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Artificial neural network prediction of multilinear gradient retention in reversed-phase HPLC: comprehensive QSRR-based models combining categorical or structural solute descriptors and gradient profile parameters

机译:反相HPLC中多线性梯度保留的人工神经网络预测:基于QSRR的综合模型,结合了类别或结构溶质描述符以及梯度分布参数

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A multilayer artificial neural network (ANN) is used to model the reversed-phase liquid chromatography retention times of 16 selected compounds, including purines, pyrimidines and nucleosides. The analysed data, taken from literature, were collected in acetonitrile-water eluents under the application of 16 different multilinear gradients. The parameters describing the gradient profile together with solute descriptors are considered as the independent variables of an ANN-based model providing the retention time as response. Categorical variables or, alternatively, a selected set of molecular descriptors of computational origin are adopted to represent the solutes. Network training, validation and testing are performed preliminarily using data of 12, 2 and 4 gradients, respectively and successively, to investigate model performance under more severe calibration conditions, with data of 9, 2 and 7 gradients. The proposed approach allows a quite accurate prediction of retention times of the target analytes in external multilinear gradients. Categorical variables can successfully represent the target solutes when the model is called to transfer retention data from calibration to external gradients. In particular, using a five-dimensional bit string to represent the analytes, mean errors on retention times are 2 and 3 % under the most and less favourable calibration conditions, respectively. A comparable performance is observed if the categorical variables are replaced by five molecular descriptors, selected by a genetic algorithm within a large set of structural variables of computational origin.
机译:多层人工神经网络(ANN)用于模拟16种所选化合物(包括嘌呤,嘧啶和核苷)的反相液相色谱保留时间。分析的数据取自文献,采用16种不同的多线性梯度,在乙腈-水洗脱液中收集。描述梯度曲线的参数以及溶质描述符被视为基于ANN的模型的自变量,以保留时间作为响应。类别变量或可替代地,使用选定的具有计算起源的分子描述符集来表示溶质。分别并依次依次使用12、2和4个梯度的数据进行网络训练,验证和测试,以研究更严格的校准条件下具有9、2和7梯度的数据的模型性能。所提出的方法可以非常准确地预测目标分析物在外部多线性梯度中的保留时间。当调用模型将保留数据从校准转移到外部梯度时,分类变量可以成功表示目标溶质。特别是,使用五维位串表示分析物时,在最有利和最不利的校准条件下,保留时间的平均误差分别为2%和3%。如果将分类变量替换为五个分子描述子,则可观察到可比的性能,这五个描述子是由遗传算法在大量计算来源的结构变量集中选择的。

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