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Predicting the affinity of epitope-peptides with class I MHC molecule HLA-A*0201: an application of amino acid-based peptide prediction

机译:预测表位肽与I类MHC分子HLA-A * 0201的亲和力:基于氨基酸的肽预测的应用

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摘要

A new peptide design strategy, the amino acid-based peptide prediction (AABPP) approach, is applied for predicting the affinity of epitope-peptides with class I MHC molecule HLA-A*0201. The AABPP approach consists of two sets of predictive coefficients. The former is the coefficients for the physicochemical properties of amino acids and the latter is the weight factors for the residue positions in a peptide sequence. An iterative double least square technique is introduced to determine the two sets of coefficients alternately through a benchmark dataset. The coefficients converged through such an iterative process are further used to predict the bioactivities of query peptides. In the AABPP algorithm, the following eight physicochemical properties are used as the descriptors of amino acids: (i) lipophilic indices, (ii) hydrophilic indices, (iii) lipophilic surface area, (iv) hydrophilic surface area, (v) α-potency indices, (vi) β-potency indices, (vii) coil-potency indices and (viii) volume of amino acid side chains. In comparison with the existing methods in this area, a remakable advantage of the current approach is that there is no need to know the exact conformation of a query peptide and its alignment with a template. The two steps are indispensable but cannot always be successfully realized otherwise. It is anticipated that the AABPP approach will become a powerful tool for peptide drug design, or at least play a complemetary role to the existing methods.
机译:一种新的肽设计策略,即基于氨基酸的肽预测(AABPP)方法,被用于预测表位肽与I类MHC分子HLA-A * 0201的亲和力。 AABPP方法由两组预测系数组成。前者是氨基酸的理化性质的系数,而后者是肽序列中残基位置的权重因子。引入了迭代最小二乘平方最小二乘技术,以通过基准数据集交替确定两组系数。通过这种迭代过程收敛的系数被进一步用于预测查询肽的生物活性。在AABPP算法中,以下八个物理化学性质用作氨基酸的描述子:(i)亲脂性指数,(ii)亲水性指数,(iii)亲脂性表面积,(iv)亲水性表面积,(v)α-效能指数,(vi)β效能指数,(vii)线圈效能指数和(viii)氨基酸侧链体积。与该领域中的现有方法相比,当前方法的一个显着优势是,无需知道查询肽的确切构型及其与模板的比对。这两个步骤是必不可少的,但否则不能总是成功地实现。预计AABPP方法将成为肽药物设计的有力工具,或至少在现有方法中起补充作用。

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