Development of quantitative structure-activity relationship models to predict potential nephrotoxic ingredients in traditional Chinese medicines

数量结构-活动关系 支持向量机 肾毒性 天然产物 人工神经网络 机器学习 计算机科学 生化工程 人工智能 毒性 化学 工程类 立体化学 有机化学
作者
Yuqing Sun,Shi Shaoze,Yaqiu Li,Qi Wang
出处
期刊:Food and Chemical Toxicology [Elsevier BV]
卷期号:128: 163-170 被引量:38
标识
DOI:10.1016/j.fct.2019.03.056
摘要

The broad use of traditional Chinese medicines (TCMs) and the accompanied incidences of kidney injury have attracted considerable interest in investigating the responsible toxic ingredients. It is challenging to evaluate toxicity of TCMs since they contain complex mixtures of phytochemicals. Quantitative structure-activity relationship (QSAR) is an efficient tool to predict toxicity and QSAR study on TCMs-induced nephrotoxicity remains lacked. We developed QSAR models using three datasets of 609 compounds: natural products, drugs, and mixed (contained both kinds of data) datasets. Each dataset was used for modelling by utilizing artificial neural networks (ANN) and support vector machines (SVM) algorithms separately. Both internal and external validations were performed on each model. Six QSAR models were developed and yielded reliable performance in the internal validation. For external validation, 30 ingredients in the TCMs were predicted well by the natural product models (accuracy: ANN 96.7%, SVM 93.3%). The mixed models (accuracy: ANN 76.7%, SVM 66.7%) showed a better performance than the drug models (accuracy: ANN 50%, SVM 53.3%). Particularly, natural product models produced the most reliable results. It has the application not only on screening the nephrotoxic ingredients in TCMs, but it is also helpful at prioritizing the subsequent toxicity testing of natural products.
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