Support Vector Regression based QSAR of anti-Haemophilus Influenzae activity of orally administered cephalosporins

Qin Yang, W. Lu, X. Liu, T. Gu
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引用次数: 1

Abstract

Support Vector Regression (SVR), a novel robust machine learning technology, was applied to QSAR on the anti-Haemophilus Influenzae (HI) activity of 69 orally active cephalosporins. The optimal model was built with three descriptors-MR, qC7 and qO9, which came from 23 descriptors available. The prediction accuracy of the model was discussed on the basis of Leave-One-Out Cross-Validation (LOOCV) and the independent test dataset. Eighteen newly designed molecules are highly recommended for synthesis scientists based on the SVR model obtained.
基于支持向量回归的口服头孢菌素抗流感嗜血杆菌活性QSAR
将支持向量回归(SVR)这一新的鲁棒机器学习技术应用于69种口服头孢菌素抗流感嗜血杆菌(HI)活性的QSAR。从23个描述符中选取mr、qC7和qO9三个描述符构建最优模型。基于留一交叉验证(Leave-One-Out Cross-Validation, LOOCV)和独立测试数据集对模型的预测精度进行了讨论。基于得到的SVR模型,18个新设计的分子被强烈推荐给合成科学家。
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