Affiliation:
1. Department of Chemistry, Science Faculty, Arak Branch, Islamic Azad University, Arak, Iran
Abstract
Aim and Objective:
Esters are of great importance in industry, medicine, and space
studies. Therefore, studying the toxicity of esters is very important. In this research, a Quantitative
Structure–Activity Relationship (QSAR) model was proposed for the prediction of aquatic toxicity
(log 1/IGC50) of aliphatic esters towards Tetrahymena pyriformis using molecular descriptors.
Materials and Methods:
A data set of 48 aliphatic esters was separated into a training set of 34
compounds and a test set of 14 compounds. A large number of molecular descriptors were
calculated with Dragon software. The Genetic Algorithm (GA) and Multiple Linear Regression
(MLR) methods were used to select the suitable descriptors and to generate the correlation models
that relate the chemical structural features to the biological activities.
Results:
The predictive powers of the MLR models are discussed by using Leave-One-Out (LOO)
cross-validation and external test set. The best QSAR model is obtained with R2 value of 0.899, Q2
LOO =0.928, F=137.73, RMSE=0.263.
Conclusion:
The predictive ability of the GA-MLR model with two selected molecular descriptors
is satisfactory and it can be used for designing similar group and predicting of toxicity (log
1/IGC50) of ester derivatives.
Publisher
Bentham Science Publishers Ltd.
Subject
Organic Chemistry,Computer Science Applications,Drug Discovery,General Medicine
Cited by
8 articles.
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