首页> 外文期刊>Journal of chromatography, A: Including electrophoresis and other separation methods >Retention prediction in reversed phase high-performance liquid chromatography using quantitative structure-retention relationships applied to the Hydrophobic Subtraction Model
【24h】

Retention prediction in reversed phase high-performance liquid chromatography using quantitative structure-retention relationships applied to the Hydrophobic Subtraction Model

机译:使用施加到疏水减法模型的定量结构保持关系反相高效液相色谱中的保留预测

获取原文
获取原文并翻译 | 示例
           

摘要

Quantitative Structure-Retention Relationships (QSRR) methodology combined with the Hydrophobic Subtraction Model (HSM) have been utilized to accurately predict retention times for a selection of analytes on several different reversed phase liquid chromatography (RPLC) columns. This approach is designed to facilitate early prediction of co-elution of analytes, for example in pharmaceutical drug discovery applications where it is advantageous to predict whether impurities might be co-eluted with the active drug component. The QSRR model utilized VolSurf+ descriptors and a Partial Least Squares regression combined with a Genetic Algorithm (GA-P1S) to predict the solute coefficients in the HSM. It was found that only the hydrophobicity Or H) term in the HSM was required to give the accuracy necessary to predict potential co-elution of analytes. Global QSRR models derived from all 148 compounds in the dataset were compared to QSRR models derived using a range of local modelling techniques based on clustering of compounds in the dataset by the structural similarity of compounds (as represented by the Tanimoto similarity index), physico-chemical similarity of compounds (represented by log D), the neutral, acidic, or basic nature of the compound, and the second dominant interaction between analyte and stationary phase after hydrophobicity. The global model showed reasonable prediction accuracy for retention time with errors of 30s and less for up to 50% of modeled compounds. The local models for Tanimoto, nature of the compound and second dominant interaction approaches all exhibited prediction errors less than 30 s in retention time for nearly 70% of compounds for which models could be derived. Predicted retention times of five representative compounds on nine reversed-phase columns were compared with known experimental retention data for these columns and this comparison showed that the accuracy of the proposed modelling approach is sufficient to reliably predict the ret
机译:已经利用定量结构 - 保留关系(QSRR)方法与疏水性减法模型(HSM)结合,以精确地预测用于几种不同反相液相色谱(RPLC)柱的各种分析物的保留时间。这种方法旨在促进对分析物的共同洗脱的早期预测,例如在药物发现应用,其中有利于预测杂质是否可以用活性药物组分共用。 QSRR模型利用Volsulf +描述符和局部最小二乘回归与遗传算法(GA-P1S)结合,以预测HSM中的溶质系数。发现只需要HSM中的疏水性或H)术语来提供预测分析物潜在共洗的准确性。将来自数据集中的所有148个化合物的全局QSRR模型与使用基于化合物的结构相似性的基于数据集中的化合物的聚类(如Tanimoto相似性指数所示),物理 - )进行比较了来自数据集中的所有148个化合物的QSRR模型。化合物(由log d表示)的化学相似性,化合物的中性,酸性或基本性质,以及疏水性后分析物和固定相之间的第二个显性相互作用。全局模型显示出合理的预测精度,用于保留时间,误差为30秒,少于30%的模型化合物。 Tanimoto的本地模型,化合物的性质和第二主导相互作用方法在保留时间均显示出少于30秒的预测误差,以获得近70%的化合物,用于该模型的型号。将五个代表性化合物的预测保留时间与这些柱的已知实验保留数据进行比较,并且该比较表明,所提出的建模方法的准确性足以可靠地预测RET

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号