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Improving protein-ligand binding site prediction accuracy by classification of inner pocket points using local features

机译:通过使用局部特征对内部口袋点进行分类来提高蛋白质-配体结合位点的预测准确性

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Background Protein-ligand binding site prediction from a 3D protein structure plays a pivotal role in rational drug design and can be helpful in drug side-effects prediction or elucidation of protein function. Embedded within the binding site detection problem is the problem of pocket ranking – how to score and sort candidate pockets so that the best scored predictions correspond to true ligand binding sites. Although there exist multiple pocket detection algorithms, they mostly employ a fairly simple ranking function leading to sub-optimal prediction results. Results We have developed a new pocket scoring approach (named PRANK) that prioritizes putative pockets according to their probability to bind a ligand. The method first carefully selects pocket points and labels them by physico-chemical characteristics of their local neighborhood. Random Forests classifier is subsequently applied to assign a ligandability score to each of the selected pocket point. The ligandability scores are finally merged into the resulting pocket score to be used for prioritization of the putative pockets. With the used of multiple datasets the experimental results demonstrate that the application of our method as a post-processing step greatly increases the quality of the prediction of Fpocket and ConCavity, two state of the art protein-ligand binding site prediction algorithms. Conclusions The positive experimental results show that our method can be used to improve the success rate, validity and applicability of existing protein-ligand binding site prediction tools. The method was implemented as a stand-alone program that currently contains support for Fpocket and Concavity out of the box, but is easily extendible to support other tools. PRANK is made freely available at http://siret.ms.mff.cuni.cz/prank webcite.
机译:背景技术从3D蛋白质结构预测蛋白质-配体结合位点在合理的药物设计中起着关键作用,并且有助于预测药物的副作用或阐明蛋白质的功能。结合位点检测问题中嵌入的是口袋排名的问题-如何对候选口袋进行评分和排序,以使得分最高的预测对应于真正的配体结合位点。尽管存在多种口袋检测算法,但它们大多采用相当简单的排序功能,导致次优的预测结果。结果我们开发了一种新的口袋计分方法(称为PRANK),该方法根据推定的口袋与配体结合的可能性来对它们进行优先排序。该方法首先仔细选择口袋点,并通过其局部邻域的物理化学特征对其进行标记。随后应用随机森林分类器为每个选定的口袋点分配一个配体性得分。配体性分数最终合并到所得的口袋分数中,用于优先考虑假定的口袋。通过使用多个数据集,实验结果表明,我们的方法作为后处理步骤的应用大大提高了Fpocket和ConCavity预测的质量,这是两种最先进的蛋白质-配体结合位点预测算法。结论积极的实验结果表明,该方法可用于提高现有蛋白质-配体结合位点预测工具的成功率,有效性和适用性。该方法是作为独立程序实现的,该程序当前包含对Fpocket和Concavity的支持,但是很容易扩展以支持其他工具。 PRANK可从http://siret.ms.mff.cuni.cz/prank网站免费获得。

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