Jain Sankalp, Grandits Melanie, Richter Lars, Ecker Gerhard F
Department of Pharmaceutical Chemistry, University of Vienna, Althanstrasse 14, 1090, Vienna, Austria.
J Comput Aided Mol Des. 2017 Jun;31(6):507-521. doi: 10.1007/s10822-017-0021-x. Epub 2017 May 19.
The bile salt export pump (BSEP) actively transports conjugated monovalent bile acids from the hepatocytes into the bile. This facilitates the formation of micelles and promotes digestion and absorption of dietary fat. Inhibition of BSEP leads to decreased bile flow and accumulation of cytotoxic bile salts in the liver. A number of compounds have been identified to interact with BSEP, which results in drug-induced cholestasis or liver injury. Therefore, in silico approaches for flagging compounds as potential BSEP inhibitors would be of high value in the early stage of the drug discovery pipeline. Up to now, due to the lack of a high-resolution X-ray structure of BSEP, in silico based identification of BSEP inhibitors focused on ligand-based approaches. In this study, we provide a homology model for BSEP, developed using the corrected mouse P-glycoprotein structure (PDB ID: 4M1M). Subsequently, the model was used for docking-based classification of a set of 1212 compounds (405 BSEP inhibitors, 807 non-inhibitors). Using the scoring function ChemScore, a prediction accuracy of 81% on the training set and 73% on two external test sets could be obtained. In addition, the applicability domain of the models was assessed based on Euclidean distance. Further, analysis of the protein-ligand interaction fingerprints revealed certain functional group-amino acid residue interactions that could play a key role for ligand binding. Though ligand-based models, due to their high speed and accuracy, remain the method of choice for classification of BSEP inhibitors, structure-assisted docking models demonstrate reasonably good prediction accuracies while additionally providing information about putative protein-ligand interactions.
胆盐输出泵(BSEP)将结合的单价胆汁酸从肝细胞主动转运至胆汁中。这有助于形成微胶粒,并促进膳食脂肪的消化与吸收。抑制BSEP会导致胆汁流动减少以及细胞毒性胆汁盐在肝脏中蓄积。已鉴定出多种与BSEP相互作用的化合物,这会导致药物性胆汁淤积或肝损伤。因此,在药物研发流程的早期阶段,利用计算机方法筛选可能的BSEP抑制剂具有很高的价值。到目前为止,由于缺乏BSEP的高分辨率X射线结构,基于计算机的BSEP抑制剂鉴定主要集中在基于配体的方法上。在本研究中,我们利用校正后的小鼠P-糖蛋白结构(PDB编号:4M1M)构建了BSEP的同源模型。随后,该模型被用于对一组1212种化合物(405种BSEP抑制剂,807种非抑制剂)进行基于对接的分类。使用ChemScore评分函数,在训练集上的预测准确率可达81%,在两个外部测试集上的预测准确率为73%。此外,基于欧几里得距离评估了模型的适用范围。此外,对蛋白质-配体相互作用指纹的分析揭示了某些官能团-氨基酸残基相互作用,这些相互作用可能在配体结合中起关键作用。尽管基于配体的模型因其高速度和准确性,仍是BSEP抑制剂分类的首选方法,但结构辅助对接模型显示出相当不错的预测准确率,同时还能提供有关假定的蛋白质-配体相互作用的信息。