575. (see link for full paper).