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首页> 外文期刊>Chemosphere >Prediction of pesticide retention time in reversed-phase liquid chromatography using quantitative-structure retention relationship models: A comparative study of seven molecular descriptors datasets
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Prediction of pesticide retention time in reversed-phase liquid chromatography using quantitative-structure retention relationship models: A comparative study of seven molecular descriptors datasets

机译:使用定量结构保留关系模型预测逆相液相色谱中的农药保留时间:七分子描述仪数据集的比较研究

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摘要

Predicting chromatographic retention times of pesticides has become more and more important for suspect and non-target screening. Indeed, high-resolution mass spectrometry hyphenated (HRMS) to liquid chromatography (LC) are of growing interest for research and monitoring of pesticides, their metabolites and transformation products. The development of quantitative structure-retention relationship models require selecting the most adequate and best set of molecular descriptors and the best machine-learning algorithm. Here, we used seven molecular descriptor sets extracted from four wellknown studies and applied them to roughly 800 pesticides and their chromatographic reversed-phase retention times. We used and optimized five different machine-learning algorithms with these descriptor sets to carry out predictions. Our results show that a support-vector machine regression algorithm with only eight molecular descriptors gave the best compromise between the number of molecular descriptors, processing time and model complexity to optimize prediction performance for this specific gradient LC method. (C) 2021 Elsevier Ltd. All rights reserved.
机译:预测杀虫剂的色谱保留时间对可疑和非靶筛查变得越来越重要。实际上,高分辨率质谱敏化(HRMS)与液相色谱(LC)对农药的研究和监测,其代谢物和转化产品具有越来越关注的感兴趣。定量结构保留关系模型的发展需要选择最适合和最佳的分子描述符和最佳的机器学习算法。在这里,我们使用了从四个众所周知的研究中提取的七种分子描述符集,并将其施加到大约800个农药及其色谱反相保留时间。我们使用并优化了五种不同的机器学习算法,其中包含这些描述符集以执行预测。我们的结果表明,具有八个分子描述符的支持 - 矢量机回归算法在分子描述符,处理时间和模型复杂性的数量之间提供了最佳折衷,以优化该特定梯度LC方法的预测性能。 (c)2021 elestvier有限公司保留所有权利。

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