Institute of Chemistry, University of Tartu, Ravila 14a, Tartu, 50411, Estonia.
J Comput Aided Mol Des. 2018 Jun;32(6):711-722. doi: 10.1007/s10822-018-0125-y. Epub 2018 May 30.
Performance of COSMO-RS method as a tool for partition and distribution modeling in 20 solvent pairs-composed of neutral or acidic aqueous solution and organic solvents of different polarity, ranging from alcohols to toluene and hexane-was evaluated. Experimental partition/distribution data of lignin-related and drug-like compounds (neutral, acidic, moderately basic) were used as reference. Several aspects of partition modeling were addressed: accounting for mutual saturation of aqueous and organic phases, variability of systematic prediction errors across solvent pairs, taking solute ionization into account. COSMO-RS was found to predict extraction outcome for both ligneous and drug-like compounds in various solvent pairs fairly well without any additional empirical input. The solvent-specific systematic errors were found to be moderate, despite being statistically significant, and related to the solvent hydrophobicity. Accounting for mutual solubilities of the two liquids was proven crucial in cases where water was considerably soluble in the organic solvent. The root mean square error of a priori logP prediction varied, depending mainly on the solvent pair, from 0.2 to 0.7, overall value being 0.6 log units. The accuracy was higher in case of hydrophilic than hydrophobic solvents. The logD predictions were less accurate, due to pK prediction being an additional source of error, and also because of the complexity of modeling the behaviour of ionic species in the two-phase system. A simple correction for partitioning of free ions was found to notably improve logD prediction accuracy in case of the most hydrophilic organic phase (butanol/water).
评估了 COSMO-RS 方法作为 20 种溶剂对(由中性或酸性水溶液和不同极性的有机溶剂组成,范围从醇类到甲苯和己烷)分配和分布建模工具的性能。实验分配/分布数据的木质素相关和药物样化合物(中性、酸性、中度碱性)被用作参考。讨论了分配建模的几个方面:考虑到水相和有机相的相互饱和、溶剂对之间系统预测误差的可变性、考虑溶质离解。发现 COSMO-RS 可以很好地预测各种溶剂对中木质素和药物样化合物的萃取结果,而无需任何额外的经验输入。尽管统计上显著,但溶剂特定的系统误差被发现适中,并且与溶剂疏水性有关。证明在水在有机溶剂中相当可溶的情况下,考虑两种液体的相互溶解度是至关重要的。先验 logP 预测的均方根误差取决于溶剂对,从 0.2 到 0.7 不等,总体值为 0.6 个对数单位。亲水溶剂的准确性更高。由于 pK 预测是另一个误差源,并且由于在两相系统中建模离子物种行为的复杂性,因此 logD 预测的准确性较低。发现对于最亲水的有机相(丁醇/水),对游离离子分配进行简单校正可以显著提高 logD 预测的准确性。