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首页> 外文期刊>Journal of Computational Chemistry: Organic, Inorganic, Physical, Biological >Ligand and Structure-Based Models for the Prediction of Ligand-Receptor Affinities and Virtual Screenings: Development and Application to the b2-Adrenergic Receptor
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Ligand and Structure-Based Models for the Prediction of Ligand-Receptor Affinities and Virtual Screenings: Development and Application to the b2-Adrenergic Receptor

机译:配体和受体的亲和力和虚拟筛选的基于配体和结构的模型的预测:b2-肾上腺素能受体的开发和应用

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摘要

In this study, we evaluated the applicability of ligand-based and structure-based models to quantitative affinity predictions and virtual screenings for ligands of the b2-adrenergic receptor, a G protein-coupled receptor (GPCR). We also devised and evaluated a number of consensus models obtained through partial least square regressions, to combine the strengths of the individual components. In all cases, the bioactive conformation of each ligand was derived from molecular docking at the crystal structure of the receptor. We identified the most effective models applicable to the different scenarios, in the presence or in the absence of a training set. For ranking the affinity of closely related analogs when a training set is available, a ligand-based consensus model (LI-CM) seems to be the best choice, while the structure-based MM-GBSA score seems the best alternative in the absence of a training set. For virtual screening purposes, the structure-based MM-GBSA score was found to be the method of choice. Consensus models consistently had performances superior or close to those of the best individual components, and were endowed with a significantly increased robustness. Given multiple models with no a priori knowledge of their predictive capabilities, constructing a consensus model ensures results very close to those that the best model alone would have yielded.
机译:在这项研究中,我们评估了基于配体和基于结构的模型对b2-肾上腺素能受体(一种G蛋白偶联受体,GPCR)的配体的定量亲和力预测和虚拟筛选的适用性。我们还设计并评估了一些通过偏最小二乘回归获得的共识模型,以结合各个组件的优势。在所有情况下,每个配体的生物活性构象均源自分子在受体的晶体结构处的对接。在有或没有训练集的情况下,我们确定了适用于不同情况的最有效模型。为了在训练集可用时对紧密相关的类似物的亲和力进行排名,基于配体的共有模型(LI-CM)似乎是最好的选择,而基于结构的MM-GBSA评分似乎是没有选择的最佳选择。训练集。为了进行虚拟筛查,发现选择了基于结构的MM-GBSA评分。共识模型的性能始终优于或接近最佳单个组件,并且具有显着提高的鲁棒性。在没有先验知识的预测能力的情况下,给出多个模型,构建共识模型可确保结果非常接近仅凭最佳模型就能产生的结果。

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