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对接应用程序 RF:一种用于分子对接的最先进的新型评分函数,具有用户友好的界面,可与 AutoDock Vina 配合使用。

DockingApp RF: A State-of-the-Art Novel Scoring Function for Molecular Docking in a User-Friendly Interface to AutoDock Vina.

机构信息

Department of Sciences, Roma Tre University, 00146 Rome, Italy.

Faculty of Mathematical, Physical and Natural Sciences, Catholic University of the Sacred Heart, 25121 Brescia, Italy.

出版信息

Int J Mol Sci. 2020 Dec 15;21(24):9548. doi: 10.3390/ijms21249548.

Abstract

MOTIVATION

Bringing a new drug to the market is expensive and time-consuming. To cut the costs and time, computer-aided drug design (CADD) approaches have been increasingly included in the drug discovery pipeline. However, despite traditional docking tools show a good conformational space sampling ability, they are still unable to produce accurate binding affinity predictions. This work presents a novel scoring function for molecular docking seamlessly integrated into DockingApp, a user-friendly graphical interface for AutoDock Vina. The proposed function is based on a random forest model and a selection of specific features to overcome the existing limits of Vina's original scoring mechanism. A novel version of DockingApp, named DockingApp RF, has been developed to host the proposed scoring function and to automatize the rescoring procedure of the output of AutoDock Vina, even to nonexpert users.

RESULTS

By coupling intermolecular interaction, solvent accessible surface area features and Vina's energy terms, DockingApp RF's new scoring function is able to improve the binding affinity prediction of AutoDock Vina. Furthermore, comparison tests carried out on the CASF-2013 and CASF-2016 datasets demonstrate that DockingApp RF's performance is comparable to other state-of-the-art machine-learning- and deep-learning-based scoring functions. The new scoring function thus represents a significant advancement in terms of the reliability and effectiveness of docking compared to AutoDock Vina's scoring function. At the same time, the characteristics that made DockingApp appealing to a wide range of users are retained in this new version and have been complemented with additional features.

摘要

动机

将新药推向市场既昂贵又耗时。为了降低成本和时间,计算机辅助药物设计(CADD)方法已越来越多地纳入药物发现管道。然而,尽管传统的对接工具显示出良好的构象空间采样能力,但它们仍然无法产生准确的结合亲和力预测。本工作提出了一种新的分子对接评分函数,无缝集成到 DockingApp 中,DockingApp 是 AutoDock Vina 的用户友好图形界面。所提出的功能基于随机森林模型和一组特定特征,以克服 Vina 原始评分机制的现有限制。开发了一个名为 DockingApp RF 的新版本的 DockingApp,以承载所提出的评分功能,并自动重新评分 AutoDock Vina 的输出,即使是对非专业用户也是如此。

结果

通过结合分子间相互作用、溶剂可及表面积特征和 Vina 的能量项,DockingApp RF 的新评分函数能够提高 AutoDock Vina 的结合亲和力预测。此外,在 CASF-2013 和 CASF-2016 数据集上进行的比较测试表明,DockingApp RF 的性能可与其他最先进的基于机器学习和深度学习的评分函数相媲美。与 AutoDock Vina 的评分函数相比,新的评分函数在对接的可靠性和有效性方面代表了重大进展。同时,在这个新版本中保留了使 DockingApp 吸引广泛用户的特征,并增加了其他功能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f7a6/7765429/3391e849b604/ijms-21-09548-g001.jpg

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