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首页> 外文期刊>Molecular pharmaceutics >Development of Simplified in Vitro P-Glycoprotein Substrate Assay and in Silico Prediction Models To Evaluate Transport Potential of P-Glycoprotein
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Development of Simplified in Vitro P-Glycoprotein Substrate Assay and in Silico Prediction Models To Evaluate Transport Potential of P-Glycoprotein

机译:简化体外P-糖蛋白基质测定和硅预测模型的发展,以评估p-糖蛋白的运输潜力

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摘要

For efficient drug discovery and screening, it is necessary to simplify P-glycoprotein (P-gp) substrate assays and to provide in silico models that predict the transport potential of P-gp. In this study, we developed a simplified in vitro screening method to evaluate P-gp substrates by unidirectional membrane transport in P-gp-overexpressing cells. The unidirectional flux ratio positively correlated with parameters of the conventional bidirectional P-gp substrate assay (R-2 = 0.941) and in vivo K-p,K-brain ratio (mdr1a/1b KO/WT) in mice (R-2 = 0.800). Our in vitro P-gp substrate assay had high reproducibility and required approximately half the labor of the conventional method. We also constructed regression models to predict the value of P-gp-mediated flux and three-class classification models to predict P-gp substrate potential (low-, medium-, and high-potential) using 2397 data entries with the largest data set collected under the same experimental conditions. Most compounds in the test set fell within two- and three-fold errors in the random forest regression model (71.3 and 88.5%, respectively). Furthermore, the random forest three-class classification model showed a high balanced accuracy of 0.821 and precision of 0.761 for the lowpotential classes in the test set. We concluded that the simplified in vitro P-gp substrate assay was suitable for compound screening in the early stages of drug discovery and that the in silico regression model and three-class classification model using only chemical structure information could identify the transport potential of compounds including P-gp-mediated flux ratios. Our proposed method is expected to be a practical tool to optimize effective central nervous system (CNS) drugs, to avoid CNS side effects, and to improve intestinal absorption.
机译:为了有效的药物发现和筛选,有必要简化p-糖蛋白(P-GP)衬底测定并提供预测P-GP的运输电位的硅模型。在该研究中,我们开发了一种简化的体外筛选方法,以通过P-GP过表达细胞中的单向膜传输评估P-GP底物。与常规双向P-GP基板测定(R-2 = 0.941)和小鼠的k-脑比(MDR1a / 1b KO / WT)的常规双向P-GP基板测定(R-2 = 0.941)的参数正相关(R-2 = 0.800)的单向助焊剂比。我们的体外P-GP衬底测定具有高再现性,并且需要大约需要常规方法的劳动力的一半。我们还构造了回归模型,以预测P-GP介导的通量和三类分类模型的值,以使用具有最大数据集的2397个数据条目来预测P-GP基板电位(低,中等和高电位)在相同的实验条件下收集。测试集中的大多数化合物在随机森林回归模型(分别为71.3和88.5%)中的两倍和三倍误差下降。此外,随机森林三类分类模型显示出0.821的高均衡精度,并且测试集中的低平板等级为0.761的精度。我们得出结论,简化的体外P-GP衬底测定适用于药物发现的早期阶段的化合物筛选,并且仅使用化学结构信息的硅回归模型和三类分类模型可以识别包括的化合物的运输潜力P-GP介导的助焊剂比率。我们提出的方法预计将是优化有效的中枢神经系统(CNS)药物的实用工具,以避免CNS副作用,并改善肠道吸收。

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