Department of Medical Molecular Informatics, Meiji Pharmaceutical University, 2-522-1Kiyose-shi, Tokyo, 204-858, Noshio, Japan.
Drug Metabolism and Pharmacokinetics Research Laboratories, Central Pharmaceutical Research Institute, Japan Tobacco Inc, 1-1, Murasaki-cho, Takatsuki, 569-1125, Osaka, Japan.
Mol Divers. 2021 Aug;25(3):1261-1270. doi: 10.1007/s11030-021-10186-7. Epub 2021 Feb 10.
Despite their importance in determining the dosing regimen of drugs in the clinic, only a few studies have investigated methods for predicting blood-to-plasma concentration ratios (Rb). This study established an Rb prediction model incorporating typical human pharmacokinetics (PK) parameters. Experimental Rb values were compiled for 289 compounds, offering reliable predictions by expanding the applicability domain. Notably, it is the largest list of Rb values reported so far. Subsequently, human PK parameters calculated from plasma drug concentrations, including the volume of distribution (Vd), clearance, mean residence time, and plasma protein binding rate, as well as 2702 kinds of molecular descriptors, were used to construct quantitative structure-PK relationship models for Rb. Among the evaluated PK parameters, logVd correlated best with Rb (correlation coefficient of 0.47). Thus, in addition to molecular descriptors selected by XGBoost, logVd was employed to construct the prediction models. Among the analyzed algorithms, artificial neural networks gave the best results. Following optimization using six molecular descriptors and logVd, the model exhibited a correlation coefficient of 0.64 and a root-mean-square error of 0.205, which were superior to those previously reported for other Rb prediction methods. Since Vd values and chemical structures are known for most medications, the Rb prediction model described herein is expected to be valuable in clinical settings.
尽管在确定临床药物剂量方案方面非常重要,但仅有少数研究探讨了预测血-血浆浓度比(Rb)的方法。本研究建立了一个包含典型人体药代动力学(PK)参数的 Rb 预测模型。为了扩大适用范围,本研究汇集了 289 种化合物的实验 Rb 值,提供了可靠的预测。值得注意的是,这是迄今为止报告的最大的 Rb 值列表。随后,使用从血浆药物浓度计算的人体 PK 参数,包括分布容积(Vd)、清除率、平均停留时间和血浆蛋白结合率,以及 2702 种分子描述符,构建了 Rb 的定量构效关系模型。在所评估的 PK 参数中,logVd 与 Rb 相关性最好(相关系数为 0.47)。因此,除了 XGBoost 选择的分子描述符外,logVd 也被用于构建预测模型。在分析的算法中,人工神经网络给出了最佳结果。经过对 6 个分子描述符和 logVd 的优化,该模型的相关系数为 0.64,均方根误差为 0.205,优于以前报道的其他 Rb 预测方法。由于大多数药物的 Vd 值和化学结构已知,因此本文描述的 Rb 预测模型有望在临床环境中具有价值。