AI Article Synopsis

  • A study evaluated 269 steroids with anabolic activity using both ligand- and structure-based virtual screenings to identify potential candidates.
  • The research employed a quantitative structure-activity relationship (QSAR) model, focusing on key descriptors to understand how structural features of anabolic steroids facilitate their transport and interaction with steroid receptors.
  • Fourteen promising compounds were found, with the most effective being 7α-methylestr-4-en-3, 17-dione, which requires specific hydrogen bonding for optimal anabolic activity with the human androgen receptor.

Article Abstract

Parallel ligand- and structure-based virtual screenings of 269 steroids with anabolic activity evaluated in vivo were performed. The quantitative structure-activity relationship (QSAR) model expressed by selected descriptors as the octanol-water partition coefficient, the molar volume and the quantum mechanical calculated charge values on atoms C1, C2, C5, C9, C10, C14 and C17 of the steroid skeleton, expresses structural features of anabolic steroids (AS) contributing to the transport and steroid-receptor interaction. On the other hand, computational simulations of a candidate ligand binding to a receptor study (a "docking" procedure) predict the association of these AS with the human androgen receptor (AR). Fourteen compounds were identified as lead; the most potent was the 7α-methylestr-4-en-3, 17-dione. It was concluded that a good anabolic activity requires hydrogen bonding interactions between both Arg752 and Gln711 residues in the cycles A with O3 atom of the steroid and either Asn705 and Thr877 residues in the cycles D of steroid with O17 atom.

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Source
http://dx.doi.org/10.1016/j.jsbmb.2013.07.004DOI Listing

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