首页> 外文期刊>Journal of chromatography, A: Including electrophoresis and other separation methods >Quantitative structure-retention relationship studies for taxanes including epimers and isomeric metabolites in ultra fast liquid chromatography
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Quantitative structure-retention relationship studies for taxanes including epimers and isomeric metabolites in ultra fast liquid chromatography

机译:超快速液相色谱中紫杉烷类包括差向异构体和异构体代谢物的定量结构-保留关系研究

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摘要

Seven pairs of epimers and one pair of isomeric metabolites of taxanes, each pair of which have similar structures but different retention behaviors, together with additional 13 taxanes with different substitutions were chosen to investigate the quantitative structure-retention relationship (QSRR) of taxanes in ultra fast liquid chromatography (UFLC). Monte Carlo variable selection (MCVS) method was adopted to choose descriptors. The selected four descriptors were used to build QSRR model with multi-linear regression (MLR) and artificial neural network (ANN) modeling techniques. Both linear and nonlinear models show good predictive ability, of which ANN model was better with the determination coefficient R-2 for training, validation and test set being 0.9892, 0.9747 and 0.9840. respectively. The results of l 00 times' leave-12-out cross validation showed the robustness of this model. All the isomers can be correctly differentiated by this model. According to the selected descriptors, the three dimensional structural information was critical for recognition of epimers. Hydrophobic interaction was the uppermost factor for retention in UFLC. Molecules' polarizability and polarity properties were also closely correlated with retention behaviors. This QSRR model will be useful for separation and identification of taxanes including epimers and metabolites from botanical or biological samples.
机译:选择七对紫杉烷的差向异构体和一对异构体代谢物,每对异构体具有相似的结构但保留行为不同,再选择另外13个具有不同取代基的紫杉烷类,以研究紫杉烷类化合物在超滤中的定量结构-保留关系(QSRR)。快速液相色谱(UFLC)。采用蒙特卡洛变量选择(MCVS)方法来选择描述符。选择的四个描述符用于通过多线性回归(MLR)和人工神经网络(ANN)建模技术构建QSRR模型。线性模型和非线性模型均显示出良好的预测能力,其中ANN模型具有更好的预测能力,用于训练,验证和测试集的确定系数R-2为0.9892、0.9747和0.9840。分别。 100次离开12出交叉验证的结果表明该模型的鲁棒性。通过该模型可以正确地区分所有异构体。根据选择的描述符,三维结构信息对于差向异构体的识别至关重要。疏水相互作用是保留在UFLC中的最重要因素。分子的极化性和极性特性也与保留行为密切相关。该QSRR模型可用于从植物或生物样品中分离和鉴定紫杉烷,包括差向异构体和代谢产物。

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