posted on 2015-11-23, 00:00authored byAdriana Supady, Volker Blum, Carsten Baldauf
The identification of low-energy
conformers for a given molecule
is a fundamental problem in computational chemistry and cheminformatics.
We assess here a conformer search that employs a genetic algorithm
for sampling the low-energy segment of the conformation space of molecules.
The algorithm is designed to work with first-principles methods, facilitated
by the incorporation of local optimization and blacklisting conformers
to prevent repeated evaluations of very similar solutions. The aim
of the search is not only to find the global minimum but to predict
all conformers within an energy window above the global minimum. The
performance of the search strategy is (i) evaluated for a reference
data set extracted from a database with amino acid dipeptide conformers
obtained by an extensive combined force field and first-principles
search and (ii) compared to the performance of a systematic search
and a random conformer generator for the example of a drug-like ligand
with 43 atoms, 8 rotatable bonds, and 1 cis/trans bond.