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细胞色素P450 3A4抑制剂和非抑制剂的分类模型。

Classification models for CYP450 3A4 inhibitors and non-inhibitors.

作者信息

Choi Inhee, Kim Sun Young, Kim Hanjo, Kang Nam Sook, Bae Myung Ae, Yoo Seung-Eun, Jung Jihoon, No Kyoung Tai

机构信息

Institute of Life Science and Biotechnology, Yonsei University, Seoul 120-749, Republic of Korea.

出版信息

Eur J Med Chem. 2009 Jun;44(6):2354-60. doi: 10.1016/j.ejmech.2008.08.013. Epub 2008 Sep 18.

Abstract

Cytochrome P450 3A4 (CYP3A4) is the predominant enzyme involved in the oxidative metabolic pathways of many drugs. The inhibition of this enzyme in many cases leads to an undesired accumulation of the administered therapeutic agent. The purpose of this study is to develop in silico model that can effectively distinguish human CYP3A4 inhibitors from non-inhibitors. Structural diversity of the drug-like compounds CYP3A4 inhibitors and non-inhibitors was obtained from Fujitsu Database and Korea Research Institute of Chemical Technology (KRICT) as training and test sets, respectively. Recursive Partitioning (RP) method was introduced for the classification of inhibitor and non-inhibitor of CYP3A4 because it is an easy and quick classification method to implement. The 2D molecular descriptors were used to classify the compounds into respective inhibitors and non-inhibitors by calculation of the physicochemical properties of CYP3A4 inhibitors such as molecular weights and fractions of 2D VSA chargeable groups. The RP tree model reached 72.33% of accuracy and exceeded this percentage for the sensitivity (75.82%) parameter. This model is further validated by the test set where both accuracy and sensitivity were 72.58% and 82.64%, respectively. The accuracy of the random forest model was increased to 73.8%. The 2D descriptors sufficiently represented the molecular features of CYP3A4 inhibitors. Our model can be used for the prediction of either CYP3A4 inhibitors or non-inhibitors in the early stages of the drug discovery process.

摘要

细胞色素P450 3A4(CYP3A4)是参与多种药物氧化代谢途径的主要酶。在许多情况下,该酶的抑制会导致所施用治疗剂的意外蓄积。本研究的目的是开发一种计算机模拟模型,该模型能够有效地区分人CYP3A4抑制剂和非抑制剂。分别从富士通数据库和韩国化学技术研究院(KRICT)获取类药物化合物CYP3A4抑制剂和非抑制剂的结构多样性作为训练集和测试集。引入递归划分(RP)方法对CYP3A4的抑制剂和非抑制剂进行分类,因为它是一种易于实施且快速的分类方法。通过计算CYP3A4抑制剂的物理化学性质(如分子量和二维VSA可充电基团分数),使用二维分子描述符将化合物分类为各自的抑制剂和非抑制剂。RP树模型的准确率达到72.33%,并且在敏感性(75.82%)参数上超过了该百分比。该模型通过测试集进一步验证,其中准确率和敏感性分别为72.58%和82.64%。随机森林模型的准确率提高到了73.8%。二维描述符充分代表了CYP3A4抑制剂的分子特征。我们的模型可用于在药物发现过程的早期阶段预测CYP3A4抑制剂或非抑制剂。

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