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QSAR Study on the Antinociceptive Activity of Some Morphinans
Author(s) -
RamírezGalicia Guillermo,
GarduñoJuárez Ramón,
Hemmateenejad Bahram,
Deeb Omar,
DecigaCampos Myrna,
MoctezumaEugenio Juan Carlos
Publication year - 2007
Publication title -
chemical biology and drug design
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.59
H-Index - 77
eISSN - 1747-0285
pISSN - 1747-0277
DOI - 10.1111/j.1747-0285.2007.00530.x
Subject(s) - quantitative structure–activity relationship , linear regression , predictive power , artificial neural network , predictive modelling , linear model , computer science , molecular descriptor , loo , set (abstract data type) , data set , regression analysis , artificial intelligence , mathematics , data mining , machine learning , philosophy , epistemology , programming language
Quantitative structure–activity relationship studies were performed to describe and predict the antinociceptive activity of 31 morphinan derivatives reported by the US Drug Evaluation Committee in 2005 and 2006. From these, three data sets were constructed and several models were calculated following the multiple linear regression and Leave‐One‐Out Cross‐Validation (LOO‐CV) tests. In general, these models achieved good descriptive power (approximately 92%) as well as predictive power (approximately 76%), but were unable to predict an external validation set of morphinan derivatives. When artificial neural networks were applied to these models, an improvement of the predictive and external validation values was obtained. It was observed that the results of the NN models are significantly better that those obtained by multiple linear regression. In spite that the problem under investigation can be handled adequately by a linear model, a neural network does bring slight improvements in the predictive power.