Accurate Prediction of Aquatic Toxicity of Aromatic Compounds Based on Genetic Algorithm and Least Squares Support Vector Machines

Quantitative Structure–Toxicity Relationship (QSTR) plays an important role in ecotoxicology for its fast and practical ability to assess the potential negative effects of chemicals. The aim of this investigation was to develop accurate QSTR models for the aquatic toxicity of a large set of aromatic...

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Published inQSAR & combinatorial science Vol. 27; no. 7; pp. 850 - 865
Main Authors Lei, Beilei, Li, Jiazhong, Liu, Huanxiang, Yao, Xiaojun
Format Journal Article
LanguageEnglish
Published Weinheim WILEY-VCH Verlag 01.07.2008
WILEY‐VCH Verlag
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ISSN1611-020X
1611-0218
DOI10.1002/qsar.200760167

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Summary:Quantitative Structure–Toxicity Relationship (QSTR) plays an important role in ecotoxicology for its fast and practical ability to assess the potential negative effects of chemicals. The aim of this investigation was to develop accurate QSTR models for the aquatic toxicity of a large set of aromatic compounds through the combination of Least Squares Support Vector Machines (LS‐SVMs) and a Genetic Algorithm (GA). Molecular descriptors calculated by DRAGON package and log P were used to describe the molecular structures. The most relevant descriptors used to build QSTR models were selected by a GA‐Variable Subset Selection procedure. Multiple Linear Regression (MLR) and nonlinear LS‐SVMs methods were employed to build QSTR models. The predictive ability of the derived models was validated using both the test set, selected from the whole data set by the Kennard–Stone Algorithm, and an external prediction set. The model applicability domain was checked by the leverage approach and the external prediction set was used to verify the predictive reliability of the models. The results indicated that the proposed QSTR models are robust and satisfactory, and can provide a feasible and promising tool for the rapid assessment of the toxicity of chemicals.
Bibliography:ark:/67375/WNG-9CG8PKRQ-H
istex:446C6656BA9ED3AD395ECA700350A8499B5F7EBB
ArticleID:QSAR200760167
ISSN:1611-020X
1611-0218
DOI:10.1002/qsar.200760167