In Silico Methods for the Discovery of Orthosteric GABAB Receptor Compounds
Permanent link
https://hdl.handle.net/10037/15911Date
2019-03-07Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
The GABAB receptor (GABAB-R) is a heterodimeric class C G protein-coupled receptor
comprised of the GABAB1a/b and GABAB2 subunits. The endogenous orthosteric agonist
γ-amino-butyric acid (GABA) binds within the extracellular Venus flytrap (VFT) domain of the
GABAB1a/b subunit. The receptor is associated with numerous neurological and neuropsychiatric
disorders including learning and memory deficits, depression and anxiety, addiction and epilepsy, and
is an interesting target for new drug development. Ligand- and structure-based virtual screening (VS)
are used to identify hits in preclinical drug discovery. In the present study, we have evaluated classical
ligand-based in silico methods, fingerprinting and pharmacophore mapping and structure-based
in silico methods, structure-based pharmacophores, docking and scoring, and linear interaction
approximation (LIA) for their aptitude to identify orthosteric GABAB-R compounds. Our results
show that the limited number of active compounds and their high structural similarity complicate
the use of ligand-based methods. However, by combining ligand-based methods with different
structure-based methods active compounds were identified in front of DUDE-E decoys and the
number of false positives was reduced, indicating that novel orthosteric GABAB-R compounds may
be identified by a combination of ligand-based and structure-based in silico methods.