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Original Articles

Quantitative structure-activity relationships for a series of selective estrogen receptor-beta modulators

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Pages 711-727 | Received 22 Feb 2007, Accepted 01 Jun 2007, Published online: 26 Nov 2007
 

Abstract

The estrogen receptor-beta subtype (ERβ) is an attractive drug target for the development of novel therapeutic agents for hormone replacement therapy. Hologram quantitative structure-activity relationships (HQSAR) were conducted on a series of 6-phenylnaphthalene and 2-phenylquinoline derivatives, employing values of ERβ binding affinity. A training set of 65 compounds served to derive the models. The best statistical HQSAR model (q 2 = 0.73 and r 2 = 0.91) was generated using atoms, bonds, connections and donor and acceptor as fragment distinction parameters, and fragment size default (4–7) with hologram length of 199. The model was used to predict the binding affinity of an external test set of 16 compounds, and the predicted values were in good agreement with the experimental results. The final HQSAR model and the information obtained from 2D contribution maps should be useful for the design of novel ERβ modulators having improved affinity.

Acknowledgments

We gratefully acknowledge financial support from the Brazilian grant agencies FINEP (Research and Projects Financing), CNPq (The National Council for Scientific and Technological Development) and FAPESP (The State of São Paulo Research Foundation).

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