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首页> 外文期刊>Journal of chemical information and modeling >Predicting Binding Poses and Affinities in the CSAR 2013-2014 Docking Exercises Using the Knowledge-Based Convex-PL Potential
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Predicting Binding Poses and Affinities in the CSAR 2013-2014 Docking Exercises Using the Knowledge-Based Convex-PL Potential

机译:使用基于知识的Convex-PL势预测CSAR 2013-2014对接演习中的绑定姿势和相似性

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The 2013-2014 CSAR docking exercise was the opportunity to assess the performance of the novel knowledge based potential we are developing, named Convex-PL. The data used to derive the potential consists only of structural information from protein ligand interfaces found in the PDBBind database. As expected, our potential proved to be very efficient in the near native pose detection exercises, where we correctly predicted two near-native poses in the 2013 exercise and also ranked 22 near native poses first and 2 second in the 2014 exercise. Somewhat more surprisingly, we obtained a fair performance in some of the CSAR affinity ranking exercises, where the Spearman correlation coefficients between our predictions and the experiments are greater than 0.5 for several protein ligand sets. Nonetheless, affinity prediction exercises turned out to be a challenge, and significant progress in the development of our method is needed before we can successfully predict binding constants.
机译:2013-2014年的CSAR对接演习是评估我们正在开发的名为Convex-PL的新型知识潜力的表现的机会。用于推导潜力的数据仅包含来自PDBBind数据库中蛋白质配体界面的结构信息。不出所料,我们的潜力在近自然姿势检测练习中被证明是非常有效的,我们在2013年的练习中正确预测了两个近自然姿势,并且在2014年的练习中排名第一,第二近自然姿势排名第二,第二。更令人惊讶的是,我们在一些CSAR亲和力排名练习中获得了不错的成绩,其中对于某些蛋白质配体集,我们的预测与实验之间的Spearman相关系数大于0.5。尽管如此,亲和力预测练习仍然是一个挑战,在成功预测结合常数之前,我们方法的开发需要取得重大进展。

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