Erić S, Kalinić M, Ilić K, Zloh M
a Department of Pharmaceutical Chemistry , University of Belgrade , Belgrade , Serbia.
SAR QSAR Environ Res. 2014;25(12):939-66. doi: 10.1080/1062936X.2014.976265. Epub 2014 Dec 1.
P-glycoprotein (P-gp/ABCB1) and breast cancer resistance protein (BCRP/ABCG2) are two members of the adenosine triphosphate (ATP) binding cassette (ABC) family of transporters which function as membrane efflux transporters and display considerable substrate promiscuity. Both are known to significantly influence the absorption, distribution and elimination of drugs, mediate drug-drug interactions and contribute to multiple drug resistance (MDR) of cancer cells. Correspondingly, timely characterization of the interaction of novel leads and drug candidates with these two transporters is of great importance. In this study, several computational classification models for prediction of transport and inhibition of P-gp and BCRP, respectively, were developed based on newly compiled and critically evaluated experimental data. Artificial neural network (ANN) and support vector machine (SVM) ensemble based models were explored, as well as knowledge-based approaches to descriptor selection. The average overall classification accuracy of best performing models was 82% for P-gp transport, 88% for BCRP transport, 89% for P-gp inhibition and 87% for BCRP inhibition, determined across an array of different test sets. An analysis of substrate overlap between P-gp and BCRP was also performed. The accuracy, simplicity and interpretability of the proposed models suggest that they could be of significant utility in the drug discovery and development settings.
P-糖蛋白(P-gp/ABCB1)和乳腺癌耐药蛋白(BCRP/ABCG2)是三磷酸腺苷(ATP)结合盒(ABC)转运蛋白家族的两个成员,它们作为膜外排转运蛋白发挥作用,且底物选择性相当广泛。已知这两种蛋白都会显著影响药物的吸收、分布和消除,介导药物相互作用,并导致癌细胞的多药耐药(MDR)。相应地,及时表征新型先导化合物和候选药物与这两种转运蛋白的相互作用非常重要。在本研究中,基于新收集并经过严格评估的实验数据,分别开发了几种用于预测P-gp和BCRP转运及抑制作用的计算分类模型。探索了基于人工神经网络(ANN)和支持向量机(SVM)集成的模型,以及基于知识的描述符选择方法。在一系列不同测试集上确定,表现最佳的模型对于P-gp转运的平均总体分类准确率为82%,对于BCRP转运为88%,对于P-gp抑制为89%,对于BCRP抑制为87%。还对P-gp和BCRP之间的底物重叠进行了分析。所提出模型的准确性、简单性和可解释性表明,它们在药物发现和开发环境中可能具有重要用途。