Quantitative structure–activity relationships study of tyrosinase inhibitors using logistic regression and artificial neural networks

被引:0
|
作者
M. A. Mahmood Janlou
P. Abdolmaleki
M. Tajbakhsh
M. Amanlou
A. Eidi
机构
[1] Islamic Azad University,Department of Biology, Science and Research Branch
[2] Tarbiat Modares University,Department of Biophysics, Faculty of Science
[3] Mazandaran University,Department of Chemistry
[4] Tehran University of Medical Sciences,Department of Medicinal Chemistry, Drug Design and Development Research Center, Faculty of Pharmacy
关键词
QSAR; Tyrosinase inhibitors; Logistic regression; Artificial neural network;
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学科分类号
摘要
In this work, two logistic regression (LR) and artificial neural networks (ANNs) were applied for seeking quantitative structure–activity relationships (QSARs) that correlate structural descriptors and inhibition activity of tyrosinase inhibitors. This study was devoted to extraction of the most effective structural features of these inhibitors from a large number of quantitative descriptors. Many quantitative descriptors were generated to express the physicochemical properties of 35 compounds with optimized structures. After filtration of these descriptors, 39 of them remained and selected for QSAR study. Logistic regression was used to non-linearly select different subsets of descriptors and develop for prediction of IC50. The best subset then fed to artificial neural network as non-linear procedure. The best prediction model was found to be a 3–11–1 artificial neural network. The evaluating indices (FC, FAR and POD) of this prediction model were found 84.75, 13.48 and 93.15 %, respectively. The conformability of results by the network model and logistic regression ensured the effectiveness of the selected structural features (descriptors).
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页码:643 / 653
页数:10
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