计算机与应用化学
計算機與應用化學
계산궤여응용화학
COMPUTERS AND APPLIED CHEMISTRY
2011年
11期
1377-1380
,共4页
支持向量机%定量结构性质关系%二取代[(吖啶-4-酰胺基)丙基]甲胺类衍生物
支持嚮量機%定量結構性質關繫%二取代[(吖啶-4-酰胺基)丙基]甲胺類衍生物
지지향량궤%정량결구성질관계%이취대[(아정-4-선알기)병기]갑알류연생물
support vector regression%multiple tmear regression%partial least squares%back-propagation neural networks
采用支持向量机回归(SVR)方法研究了40个抗癌化合物-二取代[(吖啶-4-酰胺基)丙基]甲胺类衍生物的定量构效关系,基于留一法交叉验证的结果,其平均相对误差是6.56%.结果表明,所建SVR模型的精度高于逆传播人工神经网络(BPANN)、多元线性回归(MLR)和偏最小二乘法(PLS)所得的结果.
採用支持嚮量機迴歸(SVR)方法研究瞭40箇抗癌化閤物-二取代[(吖啶-4-酰胺基)丙基]甲胺類衍生物的定量構效關繫,基于留一法交扠驗證的結果,其平均相對誤差是6.56%.結果錶明,所建SVR模型的精度高于逆傳播人工神經網絡(BPANN)、多元線性迴歸(MLR)和偏最小二乘法(PLS)所得的結果.
채용지지향량궤회귀(SVR)방법연구료40개항암화합물-이취대[(아정-4-선알기)병기]갑알류연생물적정량구효관계,기우류일법교차험증적결과,기평균상대오차시6.56%.결과표명,소건SVR모형적정도고우역전파인공신경망락(BPANN)、다원선성회귀(MLR)화편최소이승법(PLS)소득적결과.
In this work,support vector regression(SVR),an effective machine learning method,proposed by Vapnik was applied to establish QSAR model for a series of novel anticancer agents-bis[(acridine-4-carboxamides)propyl]methylamines.Six descriptors(including HOMO,LUMO+,Surface Area Grid,RMS Gradient,Polarizability and LogP)were selected for constructing the SVR mode by using floating searching feature selection mechod.The kernel function(including the linear kernel function,the polynomial kernel function,and the RBF kernel function)and parameters(ε,C,and g)were adjusted by leave-one-out cross validation(LOOCV)method which was used to judge the predictive power of different models.After optimization,one optimal SVR-QSAR model was attained,and the mean relative errors(MREs)of LOOCV by using SVR is 6.56%.Based on the LOOCV test,the performance of SVR model is also compared with back-propagation neural networks(BP-ANN),multiple linear regression(MLR)and partial least squares(PLS)for this real world data set.The results show that the performance of SVR model outperforms those of MLR,PLS and BP-ANN for this case study.Finally,sensitivity analysis was employed to study how the six descriptors affect the activity.As a result,HOMO,Polarizability,Surface Area Grid negatively affected the activity,LogP positively affected the activity.