Quantitative Structure-Activity Relationships (QSAR) Study of Flavonoid Derivatives for Inhibition of Cytochrome P450 1A2

T. Moon, M. Chi, Donghyun Kim, C. Yoon, Young-Sang Choi
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引用次数: 32

Abstract

The quantitative structure-activity relationships (QSAR) studies on flavonoid derivatives as cytochrome P450 1A2 inhibitors were performed using multiple linear regression analysis (MLR) and neural networks (NN). The results of MLR and NN show that Hammett constant, the highest occupied molecular orbital energy (HOMO), the nonoverlap steric volume, the partial charge of C3 carbon atom, and the HOMO π coefficients of C3, C3′ and C4′ carbon atoms of flavonoids play an important role in inhibitory activity. The correlations between the descriptors and the activities were improved by neural networks although the descriptors of optimum MLR model were used in the networks, which implies that the descriptors used in MLR model include nonlinear relationships. Moreover, neural networks using descriptors selected by the pruning method gave higher r2 value than neural networks using MLR descriptors.
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类黄酮衍生物抑制细胞色素P450 - 1A2的定量构效关系研究
采用多元线性回归分析(MLR)和神经网络(NN)对黄酮类衍生物作为细胞色素P450 1A2抑制剂的构效关系进行了定量研究。MLR和NN结果表明,汉米特常数、最高已占据分子轨道能(HOMO)、非重叠空间体积、C3碳原子的部分电荷以及C3、C3′和C4′碳原子的HOMO π系数对黄酮类化合物的抑制活性有重要影响。尽管网络中使用了最优MLR模型的描述符,但神经网络改善了描述符与活动之间的相关性,这表明MLR模型中使用的描述符包含非线性关系。此外,使用剪枝方法选择描述符的神经网络比使用MLR描述符的神经网络具有更高的r2值。
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