Article ID Journal Published Year Pages File Type
1399559 European Journal of Medicinal Chemistry 2010 7 Pages PDF
Abstract

The activities of a series of HIV reverse transcriptase inhibitor TIBO derivatives were recently modeled by using genetic function approximation (GFA) and artificial neural networks (ANN) on topological, structural, electronic, spatial and physicochemical descriptors. The prediction results were found to be superior to those previously established. In the present work, the multivariate image analysis applied to quantitative structure–activity relationship (MIA–QSAR) method coupled to principal component analysis-adaptive neuro-fuzzy inference systems (PCA–ANFIS), which accounts for non-linearities, was applied on the same set of compounds previously reported. Additionally, partial least squares (PLS) and multilinear partial least squares (N-PLS) regressions were used for comparison with the MIA–QSAR/PCA–ANFIS model. The ANFIS procedure was capable of accurately correlating the inputs (PCA scores) with the bioactivities. The predictive performance of the MIA–QSAR/PCA–ANFIS model was significantly better than the MIA–QSAR/PLS and N-PLS models, as well as than the reported models based on CoMFA, CoMSIA, OCWLGI and classical descriptors, suggesting that the present methodology may be useful to solve other QSAR problems, specially those involving non-linearities.

Graphical abstractA QSAR method based on MIA descriptors, together with principal component analysis-adaptive neuro-fuzzy inference systems (PCA–ANFIS), provided a highly predictive model for the activities of a series of TIBO derivatives.Figure optionsDownload full-size imageDownload as PowerPoint slide

Related Topics
Physical Sciences and Engineering Chemistry Organic Chemistry
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