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Using parallelized incremental meta-docking can solve the conformational sampling issue when docking large ligands to proteins

机译:当将大型配体与蛋白质对接时,使用并行化的增量对接可以解决构象采样问题

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Docking large ligands, and especially peptides, to protein receptors is still considered a challenge in computational structural biology. Besides the issue of accurately scoring the binding modes of a protein-ligand complex produced by a molecular docking tool, the conformational sampling of a large ligand is also often considered a challenge because of its underlying combinatorial complexity. In this study, we evaluate the impact of using parallelized and incremental paradigms on the accuracy and performance of conformational sampling when docking large ligands. We use five datasets of protein-ligand complexes involving ligands that could not be accurately docked by classical protein-ligand docking tools in previous similar studies. Our computational evaluation shows that simply increasing the amount of conformational sampling performed by a protein-ligand docking tool, such as Vina, by running it for longer is rarely beneficial. Instead, it is more efficient and advantageous to run several short instances of this docking tool in parallel and group their results together, in a straightforward parallelized docking protocol. Even greater accuracy and efficiency are achieved by our parallelized incremental meta-docking tool, DINC, showing the additional benefits of its incremental paradigm. Using DINC, we could accurately reproduce the vast majority of the protein-ligand complexes we considered. Our study suggests that, even when trying to dock large ligands to proteins, the conformational sampling of the ligand should no longer be considered an issue, as simple docking protocols using existing tools can solve it. Therefore, scoring should currently be regarded as the biggest unmet challenge in molecular docking.
机译:在计算结构生物学中,仍然认为将大的配体,尤其是肽对接至蛋白质受体。除了对分子对接工具产生的蛋白质-配体复合物的结合模式进行精确评分的问题外,由于其潜在的组合复杂性,通常也认为大配体的构象采样是一个挑战。在这项研究中,我们评估了对接大型配体时,使用并行和增量范式对构象采样的准确性和性能的影响。我们使用涉及配体的五个蛋白质-配体复合物数据集,这些数据在以前的类似研究中无法通过经典的蛋白质-配体对接工具精确对接。我们的计算评估表明,仅通过运行更长的时间来简单地增加蛋白质配体对接工具(例如Vina)执行的构象采样的数量几乎是没有好处的。取而代之的是,以一种简单的并行化对接协议并行运行此对接工具的多个短实例,并将其结果分组在一起,这样会更加高效和有利。我们的并行化增量式对接工具DINC实现了更高的准确性和效率,显示了其增量范式的其他优势。使用DINC,我们可以准确地复制我们考虑的绝大多数蛋白质-配体复合物。我们的研究表明,即使尝试将大型配体与蛋白质对接,配体的构象采样也不再是问题,因为使用现有工具进行简单的对接即可解决该问题。因此,评分目前应被视为分子对接中最大的未满足挑战。

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