Fagerholm Urban, Hellberg Sven, Alvarsson Jonathan, Spjuth Ola
Prosilico AB, Huddinge, Sweden.
Department of Pharmaceutical Biosciences and Science for Life Laboratory, Uppsala University, Uppsala, Sweden.
Altern Lab Anim. 2023 Jan;51(1):39-54. doi: 10.1177/02611929221148447. Epub 2022 Dec 26.
There is an ongoing aim to replace animal and laboratory models with methods. Such replacement requires the successful validation and comparably good performance of the alternative methods. We have developed an prediction system for human clinical pharmacokinetics, based on machine learning, conformal prediction and a new physiologically-based pharmacokinetic model, i.e. ANDROMEDA. The objectives of this study were: a) to evaluate how well ANDROMEDA predicts the human clinical pharmacokinetics of a previously proposed benchmarking data set comprising 24 physicochemically diverse drugs and 28 small drug molecules new to the market in 2021; b) to compare its predictive performance with that of laboratory methods; and c) to investigate and describe the pharmacokinetic characteristics of the modern drugs. Median and maximum prediction errors for the selected major parameters were 1.2 to 2.5-fold and 16-fold for both data sets, respectively. Prediction accuracy was on par with, or better than, the best laboratory-based prediction methods (superior performance for a vast majority of the comparisons), and the prediction range was considerably broader. The modern drugs have higher average molecular weight than those in the benchmarking set from 15 years earlier ( 200 g/mol higher), and were predicted to (generally) have relatively complex pharmacokinetics, including permeability and dissolution limitations and significant renal, biliary and/or gut-wall elimination. In conclusion, the results were overall better than those obtained with laboratory methods, and thus serve to further validate the ANDROMEDA system for the prediction of human clinical pharmacokinetics of modern and physicochemically diverse drugs.
目前的一个目标是用其他方法取代动物和实验室模型。这种替代需要替代方法的成功验证和相当好的性能。我们基于机器学习、共形预测和一种新的基于生理学的药代动力学模型(即仙女座模型)开发了一种人类临床药代动力学预测系统。本研究的目的是:a)评估仙女座模型对一个先前提出的基准数据集(包括24种物理化学性质不同的药物和2021年新上市的28种小分子药物)的人类临床药代动力学预测效果如何;b)将其预测性能与实验室方法的预测性能进行比较;c)研究和描述现代药物的药代动力学特征。对于选定的主要参数,两个数据集的预测误差中位数和最大值分别为1.2至2.5倍和16倍。预测准确性与最佳的基于实验室的预测方法相当,或优于这些方法(在绝大多数比较中表现更优),并且预测范围更广。现代药物的平均分子量高于15年前基准数据集中的药物(高出200 g/mol),预计(总体上)具有相对复杂的药代动力学,包括通透性和溶解限制以及显著的肾脏、胆汁和/或肠壁消除。总之,结果总体上优于实验室方法得到的结果,因此有助于进一步验证仙女座模型系统对现代和物理化学性质不同的药物的人类临床药代动力学的预测能力。