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G Protein-Coupled Receptors: target-based in silico screening. | LitMetric

G Protein-Coupled Receptors: target-based in silico screening.

Curr Pharm Des

EPIX Pharmaceuticals Ltd, Ramat Gan 52521, Israel.

Published: March 2010

AI Article Synopsis

  • In silico screening has become a key technique in drug design, particularly for G Protein-Coupled Receptors (GPCRs), which previously faced challenges due to limited crystal structures.
  • The EPIX in silico screening workflow consists of several stages, including target modeling, library preparation, docking, and evaluation to identify virtual hits.
  • The study examined 13 GPCRs and found hit rates ranging from 4% to 21%, with better success in biogenic amine receptors compared to peptide receptors, while also discussing future challenges and advancements in this field.

Article Abstract

In silico (or virtual) screening has become a common practice in current computer-aided drug design efforts. However, application to hit discovery in the G Protein-Coupled Receptors (GPCRs) arena was until recently hampered by the paucity of crystal structures available for this important class of pharmaceutical targets, forcing practitioners in the field to rely on GPCR models derived either ab initio or through homology modeling approaches. In this work we describe the EPIX in silico screening workflow which consists of the following stages: (1) Target modeling; (2) Preparation of screening library; (3) Docking; (4) Binding mode selection; (5) Scoring; (6) Consensus scoring and (7) Selection of virtual hits. This workflow was applied to the virtual screening of 13 GPCRs (5 biogenic amine receptors, 5 peptide receptors, 1 lipid receptor, 1 purinergic receptor and 1 cannabinoid receptor). Hit rates vary between 4% and 21% with higher hit rates usually obtained for biogenic amines and lower hits rates for peptide receptors. These data are analyzed in the context of the available experimental information (i.e., mutational data), the model (i.e., binding site location, and type of interactions) and the screening library. Specific examples are discussed in more detail as well as the future directions and challenges of this approach to in silico screening.

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Source
http://dx.doi.org/10.2174/138161209789824821DOI Listing

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