Peptide binding prediction for the human class II MHC allele HLA-DP2: a molecular docking approach

IF 2.222 Q3 Biochemistry, Genetics and Molecular Biology BMC Structural Biology Pub Date : 2011-07-14 DOI:10.1186/1472-6807-11-32
Atanas Patronov, Ivan Dimitrov, Darren R Flower, Irini Doytchinova
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引用次数: 58

Abstract

MHC class II proteins bind oligopeptide fragments derived from proteolysis of pathogen antigens, presenting them at the cell surface for recognition by CD4+ T cells. Human MHC class II alleles are grouped into three loci: HLA-DP, HLA-DQ and HLA-DR. In contrast to HLA-DR and HLA-DQ, HLA-DP proteins have not been studied extensively, as they have been viewed as less important in immune responses than DRs and DQs. However, it is now known that HLA-DP alleles are associated with many autoimmune diseases. Quite recently, the X-ray structure of the HLA-DP2 molecule (DPA*0103, DPB1*0201) in complex with a self-peptide derived from the HLA-DR α-chain has been determined. In the present study, we applied a validated molecular docking protocol to a library of 247 modelled peptide-DP2 complexes, seeking to assess the contribution made by each of the 20 naturally occurred amino acids at each of the nine binding core peptide positions and the four flanking residues (two on both sides).

The free binding energies (FBEs) derived from the docking experiments were normalized on a position-dependent (npp) and on an overall basis (nap), and two docking score-based quantitative matrices (DS-QMs) were derived: QMnpp and QMnap. They reveal the amino acid preferences at each of the 13 positions considered in the study. Apart from the leading role of anchor positions p1 and p6, the binding to HLA-DP2 depends on the preferences at p2. No effect of the flanking residues was found on the peptide binding predictions to DP2, although all four of them show strong preferences for particular amino acids. The predictive ability of the DS-QMs was tested using a set of 457 known binders to HLA-DP2, originating from 24 proteins. The sensitivities of the predictions at five different thresholds (5%, 10%, 15%, 20% and 25%) were calculated and compared to the predictions made by the NetMHCII and IEDB servers. Analysis of the DS-QMs indicated an improvement in performance. Additionally, DS-QMs identified the binding cores of several known DP2 binders.

The molecular docking protocol, as applied to a combinatorial library of peptides, models the peptide-HLA-DP2 protein interaction effectively, generating reliable predictions in a quantitative assessment. The method is structure-based and does not require extensive experimental sequence-based data. Thus, it is universal and can be applied to model any peptide - protein interaction.

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人类II类MHC等位基因HLA-DP2的肽结合预测:分子对接方法
MHC II类蛋白结合病原体抗原蛋白水解产生的寡肽片段,将其呈现在细胞表面,供CD4+ T细胞识别。人类MHC II类等位基因分为三个位点:HLA-DP、HLA-DQ和HLA-DR。与HLA-DR和HLA-DQ相比,HLA-DP蛋白尚未被广泛研究,因为它们在免疫反应中的重要性不如dr和dq。然而,现在已知HLA-DP等位基因与许多自身免疫性疾病有关。最近,HLA-DP2分子(DPA*0103, DPB1*0201)与HLA-DR α-链衍生的自肽配合物的x射线结构被确定。在本研究中,我们对247个模拟肽- dp2复合物的文库应用了一种经过验证的分子对接方案,试图评估在9个结合核心肽位置和4个侧翼残基(两侧两个)上每种天然存在的20种氨基酸的贡献。将对接实验得到的自由结合能(FBEs)归一化为位置相关(npp)和整体基础(nap),并推导出两个基于对接分数的定量矩阵(DS-QMs): QMnpp和QMnap。它们揭示了研究中所考虑的13个位置上的氨基酸偏好。除了锚位点p1和p6的主导作用外,与HLA-DP2的结合取决于p2的偏好。没有发现侧翼残基对肽与DP2结合预测的影响,尽管所有四个残基都对特定氨基酸表现出强烈的偏好。使用一组457种已知的HLA-DP2结合物(来自24种蛋白质)来测试DS-QMs的预测能力。计算了五个不同阈值(5%、10%、15%、20%和25%)下预测的敏感性,并与NetMHCII和IEDB服务器的预测结果进行了比较。对DS-QMs的分析表明性能有所提高。此外,DS-QMs鉴定了几种已知DP2结合物的结合核心。分子对接方案,应用于肽组合文库,有效地模拟了肽- hla - dp2蛋白相互作用,在定量评估中产生可靠的预测。该方法是基于结构的,不需要大量的基于实验序列的数据。因此,它是通用的,可以应用于任何肽-蛋白相互作用的模型。
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来源期刊
BMC Structural Biology
BMC Structural Biology 生物-生物物理
CiteScore
3.60
自引率
0.00%
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0
期刊介绍: BMC Structural Biology is an open access, peer-reviewed journal that considers articles on investigations into the structure of biological macromolecules, including solving structures, structural and functional analyses, and computational modeling.
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