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首页> 外文期刊>Journal of Medicinal Chemistry >Recursive partitioning for the prediction of cytochromes P450 2D6 and 1A2 inhibition: Importance of the quality of the dataset
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Recursive partitioning for the prediction of cytochromes P450 2D6 and 1A2 inhibition: Importance of the quality of the dataset

机译:递归分区预测细胞色素P450 2D6和1A2抑制:数据集质量的重要性

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摘要

The purpose of this study was to explore the use of detailed biological data in combination with a statistical learning method for predicting the CYP1A2 and CYP2D6 inhibition. Data were extracted from the Aureus-Pharma highly structured databases which contain precise measures and detailed experimental protocol concerning the inhibition of the two cytochromes. The methodology used was Recursive Partitioning, an easy and quick method to implement. The building of models was preceded by the evaluation of the chemical space covered by the datasets. The descriptors used are available in the MOE software suite. The models reached at least 80% of Accuracy and often exceeded this percentage for the Sensitivity (Recall), Specificity, and Precision parameters. CYP2D6 datasets provided 11 models with Accuracy over 80%, while CYP1A2 datasets counted 5 high-accuracy models. Our models can be useful to predict the ADME properties during the drug discovery process and are indicated for high-throughput screening.
机译:本研究的目的是探索将详细的生物学数据与统计学习方法结合使用来预测CYP1A2和CYP2D6的抑制作用。数据从Aureus-Pharma高度结构化的数据库中提取,该数据库包含有关抑制两种细胞色素的精确方法和详细实验方案。使用的方法是递归分区,这是一种易于实现的快速方法。在建立模型之前,先评估数据集覆盖的化学空间。 MOE软件套件中提供了使用的描述符。这些模型至少达到了80%的准确度,并且在灵敏度(召回率),特异性和精密度参数上经常超过该百分比。 CYP2D6数据集提供了11种准确度超过80%的模型,而CYP1A2数据集统计了5种高精度模型。我们的模型可用于预测药物发现过程中的ADME特性,并用于高通量筛选。

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