Identification of the Dual Action Antihypertensive Drugs Using TFS-Based Support Vector Machines

IF 0.4 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY Chem-Bio Informatics Journal Pub Date : 2009-01-01 DOI:10.1273/CBIJ.10.E_1
Kentaro Kawai, Yoshimasa Takahashi
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引用次数: 16

Abstract

Recently, many concerns are paid for dual action drugs such as ACE/NEP dual inhibitors which have two different biological activities. To identify multiple active drugs by supervised learning approach, a multi-label classification technique is required. In the present work, we investigated the classification of antihypertensive drugs including ACE/NEP dual inhibitors using support vector machines (SVMs). Biological activity data of the drugs were taken from the MDDR database and they were employed for the computational trial for the training of the SVM classifiers. Structural feature representation of each drug molecule was based on topological fragment spectra (TFS) method. The obtained classifiers were tested for finding ACE/NEP dual inhibitors. The result suggests that the TFS-based SVM classifiers are useful for finding multiple active drugs such as ACE/NEP dual inhibitors.
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基于tfs的支持向量机识别双作用降压药
近年来,ACE/NEP双抑制剂等具有两种不同生物活性的双作用药物备受关注。为了通过监督学习方法识别多种活性药物,需要一种多标签分类技术。本研究利用支持向量机(svm)对包括ACE/NEP双抑制剂在内的降压药物进行分类。药物的生物活性数据取自MDDR数据库,并用于SVM分类器训练的计算试验。每个药物分子的结构特征表示基于拓扑片段谱(TFS)方法。对获得的分类器进行检测,以寻找ACE/NEP双抑制剂。结果表明,基于tfs的SVM分类器可用于寻找ACE/NEP双抑制剂等多种活性药物。
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来源期刊
Chem-Bio Informatics Journal
Chem-Bio Informatics Journal BIOCHEMISTRY & MOLECULAR BIOLOGY-
CiteScore
0.60
自引率
0.00%
发文量
8
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