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Improving Binding Mode Predictions by Docking into Protein-Specifically Adapted Potential Fields

机译:通过停靠到蛋白质专门适应的势场来改善结合模式的预测。

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摘要

The development of a protein-specifically adapted objective function for docking is described.Structural and energetic information about known protein-ligand complexes is exploited to tailor knowledge-based potentials using a "reverse",protein-based CoMFA-type (=AFMoC) approach.That way,effects due to protein flexibility and information about multiple solvation schemes can be implicitly incorporated.Compared to the application of AFMoC for binding affinity predictions,a Shannon entropy based column filtering of the descriptor matrix and the capping of adapted repulsive potentials within the binding site have turned out to be crucial for the success of this method.The new developed approach (AFMoC~(°bj)) was validated on a data set of 66 HIV-1 protease inhibitors,for which experimental structural information was available.Convincingly,for ligands with up to 20 rotatable bonds,in more than 75% of all cases a binding mode below 2 A rmsd has been identified on the first scoring rank when AFMoC~(obj)-based potentials were used as the objective function in AutoDock.With respect to nonadapted DrugScore or AutoDock fields,the binding mode prediction accuracy was significantly improved by 14%.Noteworthy,very similar results were obtained for training and test set compounds,demonstrating the strength and robustness of this method.Implications of our findings for binding affinity predictions and its usage in virtual screening are further discussed.
机译:描述了蛋白质对接的目标功能的发展。利用已知的蛋白质-配体复合物的结构和能量信息,利用“反向”,基于蛋白质的CoMFA型(= AFMoC)方法来量身定制基于知识的潜力这样,就可以隐含结合蛋白质柔韧性和有关多种溶剂化方案的信息所产生的影响。与AFMoC在结合亲和力预测中的应用相比,基于香农熵的描述符矩阵列过滤和适应性排斥电位的上限结合位点对于该方法的成功至关重要。新开发的方法(AFMoC〜(°bj))在66种HIV-1蛋白酶抑制剂的数据集上得到了验证,该数据可获得实验结构信息。 ,对于具有最多20个可旋转键的配体,在超过75%的所有情况下,当A达到第一个得分等级时,就会确定低于2 A rmsd的结合模式基于FMoC〜(obj)的电势用作AutoDock的目标函数。对于不适应的DrugScore或AutoDock字段,结合模式的预测准确性显着提高了14%。值得注意的是,训练和测试集获得了非常相似的结果我们的发现对结合亲和力预测的含义及其在虚拟筛选中的用途进行了进一步的讨论。

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