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首页> 外文期刊>Journal of chemical information and modeling >XenoSite: Accurately Predicting CYP-Mediated Sites of Metabolism with Neural Networks
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XenoSite: Accurately Predicting CYP-Mediated Sites of Metabolism with Neural Networks

机译:XenoSite:使用神经网络准确预测CYP介导的代谢位点

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Understanding how xenobiotic molecules are metabolized is important because it influences the safety, efficacy, and dose of medicines and how they can be modified to improve these properties. The cytochrome P450s (CYPs) are proteins responsible for metabolizing 90% of drugs on the market, and many computational methods can predict which atomic sites of a moleculesites of metabolism (SOMs)are modified during CYP-mediated metabolism. This study improves on prior methods of predicting CYPmediated SOMs by using new descriptors and machine learning based on neural networks. The new method, XenoSite, is faster to train and more accurate by as much as 4% or 5% for some isozymes. Furthermore, some “incorrect” predictions made by XenoSite were subsequently validated as correct predictions by revaluation of the source literature. Moreover, XenoSite output is interpretable as a probability, which reflects both the confidence of the model that a particular atom is metabolized and the statistical likelihood that its prediction for that atom is correct.
机译:了解异种分子如何代谢非常重要,因为它会影响药物的安全性,功效和剂量,以及如何对其进行修饰以改善这些特性。细胞色素P450(CYP)是负责代谢市场上90%药物的蛋白质,许多计算方法可以预测在CYP介导的代谢过程中修饰分子的哪些原子位点(SOM)。这项研究通过使用新的描述符和基于神经网络的机器学习改进了预测CYP介导的SOM的现有方法。对于某些同工酶,新方法XenoSite的训练速度更快,准确度高达4%或5%。此外,通过重新评估原始文献,XenoSite做出的一些“不正确”预测随后被确认为正确预测。此外,XenoSite的输出可解释为概率,它既反映了模型对特定原子代谢的置信度,又反映了其对该原子的预测正确的统计可能性。

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