Tehran University of Medical Sciences

Science Communicator Platform

Stay connected! Follow us on X network (Twitter):
Share this content! By
Qsar Study of Prolylcarboxypeptidase Inhibitors by Genetic Algorithm: Multiple Linear Regressions Publisher



Pourbasheer E1 ; Vahdani S2 ; Aalizadeh R3 ; Banaei A1 ; Ganjali MR4, 5
Authors

Source: Journal of Chemical Sciences Published:2015


Abstract

The predictive analysis based on quantitative structure activity relationships (QSAR) on benzimidazolepyrrolidinyl amides as prolylcarboxypeptidase (PrCP) inhibitors was performed. Molecules were represented by chemical descriptors that encode constitutional, topological, geometrical, and electronic structure features. The hierarchical clustering method was used to classify the dataset into training and test subsets. The important descriptors were selected with the aid of the genetic algorithm method. The QSAR model was constructed, using the multiple linear regressions (MLR), and its robustness and predictability were verified by internal and external cross-validation methods. Furthermore, the calculation of the domain of applicability defines the area of reliable predictions. The root mean square errors (RMSE) of the training set and the test set for GA-MLR model were calculated to be 0.176, 0.279 and the correlation coefficients (R 2) were obtained to be 0.839, 0.923, respectively. The proposed model has good stability, robustness and predictability when verified by internal and external validation. [Figure not available: see fulltext.] © 2015 Indian Academy of Sciences.
Other Related Docs
10. 3D-Qsar Analysis of Mcd Inhibitors by Comfa and Comsia, Combinatorial Chemistry and High Throughput Screening (2015)
11. Study of Cxcr4 Chemokine Receptor Inhibitors Using Qspr and Molecular Docking Methodologies, Journal of Theoretical and Computational Chemistry (2019)
16. Deep Neural Network in Qsar Studies Using Deep Belief Network, Applied Soft Computing Journal (2018)