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Original Articles

Performance of (consensus) kNN QSAR for predicting estrogenic activity in a large diverse set of organic compounds

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Pages 19-32 | Received 05 Jun 2003, Accepted 05 Oct 2003, Published online: 01 Feb 2007
 

Abstract

A novel method (in the context of quantitative structure–activity relationship (QSAR)) based on the k nearest neighbour (kNN) principle, has recently been introduced for the derivation of predictive structure–activity relationships. Its performance has been tested for estimating the estrogen binding affinity of a diverse set of 142 organic molecules. Highly predictive models have been obtained. Moreover, it has been demonstrated that consensus-type kNN QSAR models, derived from the arithmetic mean of individual QSAR models were statistically robust and provided more accurate predictions than the great majority of the individual QSAR models. Finally, the consensus QSAR method was tested with 3D QSAR and log P data from a widely used steroid benchmark data set.

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