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首页> 外文期刊>Journal of molecular graphics & modelling >Predicting human liver microsomal stability with machine learning techniques
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Predicting human liver microsomal stability with machine learning techniques

机译:使用机器学习技术预测人肝微粒体的稳定性

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To ensure a continuing pipeline in pharmaceutical research, lead candidates must possess appropriate metabolic stability in the drug discovery process. In vitro ADMET (absorption, distribution, metabolism, elimination, and toxicity) screening provides us with useful information regarding the metabolic stability of compounds. However, before the synthesis stage, an efficient process is required in order to deal with the vast quantity of data from large compound libraries and high-throughput screening. Here we have derived a relationship between the chemical structure and its metabolic stability for a data set of in-house compounds by means of various in silico machine learning such as random forest, support vector machine (SVM), logistic regression, and recursive partitioning. For model building, 1952 proprietary compounds comprising two classes (stable/unstable) were used with 193 descriptors calculated by Molecular Operating Environment. The results using test compounds have demonstrated that all classifiers yielded satisfactory results (accuracy > 0.8, sensitivity > 0.9, specificity > 0.6, and precision > 0.8). Above all, classification by random forest as well as SVM yielded kappa values of approximately 0.7 in an independent validation set, slightly higher than other classification tools. These results suggest that nonlinear/ensemble-based classification methods might prove useful in the area of in silico ADME modeling. (C) 2007 Elsevier Inc. All rights reserved.
机译:为了确保药物研究的持续进行,潜在候选药物在药物发现过程中必须具有适当的代谢稳定性。体外ADMET(吸收,分布,代谢,消除和毒性)筛选为我们提供了有关化合物代谢稳定性的有用信息。但是,在合成阶段之前,需要一个有效的过程来处理来自大型化合物库和高通量筛选的大量数据。在这里,我们通过各种计算机软件,例如随机森林,支持向量机(SVM),逻辑回归和递归分区,得出了内部化合物数据集的化学结构与其代谢稳定性之间的关系。对于模型构建,使用了包含两类(稳定/不稳定)的1952个专有化合物,并通过Molecular Operating Environment计算了193个描述符。使用测试化合物的结果表明,所有分类器均产生令人满意的结果(准确度> 0.8,灵敏度> 0.9,特异性> 0.6和精度> 0.8)。最重要的是,在独立的验证集中,通过随机森林以及SVM进行的分类得出的kappa值约为0.7,略高于其他分类工具。这些结果表明,基于非线性/集成的分类方法可能在计算机模拟ADME建模领域被证明是有用的。 (C)2007 Elsevier Inc.保留所有权利。

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