首页> 外文期刊>European Journal of Medicinal Chemistry: Chimie Therapeutique >Classification of estrogen receptor-beta ligands on the basis of their binding affinities using support vector machine and linear discriminant analysis.
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Classification of estrogen receptor-beta ligands on the basis of their binding affinities using support vector machine and linear discriminant analysis.

机译:使用支持向量机和线性判别分析,根据结合亲和力对雌激素受体-β配体进行分类。

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摘要

Classification models of estrogen receptor-beta ligands were proposed using linear and nonlinear models. The data set was divided into active and inactive classes on the basis of their binding affinities. The two-class problem (active, inactive) was firstly explored by linear classifier approach, linear discriminant analysis (LDA). In order to get a more accurate prediction model, the nonlinear novel machine learning technique, support vectors machine (SVM), was subsequently used to investigate. The heuristic method (HM) was used to pre-select the whole descriptor sets. The model containing eight descriptors founded by SVM, showed better predictive ability than LDA. The accuracy in prediction for the training, test and overall data sets are 92.9%, 85.8% and 91.4% for SVM, 83.1%, 76.1% and 81.9% for LDA, respectively. The results indicate that SVM can be used as a powerful modeling tool for QSAR studies.
机译:使用线性和非线性模型提出了雌激素受体-β配体的分类模型。根据它们的绑定亲和力,将数据集分为活动类和非活动类。首先通过线性分类器方法,线性判别分析(LDA)探索两类问题(活动,不活动)。为了获得更准确的预测模型,随后使用了非线性新型机器学习技术,即支持向量机(SVM)。启发式方法(HM)用于预先选择整个描述符集。由SVM建立的包含八个描述符的模型显示出比LDA更好的预测能力。支持向量机的训练,测试和总体数据集的预测准确性分别为92.9%,85.8%和91.4%,LDA分别为83.1%,76.1%和81.9%。结果表明,SVM可以用作QSAR研究的强大建模工具。

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