From knowledge-based potentials to combinatorial lead design in silico.

Publication information:

Grzybowski, B. A., Ishchenko, A. , V, Shimada, J. & Shakhnovich, E. I. From knowledge-based potentials to combinatorial lead design in silico. Accounts of chemical research 35, 261–9 (2002).

Abstract

Computational methods are becoming increasingly used in the drug discovery process. In this Account, we review a novel computational method for lead discovery. This method, called CombiSMoG for "combinatorial small molecule growth", is based on two components: a fast and accurate knowledge-based scoring function used to predict binding affinities of protein-ligand complexes, and a Monte Carlo combinatorial growth algorithm that generates large numbers of low-free-energy ligands in the binding site of a protein. We illustrate the advantages of the method by describing its application in the design of picomolar inhibitors for human carbonic anhydrase.