Title of article :
QSAR modeling of matrix metalloproteinase inhibition by N-hydroxy-α-phenylsulfonylacetamide derivatives Original Research Article
Author/Authors :
Michael Fern?ndez، نويسنده , , Julio Caballero، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Pages :
13
From page :
6298
To page :
6310
Abstract :
The main molecular features which determine the selectivity of a set of 80 N-hydroxy-α-phenylsulfonylacetamide derivatives (HPSAs) in the inhibition of three matrix metalloproteinases (MMP-1, MMP-9, and MMP-13) have been identified by using linear and nonlinear predictive models. The molecular information has been encoded in 2D autocorrelation descriptors, obtained from different weighting schemes. The linear models were built by multiple linear regression (MLR) combined with genetic algorithm (GA), and a robust QSAR mapping paradigm. The Bayesian-regularized genetic neural network (BRGNN) was employed for nonlinear modeling. In such approaches each model could have its own set of input variables. All models were predictive according to internal and external validation experiments; but the best results correspond to nonlinear ones. The 2D autocorrelati
Keywords :
MMP inhibitors , 2D Autocorrelation space , Bayesian-regularized Genetic Neural Networks , QSAR analysis
Journal title :
Bioorganic and Medicinal Chemistry
Serial Year :
2007
Journal title :
Bioorganic and Medicinal Chemistry
Record number :
1306014
Link To Document :
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