Literature DB >> 23906083

Particle swarm optimization and genetic algorithm as feature selection techniques for the QSAR modeling of imidazo[1,5-a]pyrido[3,2-e]pyrazines, inhibitors of phosphodiesterase 10A.

Mohammad Goodarzi1, Wouter Saeys, Omar Deeb, Sigrid Pieters, Yvan Vander Heyden.   

Abstract

Quantitative structure-activity relationship (QSAR) modeling was performed for imidazo[1,5-a]pyrido[3,2-e]pyrazines, which constitute a class of phosphodiesterase 10A inhibitors. Particle swarm optimization (PSO) and genetic algorithm (GA) were used as feature selection techniques to find the most reliable molecular descriptors from a large pool. Modeling of the relationship between the selected descriptors and the pIC50 activity data was achieved by linear [multiple linear regression (MLR)] and non-linear [locally weighted regression (LWR) based on both Euclidean (E) and Mahalanobis (M) distances] methods. In addition, a stepwise MLR model was built using only a limited number of quantum chemical descriptors, selected because of their correlation with the pIC50 . The model was not found interesting. It was concluded that the LWR model, based on the Euclidean distance, applied on the descriptors selected by PSO has the best prediction ability. However, some other models behaved similarly. The root-mean-squared errors of prediction (RMSEP) for the test sets obtained by PSO/MLR, GA/MLR, PSO/LWRE, PSO/LWRM, GA/LWRE, and GA/LWRM models were 0.333, 0.394, 0.313, 0.333, 0.421, and 0.424, respectively. The PSO-selected descriptors resulted in the best prediction models, both linear and non-linear.
© 2013 John Wiley & Sons A/S.

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Keywords:  Euclidean distance; Mahalanobis distance; genetic algorithm; locally weighted regression; multiple linear regression; particle swarm optimization

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Year:  2013        PMID: 23906083     DOI: 10.1111/cbdd.12196

Source DB:  PubMed          Journal:  Chem Biol Drug Des        ISSN: 1747-0277            Impact factor:   2.817


  1 in total

1.  Sequential and Mixed Genetic Algorithm and Learning Automata (SGALA, MGALA) for Feature Selection in QSAR.

Authors:  Habib MotieGhader; Sajjad Gharaghani; Yosef Masoudi-Sobhanzadeh; Ali Masoudi-Nejad
Journal:  Iran J Pharm Res       Date:  2017       Impact factor: 1.696

  1 in total

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