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The Impact of Docking Pose Generation Error on the Prediction of Binding Affinity

机译:对接姿势生成错误对结合亲和力预测的影响

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Docking is a computational technique that predicts the preferred conformation and binding affinity of a ligand molecule as bound to a protein pocket. It is often employed to identify a molecule that binds tightly to the target, so that a small concentration of the molecule is sufficient to modulate its biochemical function. The use of non-parametric machine learning, a data-driven approach that circumvents the need of modeling assumptions, has recently been shown to introduce a large improvement in the accuracy of docking scoring. However, the impact of pose generation error on binding affinity prediction is still to be investigated. Here we show that the impact of pose generation is generally limited to a small decline in the accuracy of scoring. These machine-learning scoring functions retained the highest performance on PDBbind v2007 core set in this common scenario where one has to predict the binding affinity of docked poses instead of that of co-crystallized poses (e.g. drug lead optimization). Nevertheless, we observed that these functions do not perform so well at predicting the near-native pose of a ligand. This suggests that having different scoring functions for different problems is a better approach than using the same scoring function for all problems.
机译:对接是一种计算技术,可预测与蛋白质袋结合的配体分子的优选构象和结合​​亲和力。它通常用于鉴定与靶标紧密结合的分子,因此低浓度的分子足以调节其生化功能。非参数机器学习的使用,这种数据驱动的方法避免了建模假设的需要,最近被证明可以极大地提高对接评分的准确性。但是,姿势产生错误对结合亲和力预测的影响尚待研究。在这里,我们表明,姿势生成的影响通常仅限于评分准确性的小幅下降。在这种常见场景中,这些机器学习评分功能在PDBbind v2007核心集上保持了最高的性能,在这种情况下,人们必须预测对接姿势的绑定亲和力,而不是共结晶姿势的绑定亲和力(例如,药物前导优化)。然而,我们观察到这些功能在预测配体的近乎自然姿势方面表现不佳。这表明与对所有问题使用相同的评分功能相比,对不同的问题使用不同的评分功能是更好的方法。

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