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Comparison Study of Peptide Retention Time Prediction Model Based on Five Kinds of Amino Acid Descriptors in HPLC by Support Vector Machine

机译:基于支持向量机的HPLC中基于五种氨基酸描述子的肽保留时间预测模型的比较研究。

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Based on amino acid descriptors(z-scales, c-scales, ISA-ECI,MS-WHIM and PRIN) and additive method, evaluation of predict performance of five amino acid descriptors in peptide QSRR(Quantitative structure-retention relationships) with 101 promiscuous peptides in High-Performance Liquid Chromato- graphy by support vector regression(SVR) is made in the article, and RBF(radical basis function) is selected as kernel function. Using leave-one-out cross-validation (LOO-CV), we suppose that predicting accuracy of ISA-ECI is better than the other descriptors in SVR with RBF. The prediction correlation coefficient of the SVR model (ε = 0.001,σ= 5 and C= 100) is 0.8445 by leave-one-out cross validation. The standard error of prediction (SEP) error of the dataset is 1.03 by fitting calculation, and the prediction correlation coefficient is 0.9642.The prediction results are in agreement with the experimental values. This paper provided a simple and effective method for predicting the retention behavior of peptide and some insight into what structural features are related to the retention time of peptides. Moreover, it also offered an idea about nonlinear relation between retention time of peptides and their structural descriptors (ISA-ECI).Therefore, SVR is assumed to be a feasible method in peptide QSAR (Quantitative structure-activity relationships) model.
机译:基于z-标度,c-标度,ISA-ECI,MS-WHIM和PRIN的氨基酸描述子和加性方法,评估了101个混杂肽QSRR(定量结构-保留关系)中五个氨基酸描述子的预测性能本文通过支持向量回归(SVR)技术制备了高效液相色谱中的多肽,并选择了RBF(自由基基函数)作为核函数。使用留一法交叉验证(LOO-CV),我们假设ISA-ECI的预测精度优于带有RBF的SVR中的其他描述符。通过留一法交叉验证,SVR模型的预测相关系数(ε= 0.001,σ= 5,C = 100)为0.8445。通过拟合计算,该数据集的标准预测误差(SEP)为1.03,预测相关系数为0.9642,预测结果与实验值吻合。本文为预测肽的保留行为提供了一种简单而有效的方法,并对某些结构特征与肽的保留时间有关提供了一些见识。此外,它还提供了有关肽保留时间与其结构描述子(ISA-ECI)之间非线性关系的想法。因此,SVR被认为是肽QSAR(定量结构-活性关系)模型中的一种可行方法。

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