posted on 2023-08-25, 14:37authored byThomas Seidel, Christian Permann, Oliver Wieder, Stefan M. Kohlbacher, Thierry Langer
Knowledge of the putative bound-state conformation of
a molecule
is an essential prerequisite for the successful application of many
computer-aided drug design methods that aim to assess or predict its
capability to bind to a particular target receptor. An established
approach to predict bioactive conformers in the absence of receptor
structure information is to sample the low-energy conformational space
of the investigated molecules and derive representative conformer
ensembles that can be expected to comprise members closely resembling
possible bound-state ligand conformations. The high relevance of such
conformer generation functionality led to the development of a wide
panel of dedicated commercial and open-source software tools throughout
the last decades. Several published benchmarking studies have shown
that open-source tools usually lag behind their commercial competitors
in many key aspects. In this work, we introduce the open-source conformer
ensemble generator CONFORGE, which aims at delivering state-of-the-art
performance for all types of organic molecules in drug-like chemical
space. The ability of CONFORGE and several well-known commercial and
open-source conformer ensemble generators to reproduce experimental
3D structures as well as their computational efficiency and robustness
has been assessed thoroughly for both typical drug-like molecules
and macrocyclic structures. For small molecules, CONFORGE clearly
outperformed all other tested open-source conformer generators and
performed at least equally well as the evaluated commercial generators
in terms of both processing speed and accuracy. In the case of macrocyclic
structures, CONFORGE achieved the best average accuracy among all
benchmarked generators, with RDKit’s generator coming close
in second place.