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首页> 外文期刊>Research in Pharmaceutical Sciences >Prediction of p38 map kinase inhibitory activity of 3, 4-dihydropyrido [3, 2-d] pyrimidone derivatives using an expert system based on principal component analysis and least square support vector machine
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Prediction of p38 map kinase inhibitory activity of 3, 4-dihydropyrido [3, 2-d] pyrimidone derivatives using an expert system based on principal component analysis and least square support vector machine

机译:基于主成分分析和最小二乘支持向量机的专家系统预测3,4-二氢吡啶并[3,2-d]嘧啶酮衍生物的p38图激酶抑制活性

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摘要

A quantitative structure–activity relationship (QSAR) study is suggested for the prediction of biological activity (pIC 50 ) of 3, 4-dihydropyrido [3 ,2-d] pyrimidone derivatives as p38 inhibitors. Modeling of the biological activities of compounds of interest as a function of molecular structures was established by means of principal component analysis (PCA) and least square support vector machine (LS-SVM) methods. The results showed that the pIC 50 values calculated by LS-SVM are in good agreement with the experimental data, and the performance of the LS-SVM regression model is superior to the PCA-based model. The developed LS-SVM model was applied for the prediction of the biological activities of pyrimidone derivatives, which were not in the modeling procedure. The resulted model showed high prediction ability with root mean square error of prediction of 0.460 for LS-SVM. The study provided a novel and effective approach for predicting biological activities of 3, 4-dihydropyrido [3,2-d] pyrimidone derivatives as p38 inhibitors and disclosed that LS-SVM can be used as a powerful chemometrics tool for QSAR studies.
机译:建议进行定量结构-活性关系(QSAR)研究,以预测作为p38抑制剂的3,4-二氢吡啶并[3,2-d]嘧啶酮衍生物的生物活性(pIC 50)。通过主成分分析(PCA)和最小二乘支持向量机(LS-SVM)方法建立了目标化合物作为分子结构的生物学活性的模型。结果表明,LS-SVM计算得到的pIC 50值与实验数据吻合良好,并且LS-SVM回归模型的性能优于基于PCA的模型。所开发的LS-SVM模型被用于预测嘧啶酮衍生物的生物学活性,而建模过程中没有。所得模型具有较高的预测能力,对LS-SVM的预测均方根误差为0.460。该研究为预测​​3,4-二氢吡啶并[3,2-d]嘧啶酮衍生物作为p38抑制剂的生物学活性提供了一种新颖有效的方法,并公开了LS-SVM可用作QSAR研究的强大化学计量学工具。

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