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基于机器学习方法的化学物线粒体毒性的计算预测。

In silico prediction of mitochondrial toxicity of chemicals using machine learning methods.

机构信息

Shanghai Key Laboratory of New Drug Design, School of Pharmacy, East China University of Science and Technology, Shanghai, China.

出版信息

J Appl Toxicol. 2021 Oct;41(10):1518-1526. doi: 10.1002/jat.4141. Epub 2021 Jan 20.

Abstract

Mitochondria are important organelles in human cells, providing more than 95% of the energy. However, some drugs and environmental chemicals could induce mitochondrial dysfunction, which might cause complex diseases and even worsen the condition of patients with mitochondrial damage. Some drugs have been withdrawn from the market due to their severe mitochondrial toxicity, such as troglitazone. Therefore, there is an urgent need to develop models that could accurately predict the mitochondrial toxicity of chemicals. In this paper, suitable data were obtained from literature and databases first. Then nine types of fingerprints were used to characterize these compounds. Finally, different algorithms were used to build models. Meanwhile, the applicability domain of the prediction models was defined. We have also explored the structural alerts of mitochondrial toxicity, which would be helpful for medicinal chemists to better predict mitochondrial toxicity and further optimize lead compounds.

摘要

线粒体是人类细胞中的重要细胞器,提供超过 95%的能量。然而,一些药物和环境化学物质可能会导致线粒体功能障碍,这可能导致复杂的疾病,甚至使线粒体损伤患者的病情恶化。一些药物由于其严重的线粒体毒性已被从市场上撤出,例如曲格列酮。因此,迫切需要开发能够准确预测化学物质线粒体毒性的模型。在本文中,首先从文献和数据库中获取了合适的数据。然后使用九种类型的指纹来描述这些化合物。最后,使用不同的算法构建模型。同时,定义了预测模型的适用域。我们还探讨了线粒体毒性的结构警示,这将有助于药物化学家更好地预测线粒体毒性,并进一步优化先导化合物。

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