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首页> 外文期刊>Ecotoxicology and Environmental Safety >Predicting multiple ecotoxicological profiles in agrochemical fungicides: A multi-species chemoinformatic approach
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Predicting multiple ecotoxicological profiles in agrochemical fungicides: A multi-species chemoinformatic approach

机译:预测农用化学杀菌剂中的多种生态毒理学特征:一种多物种化学信息学方法

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Agriculture is needed to deal with crop losses caused by biotic stresses like pests. The use of pesticides has played a vital role, contributing to improve crop production and harvest productivity, providing a better crop quality and supply, and consequently contributing with the improvement of the human health. An important group of these pesticides is fungicides. However, the use of these agrochemical fungicides is an important source of contamination, damaging the ecosystems. Several studies have been realized for the assessment of the toxicity in agrochemical fungicides, but the principal limitation is the use of structurally related compounds against usually one indicator species. In order to overcome this problem, we explore the quantitative structure-toxicity relationships (QSTR) in agrochemical fungicides. Here, we developed the first multi-species (ms) chemoinformatic approach for the prediction multiple ecotoxicological profiles of fungicides against 20 indicators species and their classifications in toxic or nontoxic. The ms-QSTR discriminant model was based on substructural descriptors and a heterogeneous database of compounds. The percentages of correct classification were higher than 90% for both, training and prediction series. Also, substructural alerts responsible for the toxicityo toxicity in fungicides respect all ecotoxicological profiles, were extracted and analyzed.
机译:需要农业来应对由于有害生物等生物胁迫而造成的作物损失。农药的使用发挥了至关重要的作用,有助于提高农作物的产量和收成,提供更好的农作物质量和供应,从而有助于改善人类健康。这些农药的重要一类是杀真菌剂。但是,这些农药的使用是污染的重要来源,破坏了生态系统。已经进行了几项评估农药化学杀真菌剂毒性的研究,但是主要的局限性是针对通常一种指示剂种类使用结构相关的化合物。为了克服这个问题,我们探索了农药杀真菌剂中的定量结构-毒性关系(QSTR)。在这里,我们开发了第一个多物种(ms)化学信息学方法来预测杀菌剂针对20种指示剂物种的多种生态毒理学特征及其有毒或无毒分类。 ms-QSTR判别模型基于子结构描述符和化合物的异构数据库。训练和预测系列的正确分类百分比均高于90%。此外,提取并分析了负责杀菌剂毒性/无毒性的子结构警报,这些警报尊重所有生态毒理学特征。

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