AI Article Synopsis

  • - Peptides are considered great drug candidates due to their high specificity and safety, but existing docking methods struggle with scoring these peptide interactions accurately.
  • - The new algorithm, PeptoGrid, improves the scoring of peptide poses predicted by AutoDock Vina by using atom frequency information related to the properties of ligands in the binding site of target proteins.
  • - Virtual screenings using PeptoGrid showed good alignment with experimental results, indicating its effectiveness in finding promising peptide leads for drug development.

Article Abstract

Peptides are promising drug candidates due to high specificity and standout safety. Identification of bioactive peptides de novo using molecular docking is a widely used approach. However, current scoring functions are poorly optimized for peptide ligands. In this work, we present a novel algorithm PeptoGrid that rescores poses predicted by AutoDock Vina according to frequency information of ligand atoms with particular properties appearing at different positions in the target protein's ligand binding site. We explored the relevance of PeptoGrid ranking with a virtual screening of peptide libraries using angiotensin-converting enzyme and GABAB receptor as targets. A reasonable agreement between the computational and experimental data suggests that PeptoGrid is suitable for discovering functional leads.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6359344PMC
http://dx.doi.org/10.3390/molecules24020277DOI Listing

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