Predicting aquatic toxicities of chemical pesticides in multiple test species using nonlinear QSTR modeling approaches

Correlative distribution of measured and QSTR model (DTF and DTB) predicted aquatic toxicities of chemical pesticides in multiple test species. [Display omitted] •QSTRs developed for predicting aquatic toxicity of pesticides in multiple species.•Structural diversity of chemicals and nonlinearity in...

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Veröffentlicht in:Chemosphere (Oxford) 2015-11, Vol.139, p.246-255
Hauptverfasser: Basant, Nikita, Gupta, Shikha, Singh, Kunwar P.
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Sprache:eng
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Zusammenfassung:Correlative distribution of measured and QSTR model (DTF and DTB) predicted aquatic toxicities of chemical pesticides in multiple test species. [Display omitted] •QSTRs developed for predicting aquatic toxicity of pesticides in multiple species.•Structural diversity of chemicals and nonlinearity in data were established.•Predictive QSTRs models were developed under OECD guidelines.•Proposed QSTRs precisely predicted toxicity of pesticides in multiple test species. In this study, we established nonlinear quantitative-structure toxicity relationship (QSTR) models for predicting the toxicities of chemical pesticides in multiple aquatic test species following the OECD (Organization for Economic Cooperation and Development) guidelines. The decision tree forest (DTF) and decision tree boost (DTB) based QSTR models were constructed using a pesticides toxicity dataset in Selenastrum capricornutum and a set of six descriptors. Other six toxicity data sets were used for external validation of the constructed QSTRs. Global QSTR models were also constructed using the combined dataset of all the seven species. The diversity in chemical structures and nonlinearity in the data were evaluated. Model validation was performed deriving several statistical coefficients for the test data and the prediction and generalization abilities of the QSTRs were evaluated. Both the QSTR models identified WPSA1 (weighted charged partial positive surface area) as the most influential descriptor. The DTF and DTB QSTRs performed relatively better than the single decision tree (SDT) and support vector machines (SVM) models used as a benchmark here and yielded R2 of 0.886 and 0.964 between the measured and predicted toxicity values in the complete dataset (S. capricornutum). The QSTR models applied to six other aquatic species toxicity data yielded R2 of >0.92 (DTF) and >0.97 (DTB), respectively. The prediction accuracies of the global models were comparable with those of the S. capricornutum models. The results suggest for the appropriateness of the developed QSTR models to reliably predict the aquatic toxicity of chemicals and can be used for regulatory purpose.
ISSN:0045-6535
1879-1298
DOI:10.1016/j.chemosphere.2015.06.063