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A combinatorial approach toward the discovery of non-peptide, subtype-selective somatostatin receptor ligands.

Authors :
Berk SC
Rohrer SP
Degrado SJ
Birzin ET
Mosley RT
Hutchins SM
Pasternak A
Schaeffer JM
Underwood DJ
Chapman KT
Source :
Journal of combinatorial chemistry [J Comb Chem] 1999 Sep-Oct; Vol. 1 (5), pp. 388-96.
Publication Year :
1999

Abstract

The tetradecapeptide somatostatin is widely distributed throughout the body and is thought to be involved with a variety of regulatory functions. Recently, five human somatostatin receptors (hSSTR1-5) have been cloned and characterized. Several selective peptidal agonists of the hSSTR receptors are known, and we sought to apply this information to the design of novel non-peptide small molecule ligands for each receptor. Initial computational methods identified a 200 nM murine SSTR2 active compound via a database search of our sample collection. A combinatorial library was designed around the structural class of the compound with the goal of rapidly developing this initial lead into the desired subtype-selective small molecules in order to characterize the pharmacology of each of the receptor subtypes. The library was synthesized using the resin-archive, iterative deconvolution format. The total number of unique compounds in the library was expected to be 131,670, present in 79 mixtures of 1330 or 2660 compounds per mixture. Through sequences of screening and mixture deconvolution, the components of selective and highly active (Ki = 50 pM to 200 nM) non-peptide small molecule ligands for somatostatin subtypes 1, 2, 4, and 5 were identified. In addition to discovering compounds with the desired activity and selectivity, useful structure/activity information was generated which can be used in the design of new compounds and second-generation combinatorial libraries.

Details

Language :
English
ISSN :
1520-4766
Volume :
1
Issue :
5
Database :
MEDLINE
Journal :
Journal of combinatorial chemistry
Publication Type :
Academic Journal
Accession number :
10748735
Full Text :
https://doi.org/10.1021/cc990017h