Prediction of Acute Aquatic Toxicity Toward Daphnia magna by using the GA-kNN Method (vol 42, pg 31, 2014)

ATLA-ALTERNATIVES TO LABORATORY ANIMALS(2014)

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摘要
In this study, a QSAR model was developed from a data set consisting of 546 organic molecules, to predict acute aquatic toxicity toward Daphnia magna. A modified k-Nearest Neighbour (kNN) strategy was used as the regression method, which provided prediction only for those molecules with an average distance from the k nearest neighbours lower than a selected threshold. The final model showed good performance (R-2 and Q(cv)(2) equal to 0.78, Q(ext)(2) equal to 0.72). It comprised eight molecular descriptors that encoded information about lipophilicity, the formation of H-bonds, polar surface area, polarisability, nucleophilicity and electrophilicity.
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关键词
aquatic toxicity,Daphnia magna,genetic algorithms,kNN,QSAR
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