Dipartimento di Scienze Fisiche e Chimiche, Università degli Studi dell'Aquila, Via Vetoio, 67100 Coppito, L'Aquila, Italy.
Molecules. 2019 Feb 11;24(3):632. doi: 10.3390/molecules24030632.
A multi-layer artificial neural network (ANN) was used to model the retention behavior of 16 -phthalaldehyde derivatives of amino acids in reversed-phase liquid chromatography under application of various gradient elution modes. The retention data, taken from literature, were collected in acetonitrile⁻water eluents under application of linear organic modifier gradients ( gradients), pH gradients, or double pH/ gradients. At first, retention data collected in gradients and pH gradients were modeled separately, while these were successively combined in one dataset and fitted simultaneously. Specific ANN-based models were generated by combining the descriptors of the gradient profiles with 16 inputs representing the amino acids and providing the retention time of these solutes as the response. Categorical "bit-string" descriptors were adopted to identify the solutes, which allowed simultaneously modeling the retention times of all 16 target amino acids. The ANN-based models tested on external gradients provided mean errors for the predicted retention times of 1.1% ( gradients), 1.4% (pH gradients), 2.5% (combined and pH gradients), and 2.5% (double pH/ gradients). The accuracy of ANN prediction was better than that previously obtained by fitting of the same data with retention models based on the solution of the fundamental equation of gradient elution.
采用多层人工神经网络(ANN)对反相液相色谱中 16 种 - 邻苯二醛衍生氨基酸的保留行为进行建模,在各种梯度洗脱模式下应用。保留数据来自文献,在乙腈-水洗脱剂中收集,应用线性有机改性剂梯度(φ梯度)、pH 梯度或双 pH/φ梯度。首先,分别对 φ 梯度和 pH 梯度中收集的保留数据进行建模,然后将它们依次组合在一个数据集并同时拟合。通过将梯度轮廓的描述符与代表氨基酸的 16 个输入相结合,生成特定的基于 ANN 的模型,并提供这些溶质的保留时间作为响应。采用分类“位字符串”描述符来识别溶质,这允许同时对所有 16 种目标氨基酸的保留时间进行建模。在外部梯度上测试的基于 ANN 的模型,对预测保留时间的平均误差为 1.1%(φ 梯度)、1.4%(pH 梯度)、2.5%(组合的 φ 和 pH 梯度)和 2.5%(双 pH/φ 梯度)。ANN 预测的准确性优于以前用基于梯度洗脱基本方程解的保留模型拟合相同数据所获得的准确性。