| Literature DB >> 26185507 |
Zahra Hajimahdi1, Amin Ranjbar2, Amir Abolfazl Suratgar2, Afshin Zarghi1.
Abstract
Predictive quantitative structure-activity relationship was performed on the novel4-oxo-1,4-dihydroquinoline and 4-oxo-4H-pyrido[1,2-a]pyrimidine derivatives to explore relationship between the structure of synthesized compounds and their anti-HIV-1 activities. In this way, the suitable set of the molecular descriptors was calculated and the important descriptors using the variable selections of the stepwise technique were selected. Multiple linear regression (MLR) and artificial neural network (ANN) as nonlinear system were used for constructing QSAR models. The predictive quality of the quantitative structure-activity relationship models was tested for an external set of five compounds, randomly chosen out of 25 compounds. The findings exhibited that stepwise-ANN model was more efficient at prediction activity of both training and test sets with high statistical qualities. Based on QSAR models results, electronegativity, the atomic masses, the atomic van der Waals volumes, the molecular symmetry and polarizability were found to be important factors controlling the anti-HIV-1 activity.Entities:
Keywords: 2-a]pyrimidine; 4-Oxo-1; 4-dihydroquinoline; Neural network; Oxo-4H-pyrido[1; QSAR
Year: 2015 PMID: 26185507 PMCID: PMC4499428
Source DB: PubMed Journal: Iran J Pharm Res ISSN: 1726-6882 Impact factor: 1.696
Chemical structures and experimental and predicted activities for 4-oxo-1,4-dihydroquinoline and 4-oxo-4H-pyrido[1,2-a]pyrimidine analogs by SW-MLR.
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The prediction set (test set)
Figure 1Procedure of the method
Statistical parameters of SW-MLR model
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| SEE | R2 | R2 | ||
| 0.10 | 0.93 | 0.30 | 47.44 | 0.84 |
Figure 2The predicted Log IR values by the SW-MLR modeling versus the observed Log IR values
Figure 3Training and test obtained results