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肽与人类MHC分子结合亲和力的计算机定量预测:一种直观的定量构效关系方法。

In silico quantitative prediction of peptides binding affinity to human MHC molecule: an intuitive quantitative structure-activity relationship approach.

作者信息

Tian F, Yang L, Lv F, Yang Q, Zhou P

机构信息

Research Institute of Surgery, Daping Hospital, Third Military Medical University, Chongqing, China.

出版信息

Amino Acids. 2009 Mar;36(3):535-54. doi: 10.1007/s00726-008-0116-8. Epub 2008 Jun 25.

DOI:10.1007/s00726-008-0116-8
PMID:18575802
Abstract

In this paper, we have handpicked 23 kinds of electronic properties, 37 kinds of steric properties, 54 kinds of hydrophobic properties and 5 kinds of hydrogen bond properties from thousands of amino acid structural and property parameters. Principal component analysis (PCA) was applied on these parameters and thus ten score vectors involving significant nonbonding properties of 20 coded amino acids were yielded, called the divided physicochemical property scores (DPPS) of amino acids. The DPPS descriptor was then used to characterize the structures of 152 HLA-A0201-restricted CTL epitopes, and significant variables being responsible for the binding affinities were selected by genetic algorithm, and a quantitative structure-activity relationship (QSAR) model by partial least square was established to predict the peptide-HLA-A0201 molecule interactions. Statistical analysis on the resulted DPPS-based QSAR models were consistent well with experimental exhibits and molecular graphics display. Diversified properties of the different residues in binding peptides may contribute remarkable effect to the interactions between the HLA-A0201 molecule and its peptide ligands. Particularly, hydrophobicity and hydrogen bond of anchor residues of peptides may have a significant contribution to the interactions. The results showed that DPPS can well represent the structural characteristics of the antigenic peptides and is a promising approach to predict the affinities of peptide binding to HLA-A0201 in a efficient and intuitive way. We expect that this physical-principle based method can be applied to other protein-peptide interactions as well.

摘要

在本文中,我们从数千个氨基酸结构和性质参数中精心挑选了23种电子性质、37种空间性质、54种疏水性质和5种氢键性质。对这些参数进行主成分分析(PCA),从而得到涉及20种编码氨基酸重要非键性质的十个得分向量,称为氨基酸的划分物理化学性质得分(DPPS)。然后使用DPPS描述符来表征152个HLA - A0201限制性CTL表位的结构,并通过遗传算法选择负责结合亲和力的显著变量,建立偏最小二乘定量构效关系(QSAR)模型来预测肽 - HLA - A0201分子相互作用。对所得基于DPPS的QSAR模型的统计分析与实验结果和分子图形显示非常一致。结合肽中不同残基的多样化性质可能对HLA - A0201分子与其肽配体之间的相互作用产生显著影响。特别是,肽的锚定残基的疏水性和氢键可能对相互作用有显著贡献。结果表明,DPPS能够很好地代表抗原肽的结构特征,是一种以高效直观的方式预测肽与HLA - A0201结合亲和力的有前途的方法。我们期望这种基于物理原理的方法也能应用于其他蛋白质 - 肽相互作用。

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