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The Importance of the Regression Model in the Structure-Based Prediction of Protein-Ligand Binding

机译:回归模型在基于结构的蛋白质-配体结合预测中的重要性

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Docking is a key computational method for structure-based design of starting points in the drug discovery process. Recently, the use of non-parametric machine learning to circumvent modelling assumptions has been shown to result in a large improvement in the accuracy of docking. As a result, these machine-learning scoring functions are able to widely outperform classical scoring functions. The latter are characterized by their reliance on a predetermined theory-inspired functional form for the relationship between the variables that characterise the complex and its predicted binding affinity. In this paper, we demonstrate that the superior performance of machine-learning scoring functions comes from the avoidance of the functional form that all classical scoring functions assume. These scoring functions can now be directly applied to the docking poses generated by AutoDock Vina, which is expected to increase its accuracy. On the other hand, as it is well known that the assumption of additivity does not hold in some cases, it is expected that the described protocol will also improve other classical scoring functions, as it has been the case with Vina. Lastly, results suggest that incorporating ligand- and protein-only properties into a model is a promising avenue for future research.
机译:对接是用于药物发现过程中起点的基于结构设计的一种关键计算方法。近来,已证明使用非参数机器学习来规避建模假设会导致对接精度大大提高。结果,这些机器学习评分功能能够大大胜过经典评分功能。后者的特征在于,它们依赖于预定的,受理论启发的功能形式,以表征复合物的变量与其预测的结合亲和力之间的关系。在本文中,我们证明了机器学习评分功能的卓越性能来自于避免了所有经典评分功能都采用的功能形式。这些评分功能现在可以直接应用于AutoDock Vina生成的停靠姿势,这有望提高其准确性。另一方面,众所周知,在某些情况下不存在可加性的假设,因此,与Vina一样,可以预期所描述的协议还将改进其他经典评分功能。最后,结果表明将仅配体和蛋白质的特性整合到模型中是未来研究的有希望的途径。

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