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原子相互作用场三维全息向量(3D-HoVAIF):一种新型的旋转平移不变三维结构描述符及其在肽段中的应用。

Three-dimensional holograph vector of atomic interaction field (3D-HoVAIF): a novel rotation-translation invariant 3D structure descriptor and its applications to peptides.

作者信息

Tian Feifei, Zhou Peng, Lv Fenglin, Song Rong, Li Zhiliang

机构信息

College of Bioengineering, Chongqing University, Chongqing 40044, China.

出版信息

J Pept Sci. 2007 Aug;13(8):549-66. doi: 10.1002/psc.892.

Abstract

Quantitative structure-activity relationship (QSAR) study, important in drug design, mainly involves two aspects, molecular structural characterization (MSC) and construction of a statistical model. MSC focuses on transforming molecular structural and property characteristics into a group of numerical codes, dedicated to minimizing information loss during this process. In this context, common atoms in organic compounds are classified according to their families in the periodic table, and hybridization states, and on the basis of these, three nonbonding interactions (i.e. electrostatic, van der Waals and hydrophobic) are calculated, ultimately resulting in a new rotation-translation invariant, 3D-MSC, as a three-dimensional holograph vector of atomic interaction field (3D-HoVAIF). By applying 3D-HoVAIF to QSAR studies on two classical peptides including 58 angiotensin-converting enzyme (ACE) inhibitors and 48 bitter-tasting dipeptides, we get two excellent genetic algorithm-partial least squares (GA-PLS) models, with statistics r(2), q(2), root mean square error (RMSEE), and root mean square error of cross-validation (RMSCV) of 0.857, 0.811, 0.376, and 0.432 for ACE inhibitors and 0.940, 0.892, 0.153 and 0.205 for bitter-tasting dipeptides, respectively. By equally dividing the two datasets into training and test sets by D-optimal, the 3D-HoVAIF approach undergoes rigorous statistical validation. Furthermore, the superior performance of 3D-HoVAIF is confirmed in comparison with two other peptide MSC approaches referring to z-scale and ISA-ECI. For 58 ACE inhibitors, the GA-PLS model yields two principal components, with the following statistics: r(2) = 0.893, q(2) = 0.824, RMSEE = 0.349, RMSCV = 0.425, q2(ext) = 0.739, r2(ext)= 0.784, r2(0.ext) = 0.781, rf2(0.ext) = 0.77, k = 0.962, k' = 1.019, and RMSEP = 0.460; for 48 bitter-tasting dipeptides, three principal components resulted, with the statistics as: r(2) = 0.950, q(2) = 0.893, RMSEE = 0.152, RMSCV = 0.222, q2(ext)= 0.875, r2(ext) = 0.919, r2(0.ext)= 0.919, rf2(0.ext)= 0.919, k = 1.018, k' = 0.974, and RMSEP = 0.198. In addition, the relationship of ACE-inhibiting activities with bitter-tasting thresholds has been investigated by applying the above-constructed models to predictions on 400 theoretically possible dipeptides. Through analysis, the ACE-inhibiting activities are found to be prominently related to bitter-tasting intensities. Thus, it is deemed to be difficult to find such dipeptides that simultaneously satisfy pharmacodynamic action (high ACE-inhibiting activities) and comfortable tastes, suggesting that active components of dipeptides that are served as functional food to lower blood pressure are not very ideal.

摘要

定量构效关系(QSAR)研究在药物设计中很重要,主要涉及两个方面,即分子结构表征(MSC)和统计模型的构建。MSC专注于将分子结构和性质特征转化为一组数字编码,致力于在此过程中尽量减少信息损失。在此背景下,有机化合物中的常见原子根据其在元素周期表中的族以及杂化状态进行分类,并在此基础上计算三种非键相互作用(即静电、范德华和疏水相互作用),最终产生一种新的旋转平移不变量,即3D-MSC,作为原子相互作用场的三维全息向量(3D-HoVAIF)。通过将3D-HoVAIF应用于对包括58种血管紧张素转换酶(ACE)抑制剂和48种苦味二肽在内的两种经典肽的QSAR研究,我们得到了两个出色的遗传算法-偏最小二乘法(GA-PLS)模型,对于ACE抑制剂,其统计量r(2)、q(2)、均方根误差(RMSEE)和交叉验证均方根误差(RMSCV)分别为0.857、0.811、0.376和0.432,对于苦味二肽分别为0.940、0.892、0.153和0.205。通过D-最优法将两个数据集等分为训练集和测试集,3D-HoVAIF方法经过了严格的统计验证。此外,与另外两种涉及z-尺度和ISA-ECI的肽MSC方法相比,3D-HoVAIF的优越性能得到了证实。对于58种ACE抑制剂,GA-PLS模型产生了两个主成分,其统计量如下:r(2) = 0.893,q(2) = 0.824,RMSEE = 0.349,RMSCV = 0.425,q2(ext) = 0.739,r2(ext)= 0.784,r2(0.ext) = 0.781,rf2(0.ext) = 0.77,k = 0.962,k' = 1.019,RMSEP = 0.460;对于48种苦味二肽,产生了三个主成分,统计量为:r(2) = 0.950,q(2) = 0.893,RMSEE = 0.152,RMSCV = 0.222,q2(ext)= 0.875,r2(ext) = 0.919,r2(0.ext)= 0.919,rf2(0.ext)= 0.919,k = 1.018,k' = 0.974,RMSEP = 0.198。此外,通过将上述构建的模型应用于对400种理论上可能的二肽的预测,研究了ACE抑制活性与苦味阈值之间的关系。通过分析发现,ACE抑制活性与苦味强度显著相关。因此,认为很难找到同时满足药效作用(高ACE抑制活性)和舒适口感的二肽,这表明作为功能性食品用于降低血压的二肽的活性成分不是很理想。

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