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首页> 外文期刊>Chemometrics and Intelligent Laboratory Systems >Prediction of retention times of peptides in RPLC by using radial basis function neural networks and projection pursuit regression
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Prediction of retention times of peptides in RPLC by using radial basis function neural networks and projection pursuit regression

机译:利用径向基函数神经网络和投影寻踪回归预测RPLC中肽的保留时间

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摘要

Quantitative structure-retention relationship (QSRR) models correlating the retention times of peptides in reversed-phase liquid chromatography (RPLC) and their structures were developed based on linear and non-linear modeling methods. The best multi-linear regression (BMLR) method implemented in the CODESSA was used to select the most appropriate molecular descriptors from a large set of descriptors and develop a linear QSRR model. Using the selected descriptors, another two non-linear regression methods (radial basis function neural networks (RBFNN) and projection pursuit regression (PPR)) were used in the non-linear QSRR models development. The predicted retention times from the two non-linear approaches RBFNN and PPR were in good agreement with the experimental data. The coefficients of determination (R~(2)) for the training set of these two methods (RBFNN and PPR) were 0.9787 and 0.9881; the root mean square of errors (RMSE) of these two methods were 0.5666 and 0.4207. They proved that RBFNN and PPR were very useful methods with good predictive ability for the prediction of peptides' RPLC retention times. The proposed methods will be of importance in the proteomic research, and could be expected to apply to other similar research fields.
机译:与肽在反相液相色谱(RPLC)中的保留时间相关的定量结构-保留关系(QSRR)模型,并基于线性和非线性建模方法开发了其结构。使用在CODESSA中实现的最佳多线性回归(BMLR)方法,从大量的描述符中选择最合适的分子描述符,并建立线性QSRR模型。使用选定的描述符,在非线性QSRR模型开发中使用了另外两种非线性回归方法(径向基函数神经网络(RBFNN)和投影追踪回归(PPR))。两种非线性方法RBFNN和PPR的预测保留时间与实验数据非常吻合。这两种方法(RBFNN和PPR)的训练集的确定系数(R〜(2))为0.9787和0.9881。这两种方法的均方根误差(RMSE)为0.5666和0.4207。他们证明,RBFNN和PPR是非常有用的方法,具有良好的预测能力,可预测肽的RPLC保留时间。所提出的方法在蛋白质组学研究中将具有重要意义,并有望应用于其他类似的研究领域。

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