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Fast Methods for Prediction of Aldehyde Oxidase-Mediated Site-of-Metabolism

机译:醛氧化酶介导的代谢位点的快速预测方法

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摘要

Aldehyde Oxidase (AO) is an enzyme involved in the metabolism of aldehydes and N-containing heterocyclic compounds. Many drug compounds contain heterocyclic moieties, and AO metabolism has lead to failure of several late-stage drug candidates. Therefore, it is important to take AO-mediated metabolism into account early in the drug discovery process, and thus, to have fast and reliable models to predict the site of metabolism (SOM). We have collected a dataset of 78 substrates of human AO with a total of 89 SOMs and 347 non-SOMs and determined atomic descriptors for each compound. The descriptors comprise NMR shielding and ESP charges from density functional theory (DFT), NMR chemical shift from ChemBioDraw, and Gasteiger charges from RDKit. Additionally, atomic accessibility was considered using 2D-SASA and relative span descriptors from SMARTCyp. Finally, stability of the product, the metabolite, was determined with DFT and also used as a descriptor. All descriptors have AUC larger than 0.75. In particular, descriptors related to the chemical shielding and chemical shift (AUC = 0.96) and ESP charges (AUC = 0.96) proved to be good descriptors. We recommend two simple methods to identify the SOM for a given molecule: 1) use ChemBioDraw to calculate the chemical shift or 2) calculate ESP charges or chemical shift using DFT. The first approach is fast but somewhat difficult to automate, while the second is more time-consuming, but can easily be automated. The two methods predict correctly 93% and 91%, respectively, of the 89 experimentally observed SOMs.
机译:醛氧化酶(AO)是一种参与醛和含氮杂环化合物代谢的酶。许多药物化合物都含有杂环部分,并且AO代谢导致几种晚期药物候选者失败。因此,重要的是在药物发现过程的早期就考虑到AO介导的代谢,因此,具有快速可靠的模型来预测代谢位点(SOM)。我们已经收集了人类AO的78种底物的数据集,总共有89个SOM和347个非SOM,并确定了每种化合物的原子描述符。描述符包括来自密度泛函理论(DFT)的NMR屏蔽和ESP电荷,来自ChemBioDraw的NMR化学位移和来自RDKit的Gasteiger电荷。另外,使用2D-SASA和SMARTCyp的相对跨度描述符考虑了原子可访问性。最后,用DFT测定产物代谢产物的稳定性,并用作描述子。所有描述符的AUC均大于0.75。特别地,与化学屏蔽和化学位移(AUC = 0.96)和ESP电荷(AUC = 0.96)有关的描述符被证明是很好的描述符。我们推荐两种简单的方法来识别给定分子的SOM:1)使用ChemBioDraw计算化学位移,或2)使用DFT计算ESP电荷或化学位移。第一种方法速度快,但是自动化起来有些困难,而第二种方法比较耗时,但是很容易实现自动化。两种方法分别可以正确预测89个实验观察到的SOM中的93%和91%。

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