The Inhibition of α-chymotrypsin predicted using theoretically derived molecular properties

Bernd Beck , Robert C. Glen , Timothy Clark
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引用次数: 7

Abstract

The structures and molecular properties of 95 aromatic and heteroaromatic ligands previously tested as reversible inhibitors of chymotrypsin catalysis have been calculated using AM1. The properties obtained have been used as input for multiple linear regression analysis and as descriptors for a back-propagation neural network to predict the binding affinity of α-chymotrypsin inhibitors. Using polarizability, molecular shape, electrostatic similarity, dipole moment, ClogP, and the diagonalized quadrupole moments of the ligands, correlation coefficients between calculated and experimental affinities of 0.96 for the training set and 0.89 for the test set were obtained using a neural network. The performance of the multiple linear regression was significantly worse, although useful QSARs were also obtained.

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α-凝乳胰蛋白酶的抑制作用用理论推导的分子性质预测
使用AM1计算了95种芳香和杂芳香配体的结构和分子性质,这些配体以前被测试为凝乳胰蛋白酶催化的可逆抑制剂。所获得的性质已被用作多元线性回归分析的输入,并作为反向传播神经网络的描述符来预测α-凝乳胰蛋白酶抑制剂的结合亲和力。利用配体的极化率、分子形状、静电相似度、偶极矩、ClogP和对角化四极矩,通过神经网络计算得到训练集和测试集的亲和系数分别为0.96和0.89。虽然也获得了有用的qsar,但多元线性回归的性能明显较差。
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