Computational ADME, Lilly Research Laboratories, Eli Lilly and Company, Indianapolis, Indiana 46285, USA.
Mol Pharm. 2013 Apr 1;10(4):1249-61. doi: 10.1021/mp300555n. Epub 2013 Mar 1.
In silico tools are regularly utilized for designing and prioritizing compounds to address challenges related to drug metabolism and pharmacokinetics (DMPK) during the process of drug discovery. P-Glycoprotein (P-gp) is a member of the ATP-binding cassette (ABC) transporters with broad substrate specificity that plays a significant role in absorption and distribution of drugs that are P-gp substrates. As a result, screening for P-gp transport has now become routine in the drug discovery process. Typically, bidirectional permeability assays are employed to assess in vitro P-gp efflux. In this article, we use P-gp as an example to illustrate a well-validated methodology to effectively integrate in silico and in vitro tools to identify and resolve key barriers during the early stages of drug discovery. A detailed account of development and application of in silico tools such as simple guidelines based on physicochemical properties and more complex quantitative structure-activity relationship (QSAR) models is provided. The tools were developed based on structurally diverse data for more than 2000 compounds generated using a robust P-gp substrate assay over the past several years. Analysis of physicochemical properties revealed a significantly lower proportion (<10%) of P-gp substrates among the compounds with topological polar surface area (TPSA) <60 Å(2) and the most basic cpKa <8. In contrast, this proportion of substrates was greater than 75% for compounds with TPSA >60 Å(2) and the most basic cpKa >8. Among the various QSAR models evaluated to predict P-gp efflux, the Bagging model provided optimum prediction performance for prospective validation based on chronological test sets. Four sequential versions of the model were built with increasing numbers of compounds to train the models as new data became available. Except for the first version with the smallest training set, the QSAR models exhibited robust prediction profiles with positive prediction values (PPV) and negative prediction values (NPV) exceeding 80%. The QSAR model demonstrated better concordance with the manual P-gp substrate assay than an automated P-gp substrate screen. The in silico and the in vitro tools have been effectively integrated during early stages of drug discovery to resolve P-gp-related challenges exemplified by several case studies. Key learning based on our experience with P-gp can be widely applicable across other DMPK-related challenges.
在药物发现过程中,计算工具经常被用于设计和优先考虑化合物,以解决与药物代谢和药代动力学(DMPK)相关的挑战。P-糖蛋白(P-gp)是 ATP 结合盒(ABC)转运体的成员,具有广泛的底物特异性,在 P-gp 底物的药物吸收和分布中起着重要作用。因此,筛选 P-gp 转运现在已成为药物发现过程中的常规操作。通常,采用双向渗透测定法来评估体外 P-gp 外排。本文以 P-gp 为例,说明了一种经过充分验证的方法,可有效整合计算工具和体外工具,以在药物发现的早期阶段识别和解决关键障碍。详细说明了开发和应用计算工具的方法,例如基于理化性质的简单准则和更复杂的定量构效关系(QSAR)模型。这些工具是基于过去几年中使用强大的 P-gp 底物测定法生成的 2000 多种化合物的结构多样性数据开发的。理化性质分析表明,拓扑极性表面积(TPSA)<60 Å(2)和最基本的 cpKa <8 的化合物中,P-gp 底物的比例明显较低(<10%)。相比之下,TPSA >60 Å(2)和最基本的 cpKa >8 的化合物中,底物的比例大于 75%。在评估的各种预测 P-gp 外排的 QSAR 模型中,基于时间测试集的预测性能,Bagging 模型提供了最佳的预测。随着新数据的出现,用越来越多的化合物构建了四个版本的模型,以训练模型。除了具有最小训练集的第一个版本外,QSAR 模型都表现出稳健的预测特征,阳性预测值(PPV)和阴性预测值(NPV)均超过 80%。QSAR 模型与手动 P-gp 底物测定的一致性优于自动 P-gp 底物筛选。在药物发现的早期阶段,计算工具和体外工具已被有效地整合,以解决由几个案例研究举例说明的与 P-gp 相关的挑战。我们在 P-gp 方面的经验所获得的关键经验教训可以广泛应用于其他与 DMPK 相关的挑战。