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Developing a QSAR model for hepatotoxicity screening of the active compounds in traditional Chinese medicines

机译:建立用于中药中活性成分肝毒性筛选的QSAR模型

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The perception that natural substances are deemed safe has made traditional Chinese medicine (TCM) popular in the treatment and prevention of disease globally. However, such an assumption is often misleading owing to a lack of scientific validation. To assess the safety of TCM, in silica screening provides major advantages over the classical laboratory approaches in terms of resource- and time-saving and full reproducibility. To screen the hepatotoxicity of the active compounds of TCMs, a quantitative structure-activity relationship (QSAR) model was firstly established by utilizing drugs from the Liver Toxicity Knowledge Base. These drugs were annotated with drug-induced liver injury information obtained from clinical trials and post-marketing surveillance. The performance of the model after nested 10-fold cross-validation was 79.1%, 91.2%, 53.8% for accuracy, sensitivity, and specificity, respectively. The external validation of 91 well-known ingredients of common herbal medicines yielded a high accuracy (87%). After screening the TCM Database@Taiwan, the world's largest TCM database, a total of 6853 (74.8%) ingredients were predicted to have hepatotoxic potential. The one-hundred chemical ingredients predicted to have the highest hepatotoxic potential by our model were further verified by published literatures. Our study indicated that this model can serve as a complementary tool to evaluate the safety of TCM. (C) 2015 Elsevier Ltd. All rights reserved.
机译:人们认为天然物质被认为是安全的,这使中药在全球疾病的治疗和预防中广受欢迎。但是,由于缺乏科学验证,这种假设经常会产生误导。为了评估中药的安全性,在二氧化硅筛查方面,与传统的实验室方法相比,在节省资源和时间以及完全可重复性方面具有主要优势。为了筛选中药活性成分的肝毒性,首先利用肝毒性知识库中的药物建立了定量构效关系(QSAR)模型。这些药物带有从临床试验和上市后监测中获得的药物诱发的肝损伤信息。嵌套10倍交叉验证后,该模型的准确性,敏感性和特异性分别为79.1%,91.2%,53.8%。外部验证了91种常见草药的众所周知成分,其准确性很高(87%)。在筛选了世界上最大的中药数据库“台湾中药数据库”之后,预计总共有6853(74.8%)种成分具有肝毒性潜力。由我们的模型预测的具有最大肝毒性潜力的一百种化学成分已被已发表的文献进一步证实。我们的研究表明,该模型可以作为评估中药安全性的补充工具。 (C)2015 Elsevier Ltd.保留所有权利。

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