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Support vector machine applied in QSAR modelling
作者姓名:MEI  Hu  ZHOU  Yuan  LIANG  Guizhao  LI  Zhiliang
作者单位:[1]College of Chemistry and Chemical Engineering, Chongqing University, Chongqing 400044, China [2]Key Laboratory of Biomedical Engineering of Ministry of Education and Chongqing City, Chongqing 400044, China [3]College of Bioengineering. Chongqing University, Chongqing 400044, China
基金项目:Congratulation devoted to Prof. Ruqin Yu. standing member of the Chinese Academy of Sciences (CAS) and late President of Hunan University (HNU), on the occasion of his 70th birthday.
摘    要:Support vector machine (SVM), partial least squares (PLS), and Back-Propagation artificial neural network (ANN) were employed to establish QSAR models of 2 dipeptide datasets. In order to validate predictive capabilities on external dataset of the resulting models, both internal and external validations were performed. The division of dataset into both training and test sets was carried out by D-optimal design. The results showed that support vector machine (SVM) behaved well in both calibration and prediction. For the dataset of 48 bitter tasting dipeptides (BTD), the results obtained by support vector regression (SVR) were superior to that by PLS in both calibration and prediction. When compared with BP artificial neural network, SVR showed less calibration power but more predictive capability. For the dataset of angiotensin-converting enzyme (ACE) inhibitors, the results obtained by support vector machine (SVM) regression were equivalent to those by PLS and BP artificial neural network. In both datasets, SVR using linear kernel function behaved well as that using radial basis kernel function. The results showed that there is wide prospect for the application of support vector machine (SVM) into QSAR modeling.

关 键 词:支撑向量装置  SVM  最小二乘法  QSAR模型  人工神经网络
收稿时间:2005-01-06
修稿时间:2005-01-062005-04-07

Support vector machine applied in QSAR modelling
MEI Hu ZHOU Yuan LIANG Guizhao LI Zhiliang.Support vector machine applied in QSAR modelling[J].Chinese Science Bulletin,2005,50(20):2291-2296.
Authors:Hu Mei  Yuan Zhou  Guizhao Liang  Zhiliang Li
Institution:MEI Hu1,2, ZHOU Yuan3, LIANG Guizhao3 & LI Zhiliang1,2 1. College of Chemistry and Chemical Engineering, Chongqing Univer- sity, Chongqing 400044, China; 2. Key Laboratory of Biomedical Engineering of Ministry of Education and Chongqing City, Chongqing 400044, China; 3. College of Bioengineering, Chongqing University, Chongqing 400044, China
Abstract:Support vector machine (SVM), partial least squares (PLS), and Back-Propagation artificial neural net- work (ANN) were employed to establish QSAR models of 2 dipeptide datasets. In order to validate predictive capabilities on external dataset of the resulting models, both internal and external validations were performed. The division of dataset into both training and test sets was carried out by D-optimal design. The results showed that support vector machine (SVM) behaved well in both calibration and prediction. For the dataset of 48 bitter tasting dipeptides (BTD), the results obtained by support vector regression (SVR) were superior to that by PLS in both calibration and prediction. When compared with BP artificial neural network, SVR showed less calibration power but more predictive capability. For the dataset of angiotensin-converting enzyme (ACE) inhibitors, the results obtained by support vector machine (SVM) re- gression were equivalent to those by PLS and BP artificial neural network. In both datasets, SVR using linear kernel function behaved well as that using radial basis kernel func- tion. The results showed that there is wide prospect for the application of support vector machine (SVM) into QSAR modeling.
Keywords:support vector machine (SVM)  partial least squares  (PLS)  back-propagation (BP) artificial neural network (ANN)    quantitative structure-activity relationship (QSAR)  
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