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首页> 外文期刊>Journal of chemical information and modeling >RS-predictor: A new tool for predicting sites of cytochrome P450-mediated metabolism applied to CYP 3A4
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RS-predictor: A new tool for predicting sites of cytochrome P450-mediated metabolism applied to CYP 3A4

机译:RS-predictor:一种用于预测细胞色素P450介导的代谢部位的新工具,应用于CYP 3A4

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This article describes RegioSelectivity-Predictor (RS-Predictor), a new in silico method for generating predictive models of P450-mediated metabolism for drug-like compounds. Within this method, potential sites of metabolism (SOMs) are represented as "metabolophores": A concept that describes the hierarchical combination of topological and quantum chemical descriptors needed to represent the reactivity of potential metabolic reaction sites. RS-Predictor modeling involves the use of metabolophore descriptors together with multiple-instance ranking (MIRank) to generate an optimized descriptor weight vector that encodes regioselectivity trends across all cases in a training set. The resulting pathway-independent (O-dealkylation vs N-oxidation vs Csp 3 hydroxylation, etc.), isozyme-specific regioselectivity model may be used to predict potential metabolic liabilities. In the present work, cross-validated RS-Predictor models were generated for a set of 394 substrates of CYP 3A4 as a proof-of-principle for the method. Rank aggregation was then employed to merge independently generated predictions for each substrate into a single consensus prediction. The resulting consensus RS-Predictor models were shown to reliably identify at least one observed site of metabolism in the top two rank-positions on 78% of the substrates. Comparisons between RS-Predictor and previously described regioselectivity prediction methods reveal new insights into how in silico metabolite prediction methods should be compared.
机译:本文介绍了RegioSelectivity-Predictor(RS-Predictor),这是一种新的计算机模拟方法,用于生成P450介导的药物样化合物代谢的预测模型。在这种方法中,潜在的代谢位点(SOM)表示为“代谢型”:一种概念,描述了表示潜在代谢反应位点反应性所需的拓扑和量子化学描述符的层次组合。 RS-Predictor建模涉及使用代谢物描述符与多实例排名(MIRank)一起生成优化的描述符权重向量,该向量对训练集中所有情况下的区域选择性趋势进行编码。所得的与途径无关的(O-脱烷基相对于N-氧化相对于Csp 3羟基化等),同工酶特异性区域选择性模型可用于预测潜在的代谢负债。在本工作中,针对一组394个CYP 3A4底物生成了交叉验证的RS-Predictor模型,作为该方法的原理证明。然后采用秩聚合将每个底物的独立生成的预测合并为单个共识预测。结果表明,所得的共有RS-Predictor模型能够可靠地识别出78%底物上前两个排名至少一个观察到的代谢位点。 RS-Predictor与先前描述的区域选择性预测方法之间的比较揭示了如何比较计算机代谢产物预测方法的新见识。

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