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一种用于分类人细胞色素P450 3A4抑制剂的支持向量机方法。

A support vector machine approach to classify human cytochrome P450 3A4 inhibitors.

作者信息

Kriegl Jan M, Arnhold Thomas, Beck Bernd, Fox Thomas

机构信息

Computational Chemistry, Department of Lead Discovery, Boehringer Ingelheim Pharma GmbH & Co. KG, D-88397, Biberach, Germany.

出版信息

J Comput Aided Mol Des. 2005 Mar;19(3):189-201. doi: 10.1007/s10822-005-3785-3.

Abstract

The cytochrome P450 (CYP) enzyme superfamily plays a major role in the metabolism of commercially available drugs. Inhibition of these enzymes by a drug may result in a plasma level increase of another drug, thus leading to unwanted drug-drug interactions when two or more drugs are coadministered. Therefore, fast and reliable in silico methods predicting CYP inhibition from calculated molecular properties are an important tool which can be applied to assess both already synthesized as well as virtual compounds. We have studied the performance of support vector machines (SVMs) to classify compounds according to their potency to inhibit CYP3A4. The data set for model generation consists of more than 1300 structural diverse drug-like research molecules which were divided into training and test sets. The predictive power of SVMs crucially depends on a careful selection of parameters specifying the kernel function and the penalty for misclassifications. In this study we have investigated a procedure to identify a valid set of SVM parameters which is based on a sampling of the parameter space on a regular grid. From this set of parameters, either single SVMs or SVM committees were trained to distinguish between strong and weak inhibitors or to achieve a more realistic three-class assignment, with one class representing medium inhibitors. This workflow was studied for several kernel functions and descriptor sets. All SVM models performed significantly better than PLS-DA models which were generated from the corresponding descriptor sets. As a very promising result, simple two-dimensional (2D) descriptors yield a three-class model which correctly classifies more than 70% of the test set. Our work illustrates that SVMs used in combination with simple 2D descriptors provide a very effective and reliable tool which allows a fast assessment of CYP3A4 inhibition potency in an early in silico filtering process.

摘要

细胞色素P450(CYP)酶超家族在市售药物的代谢中起主要作用。一种药物对这些酶的抑制可能导致另一种药物的血浆水平升高,因此当两种或更多种药物同时给药时会导致不良的药物相互作用。因此,基于计算出的分子性质快速可靠地预测CYP抑制的计算机模拟方法是一种重要工具,可用于评估已合成的化合物以及虚拟化合物。我们研究了支持向量机(SVM)根据化合物抑制CYP3A4的能力进行分类的性能。用于模型生成的数据集由1300多种结构多样的类药物研究分子组成,这些分子被分为训练集和测试集。SVM的预测能力关键取决于对指定核函数和错误分类惩罚的参数的仔细选择。在本研究中,我们研究了一种基于规则网格上参数空间采样来识别有效SVM参数集的程序。从这组参数中,训练单个SVM或SVM委员会以区分强抑制剂和弱抑制剂,或实现更实际的三类分类,其中一类代表中等抑制剂。针对几种核函数和描述符集研究了此工作流程。所有SVM模型的性能均明显优于从相应描述符集生成的PLS-DA模型。作为一个非常有前景的结果,简单的二维(2D)描述符产生了一个三类模型,该模型正确分类了超过70%的测试集。我们的工作表明,SVM与简单的2D描述符结合使用提供了一种非常有效和可靠的工具,可在早期计算机模拟筛选过程中快速评估CYP3A4抑制能力。

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