Nonlinear Qsar Study Of Xanthone And Curcuminoid Derivatives As Alpha-Glucosidase Inhibitors

BULLETIN OF THE KOREAN CHEMICAL SOCIETY(2013)

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Abstract
A non linear QSAR model was constructed on a series of 57 xanthone and curcuminoide derivatives as alpha-glucosidase inhibitors by back-propagation neural network method. The neural network architecture was optimized to obtain a three-layer neural network, composed of five descriptors, nine hidden neurons arid one output neuron. A good predictive determination coefficient was obtained (R-pset(2) = 86.7%), the statistical results being better than those obtained with the same data set using a multiple regression analysis (MLR). As in the MLR model, the descriptor MATS7v weighted by Van der Waals volume was found as the most important independent variable on the alpha-glucosidase inhibitory.
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Key words
alpha-Glucosidase, Inhibitors, Xanthone-curcuniinoide derivatives, QSAR, Artificial neural networks
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