首页> 美国卫生研究院文献>Nature Public Health Emergency Collection >Structural parameterization and functional prediction of antigenic polypeptome sequences with biological activity through quantitative sequence-activity models (QSAM) by molecular electronegativity edge-distance vector (VMED)
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Structural parameterization and functional prediction of antigenic polypeptome sequences with biological activity through quantitative sequence-activity models (QSAM) by molecular electronegativity edge-distance vector (VMED)

机译:分子电负性边缘距离载体(VMED)通过定量序列活性模型(QSAM)通过生物学活性对抗原性多肽组序列进行结构参数化和功能预测

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摘要

Only from the primary structures of peptides, a new set of descriptors called the molecular electronegativity edge-distance vector (VMED) was proposed and applied to describing and characterizing the molecular structures of oligopeptides and polypeptides, based on the electronegativity of each atom or electronic charge index (ECI) of atomic clusters and the bonding distance between atom-pairs. Here, the molecular structures of antigenic polypeptides were well expressed in order to propose the automated technique for the computerized identification of helper T lymphocyte (Th) epitopes. Furthermore, a modified MED vector was proposed from the primary structures of polypeptides, based on the ECI and the relative bonding distance of the fundamental skeleton groups. The side-chains of each amino acid were here treated as a pseudo-atom. The developed VMED was easy to calculate and able to work. Some quantitative model was established for 28 immunogenic or antigenic polypeptides (AGPP) with 14 (1–14) A and 14 other restricted activities assigned as “1”(+) and “0”(−), respectively. The latter comprised 6 A (15–20), 3 A (21–23), 2 E (24–26), 2 H-2 (27 and 28) restricted sequences. Good results were obtained with 90% correct classification (only 2 wrong ones for 20 training samples) and 100% correct prediction (none wrong for 8 testing samples); while contrastively 100% correct classification (none wrong for 20 training samples) and 88% correct classification (1 wrong for 8 testing samples). Both stochastic samplings and cross validations were performed to demonstrate good performance. The described method may also be suitable for estimation and prediction of classes I and II for major histocompatibility antigen (MHC) epitope of human. It will be useful in immune identification and recognition of proteins and genes and in the design and development of subunit vaccines. Several quantitative structure activity relationship (QSAR) models were developed for various oligopeptides and polypeptides including 58 dipeptides and 31 pentapeptides with angiotensin converting enzyme (ACE) inhibition by multiple linear regression (MLR) method. In order to explain the ability to characterize molecular structure of polypeptides, a molecular modeling investigation on QSAR was performed for functional prediction of polypeptide sequences with antigenic activity and heptapeptide sequences with tachykinin activity through quantitative sequence-activity models (QSAMs) by the molecular electronegativity edge-distance vector (VMED). The results showed that VMED exhibited both excellent structural selectivity and good activity prediction. Moreover, the results showed that VMED behaved quite well for both QSAR and QSAM of poly-and oligopeptides, which exhibited both good estimation ability and prediction power, equal to or better than those reported in the previous references. Finally, a preliminary conclusion was drwan: both classical and modified MED vectors were very useful structural descriptors. Some suggestions were proposed for further studies on QSAR/QSAM of proteins in various fields.
机译:仅从肽的一级结构中,提出了一套新的描述符,称为分子电负性边缘距离矢量(VMED),并用于基于每个原子或电荷的电负性描述和表征寡肽和多肽的分子结构原子团簇的指数(ECI)和原子对之间的键合距离。在这里,抗原多肽的分子结构被很好地表达,以提出用于辅助性T淋巴细胞(Th)表位计算机识别的自动化技术。此外,基于ECI和基本骨架基团的相对键合距离,从多肽的一级结构提出了修饰的MED载体。每个氨基酸的侧链在这里被视为假原子。所开发的VMED易于计算并且可以正常工作。建立了28个免疫原性或抗原性多肽(AGPP)的定量模型,分别具有14(1–14)A和14个其他限制的活性,分别指定为“ 1”(+)和“ 0”(-)。后者包括6 A(15–20),3 A(21–23),2 E(24–26),2 H-2(27和28)限制性序列。通过90%正确的分类(20个训练样本只有2个错误的分类)和100%正确的预测(8个测试样本没有错)获得了良好的结果;相比之下,正确分类100%(20个训练样本没有错)和88%正确分类(8个测试样本错了1个)。进行随机抽样和交叉验证以证明其良好的性能。所描述的方法也可能适合于估计和预测人的主要组织相容性抗原(MHC)表位的I类和II类。它将对蛋白质和基因的免疫识别和识别以及亚单位疫苗的设计和开发有用。针对多种寡肽和多肽,开发了几种定量结构活性关系(QSAR)模型,包括通过多重线性回归(MLR)方法抑制血管紧张素转化酶(ACE)的58种二肽和31种五肽。为了解释表征多肽分子结构的能力,对QSAR进行了分子建模研究,以通过分子电负性边缘的定量序列活性模型(QSAM)对具有抗原活性的多肽序列和具有速激肽活性的七肽序列进行功能预测距离向量(VMED)。结果表明,VMED表现出优异的结构选择性和良好的活性预测。此外,结果表明,VMED对多肽和寡肽的QSAR和QSAM都表现良好,既显示出良好的估计能力,又具有预测能力,与以前的参考文献中报道的相同或更好。最后,得出了初步结论:经典和改进的MED载体都是非常有用的结构描述符。为进一步研究蛋白质在各个领域的QSAR / QSAM提出了一些建议。

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