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Quantitative modeling of peptide binding to TAP using support vector machine.

机译:使用支持向量机对肽与TAP的结合进行定量建模。

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The transport of peptides to the endoplasmic reticulum by the transporter associated with antigen processing (TAP) is a necessary step towards determining CD8 T cell epitopes. In this work, we have studied the predictive performance of support vector machine models trained on single residue positions and residue combinations drawn from a large dataset consisting of 613 nonamer peptides of known affinity to TAP. Predictive performance of these TAP affinity models was evaluated under 10-fold cross-validation experiments and measured using Pearson's correlation coefficients (R(p)). Our results show that every peptide position (P1-P9) contributes to TAP binding (minimum R(p) of 0.26 +/- 0.11 was achieved by a model trained on the P6 residue), although the largest contributions to binding correspond to the C-terminal end (R(p) = 0.68 +/- 0.06) and the P1 (R(p) = 0.51 +/- 0.09) and P2 (0.57 +/- 0.08) residues of the peptide. Training the models on additional peptide residues generally improved their predictive performance and a maximum correlation (R(p) = 0.89 +/- 0.03) was achieved by a model trained on the full-length sequences or a residue selection consisting of the first 5 N- and last 3 C-terminal residues of the peptides included in the training set. A system for predicting the binding affinity of peptides to TAP using the methods described here is readily available for free public use at http://imed.med.ucm.es/Tools/tapreg/.
机译:通过与抗原加工(TAP)相关的转运蛋白将肽转运到内质网是确定CD8 T细胞表位的必要步骤。在这项工作中,我们研究了在单个残基位置和残基组合上训练的支持向量机模型的预测性能,所述残基和残基组合来自大型数据集,该数据集由613个对TAP具有亲和力的九聚肽组成。这些TAP亲和力模型的预测性能在10倍交叉验证实验下进行了评估,并使用Pearson相关系数(R(p))进行了测量。我们的结果表明,每个肽位置(P1-P9)都有助于TAP结合(通过对P6残基进行训练的模型,最小R(p)为0.26 +/- 0.11),尽管对结合的最大贡献对应于C -末端(R(p)= 0.68 +/- 0.06)和肽的P1(R(p)= 0.51 +/- 0.09)和P2(0.57 +/- 0.08)残基。在其他肽残基上训练模型通常会改善其预测性能,并且通过对全长序列或前五个N组成的残基选择进行训练的模型可实现最大相关性(R(p)= 0.89 +/- 0.03) -训练集中包含的肽的最后3个C末端残基。使用此处描述的方法预测肽与TAP结合亲和力的系统可从http://imed.med.ucm.es/Tools/tapreg/免费获得。

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