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Evaluating the performances of quantitative structure-retention relationship models with different sets of molecular descriptors and databases for high-performance liquid chromatography predictions

机译:使用不同的分子描述符集和数据库评估定量结构-保留关系模型的性能,以进行高效液相色谱预测

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Quantitative structure-retention relationship (QSRR) models were studied for two databases: one with 151 compounds and the other with 1719 compounds. In both cases, the three modeling methods employed (multiple linear regression, partial least squares, and random forests) provided similar prediction results with regard to root-mean-square error of prediction. The reversed-phase retention related seven molecular descriptors provided better models for the smaller dataset, while the use of over 2000 molecular descriptors generated better models for the larger dataset. The QSRR models were then validated with a mixture of an active pharmaceutical ingredient and its four process/degradation impurities. Finally, classification of compounds based on similar log D profiles before QSRR modeling improved chromatographic predictability for the models used. The results showed that database composition had a desirable effect on prediction accuracy for certain input molecules.
机译:研究了两个数据库的定量结构-保留关系(QSRR)模型:一个数据库包含151种化合物,另一个数据库包含1719个化合物。在这两种情况下,就预测的均方根误差而言,采用的三种建模方法(多元线性回归,偏最小二乘和随机森林)均提供了相似的预测结果。与反相保留相关的七个分子描述符为较小的数据集提供了更好的模型,而使用2000多个分子描述符为较大的数据集提供了更好的模型。然后用活性药物成分及其四种工艺/降解杂质的混合物验证QSRR模型。最后,在QSRR建模之前基于相似的log D分布图对化合物进行分类,可以提高所用模型的色谱可预测性。结果表明,数据库组成对某些输入分子的预测准确性具有理想的影响。

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