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Improving ligand 3D shape similarity-based pose prediction with a continuum solvent model

机译:用连续溶剂模型改善配体3D形状相似性的姿态预测

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In order to improve the pose prediction performance of docking methods, we have previously developed the pose prediction using shape similarity (PoPSS) method. It identifies a ligand conformation of the highest shape similarity with target protein crystal ligands. The identified ligand conformation is then placed into the target protein binding pocket and refined using side-chain repacking and Monte Carlo energy minimization. Subsequently, we have reported a modification to PoPSS, named as PoPSS-Lite, using a simple grid-based energy minimization for side-chain repacking and Tversky correlation coefficient as the similarity metric. This modification has improved the pose prediction performance and PoPSS-Lite was one of the top performers in D3R GC3. Here we report a further modification to PoPSS that utilizes a continuum solvent model to account for water mediated protein ligand interactions. In this approach, named as PoPSS-PB, the ligand conformation of the highest shape similarity with crystal ligands is refined along with the target protein binding site by incorporating the Poisson-Boltzmann electrostatics. The performance of PoPSS-PB along with PoPSS and PoPSS-Lite was prospectively evaluated in D3R GC4. PoPSS-PB not only demonstrated excellent performance with mean and median RMSDs of 1.20 and 1.13 angstrom but also achieved improved performance over PoPSS and PoPSS-Lite. Furthermore, the comparison with other D3R GC4 pose prediction submissions revealed admirable performance. Our results showed that the binding poses of ligands with unknown binding modes can be successfully predicted by utilizing ligand 3D shape similarity with known crystallographic ligands and that taking the solvation into consideration improves pose prediction. Graphic abstract
机译:为了提高对接方法的姿态预测性能,我们之前使用形状相似性(POPSS)方法开发了姿态预测。它识别与靶蛋白质晶体配体的最高形状相似性的配体构象。然后将鉴定的配体构象置于靶蛋白结合口袋中并使用侧链重新包装和蒙特卡罗能量最小化改进。随后,我们已经报告了对Popss的修改,命名为Popss-Lite,使用简单的基于网格的能量最小化作为相似度量的侧链重新包装和Tversky相关系数。该修改改善了姿势预测性能,Popss-Lite是D3R GC3中的顶部表演者之一。在这里,我们报告了对利用连续溶剂模型的POPS的进一步修改,以考虑水介导的蛋白质配体相互作用。在这种方法中,作为Popss-Pb的命名,通过结合泊松 - 玻璃柱静电,与晶体配体的最高形状相似性的配体构象与靶蛋白结合位点一起改进。 POPS-PB与POPSS和POPSS-LITE的性能在D3R GC4中进行了预期评估。 POPSS-PB不仅表现出优异的性能,平均值和中位数RMSD为1.20和1.13埃,而且还实现了对POPS和POPSS-LITE的改进性能。此外,与其他D3R GC4姿势预测提交的比较揭示了令人钦佩的性能。我们的研究结果表明,通过利用已知的晶体配体利用配体3D形状相似性,可以成功预测与未知结合模式的配体的结合姿势,并考虑溶解的溶剂改善了姿态预测。图形摘要

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