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Improving Docking-Based Virtual Screening Ability by Integrating Multiple Energy Auxiliary Terms from Molecular Docking Scoring

机译:通过将多种能量辅助术语从分子对接得分集成来改善基于对接的虚拟筛选能力

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摘要

Virtual Screening (VS) based on molecular docking is an efficient method used for retrieving novel hit compounds in drug discovery. However, the accuracy of the current docking scoring function (SF) is usually insufficient. In this study, in order to improve the screening power of SF, a novel approach named EAT-Score was proposed by directly utilizing the energy auxiliary terms (EAT) provided by molecular docking scoring through eXtreme Gradient Boosting (XGBoost). Here, EAT specifically refers to the output of the Molecular Operating Environment (MOE) scoring, including the energy scores of five different classical SFs and the Protein-Ligand Interaction Fingerprint (PLIF) terms. The performance of EAT-Score to discriminate actives from decoys was strictly validated on the DUD-E diverse subset by using different performance metrics. The results showed that EAT-Score performed much better than classical SFs in VS, with its AUC values exhibiting an improvement of around 0.3. Meanwhile, EAT-Score could achieve comparable even better prediction performance compared with other state-of-the-art VS methods, such as some machine learning (ML)-based SFs and classical SFs implemented in docking programs, in terms of AUC, LogAUC, or BEDROC. Furthermore, the EAT-Score model can capture important binding pattern information from protein-ligand complexes by Shapley additive explanations (SHAP) analysis, which may be very helpful in interpreting the ligand binding mechanism for a certain target and thereby guiding drug design.
机译:基于分子对接的虚拟筛选(VS)是一种在药物发现中检索新的命中化合物的有效方法。然而,目前对接评分函数(SF)的准确性通常不够。在本研究中,为了提高SF的筛选能力,通过极端梯度提升(XGBoost)直接利用分子对接评分(molecular docking scoring)提供的能量辅助项(EAT),提出了一种新的方法EAT评分。这里,EAT具体指的是分子操作环境(MOE)评分的输出,包括五种不同经典SF的能量评分和蛋白质-配体相互作用指纹(PLIF)项。通过使用不同的性能指标,在DUD-E多样性子集上严格验证EAT分数区分活性物和诱饵的性能。结果表明,EAT评分在VS方面比经典SFs表现得更好,其AUC值显示出约0.3的改善。同时,EAT评分与其他最先进的VS方法相比,可以达到相当甚至更好的预测性能,例如一些基于机器学习(ML)的SFs和对接程序中实现的经典SFs,在AUC、LogAUC或BEDROC方面。此外,EAT评分模型可以通过Shapley加法解释(SHAP)分析从蛋白质-配体复合物中捕获重要的结合模式信息,这可能有助于解释特定靶点的配体结合机制,从而指导药物设计。

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    Cent South Univ Xiangya Sch Pharmaceut Sci Changsha 410003 Peoples R China;

    Zhejiang Univ Hangzhou Inst Innovat Med Coll Pharmaceut Sci Hangzhou 310058 Peoples R China;

    Cent South Univ Xiangya Sch Pharmaceut Sci Changsha 410003 Peoples R China;

    Beijing Inst Pharmaceut Chem Beijing 102205 Peoples R China;

    Hong Kong Baptist Univ Inst Adv Translat Med Bone &

    Joint Dis Sch Chinese Med Hong Kong Peoples R China;

    Zhejiang Univ Hangzhou Inst Innovat Med Coll Pharmaceut Sci Hangzhou 310058 Peoples R China;

    Cent South Univ Xiangya Sch Pharmaceut Sci Changsha 410003 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 化学;化学工业;
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