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QSAR and Classification Study on Prediction of Acute Oral Toxicity of N-Nitroso Compounds

机译:QSAR和N-亚硝基化合物急性口服毒性预测的分类研究

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摘要

To better understand the mechanism of in vivo toxicity of N-nitroso compounds (NNCs), the toxicity data of 80 NNCs related to their rat acute oral toxicity data (50% lethal dose concentration, LD50) were used to establish quantitative structure-activity relationship (QSAR) and classification models. Quantum chemistry methods calculated descriptors and Dragon descriptors were combined to describe the molecular information of all compounds. Genetic algorithm (GA) and multiple linear regression (MLR) analyses were combined to develop QSAR models. Fingerprints and machine learning methods were used to establish classification models. The quality and predictive performance of all established models were evaluated by internal and external validation techniques. The best GA-MLR-based QSAR model containing eight molecular descriptors was obtained with Q2loo = 0.7533, R2 = 0.8071, Q2ext = 0.7041 and R2ext = 0.7195. The results derived from QSAR studies showed that the acute oral toxicity of NNCs mainly depends on three factors, namely, the polarizability, the ionization potential (IP) and the presence/absence and frequency of C–O bond. For classification studies, the best model was obtained using the MACCS keys fingerprint combined with artificial neural network (ANN) algorithm. The classification models suggested that several representative substructures, including nitrile, hetero N nonbasic, alkylchloride and amine-containing fragments are main contributors for the high toxicity of NNCs. Overall, the developed QSAR and classification models of the rat acute oral toxicity of NNCs showed satisfying predictive abilities. The results provide an insight into the understanding of the toxicity mechanism of NNCs in vivo, which might be used for a preliminary assessment of NNCs toxicity to mammals.
机译:为了更好地了解N-亚硝基化合物(NNCs)的体内毒性机理,使用了80种NNC与大鼠急性口腔毒性数据(50%致死剂量浓度,LD50)相关的毒性数据,建立了定量的构效关系(QSAR)和分类模型。结合了量子化学方法计算出的描述子和Dragon描述子来描述所有化合物的分子信息。遗传算法(GA)和多元线性回归(MLR)分析相结合,以开发QSAR模型。使用指纹和机器学习方法来建立分类模型。通过内部和外部验证技术,评估了所有已建立模型的质量和预测性能。获得最佳的基于GA-MLR的包含8个分子描述符的QSAR模型,Q 2 loo = 0.7533,R 2 = 0.8071,Q 2 ext = 0.7041,R 2 ext = 0.7195。从QSAR研究得出的结果表明,NNC的急性口服毒性主要取决于三个因素,即极化率,电离电势(IP)和C-O键的存在与否和频率。对于分类研究,使用MACCS密钥指纹结合人工神经网络(ANN)算法获得了最佳模型。分类模型表明,几个代表性的亚结构,包括腈,杂氮非碱性,烷基氯化物和含胺片段,是造成NNC高毒性的主要因素。总体而言,已开发的QSAR和NNCs大鼠急性口腔毒性的分类模型显示出令人满意的预测能力。结果为了解NNC在体内的毒性机制提供了见识,可用于NNC对哺乳动物的毒性的初步评估。

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