qsar study of the toxicity of nitrobenzenes to tetrahymena pyriformis using quantum chemical descriptors

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ID: 205302
2016
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Abstract
Quantitative Structure–Activity Relationship (QSAR) models are useful in understanding how chemical structure relates to the biological activity and the toxicity of natural and synthetic chemicals. The present study shows that Parr’s electrophilicity index ω in combination of two other descriptors, namely, the LUMO energy and the hydrophobicity index logP, prove their utility for the prediction of the toxicity of a series constituted by 50 nitrobenzene derivatives. The QSAR models are developed using the Multiple Linear Regression (MLR) method. It turns out that the best model, which its stability is confirmed using the leave-1/3-of-set-out validation, is able to describe about 87% of the variance of the experimental toxicity. The satisfactory obtained results show that Parr’s electrophilicity index is a useful quantum chemical descriptor for the toxicity modeling of nitrobenzene derivatives. Finally, the elaborated model shows that the most toxic nitrobenzenes are characterized by large hydrophobicities and high electrophilicity powers and could be efficiently applied for the estimation of the toxicity of nitrobenzenes for which the experimental measures are unavailable.
Reference Key
bellifa2016arabianqsar Use this key to autocite in the manuscript while using SciMatic Manuscript Manager or Thesis Manager
Authors ;Khadidja Bellifa;Sidi Mohamed Mekelleche
Journal Behavioural brain research
Year 2016
DOI
10.1016/j.arabjc.2012.04.031
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