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首页> 外文期刊>BMC Structural Biology >Four-body atomic potential for modeling protein-ligand binding affinity: application to enzyme-inhibitor binding energy prediction
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Four-body atomic potential for modeling protein-ligand binding affinity: application to enzyme-inhibitor binding energy prediction

机译:用于模拟蛋白质-配体结合亲和力的四体原子势:在酶-抑制剂结合能预测中的应用

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BackgroundModels that are capable of reliably predicting binding affinities for protein-ligand complexes play an important role the field of structure-guided drug design.MethodsHere, we begin by applying the computational geometry technique of Delaunay tessellation to each set of atomic coordinates for over 1400 diverse macromolecular structures, for the purpose of deriving a four-body statistical potential that serves as a topological scoring function. Next, we identify a second, independent set of three hundred protein-ligand complexes, having both high-resolution structures and known dissociation constants. Two-thirds of these complexes are randomly selected to train a predictive model of binding affinity as follows: two tessellations are generated in each case, one for the entire complex and another strictly for the isolated protein without its bound ligand, and a topological score is computed for each tessellation with the four-body potential. Predicted protein-ligand binding affinity is then based on an empirically derived linear function of the difference between both topological scores, one that appropriately scales the value of this difference.ResultsA comparison between experimental and calculated binding affinity values over the two hundred complexes reveals a Pearson's correlation coefficient of r = 0.79 with a standard error of SE = 1.98 kcal/mol. To validate the method, we similarly generated two tessellations for each of the remaining protein-ligand complexes, computed their topological scores and the difference between the two scores for each complex, and applied the previously derived linear transformation of this topological score difference to predict binding affinities. For these one hundred complexes, we again observe a correlation of r = 0.79 (SE = 1.93 kcal/mol) between known and calculated binding affinities. Applying our model to an independent test set of high-resolution structures for three hundred diverse enzyme-inhibitor complexes, each with an experimentally known inhibition constant, also yields a correlation of r = 0.79 (SE = 2.39 kcal/mol) between experimental and calculated binding energies.ConclusionsLastly, we generate predictions with our model on a diverse test set of one hundred protein-ligand complexes previously used to benchmark 15 related methods, and our correlation of r = 0.66 between the calculated and experimental binding energies for this dataset exceeds those of the other approaches. Compared with these related prediction methods, our approach stands out based on salient features that include the reliability of our model, combined with the rapidity of the generated predictions, which are less than one second for an average sized complex.
机译:背景技术能够可靠地预测蛋白质-配体复合物结合亲和力的模型在结构指导药物设计领域中发挥着重要作用。方法在此,我们首先将Delaunay细分的计算几何技术应用于每组1400多种不同的原子坐标中大分子结构,目的是得出具有拓扑计分功能的四体统计潜力。接下来,我们确定了第二套独立的三百种蛋白质-配体复合物,它们既具有高分辨率结构又具有已知的解离常数。随机选择这些复合物中的三分之二,以训练结合亲和力的预测模型,如下所示:在每种情况下都会生成两个棋盘形,一个针对整个复合物,另一个严格针对没有其结合配体的分离蛋白,拓扑分数为计算每个具有四体电位的细分。预测的蛋白-配体结合亲和力是基于两个拓扑评分之间的差异的经验得出的线性函数,该函数可以适当地缩放此差异的值。结果对这200种复合物的实验和计算的结合亲和力值进行比较,发现皮尔森相关系数r = 0.79,标准误差SE = 1.98 kcal / mol。为了验证该方法,我们类似地为每个剩余的蛋白质-配体复合物生成了两个镶嵌,计算了它们的拓扑分数和每种复合物的两个分数之间的差,并应用了该拓扑分数差的先前推导的线性变换来预测结合亲和力。对于这一百种复合物,我们再次观察到已知和计算的结合亲和力之间的相关性r = 0.79(SE = 1.93 kcal / mol)。将我们的模型应用于针对300种不同酶抑制剂复合物的高分辨率结构的独立测试集,每种复合物均具有实验上已知的抑制常数,在实验值与计算值之间的相关系数r = 0.79(SE = 2.39 kcal / mol)最后,我们使用模型对一百种蛋白质-配体复合物进行了多样化测试,并使用该模型进行了预测,以前使用该基准测试了15种相关方法,该数据集的计算和实验结合能之间的r = 0.66的相关性超过了其他方法。与这些相关的预测方法相比,我们的方法基于显着特征而脱颖而出,这些特征包括模型的可靠性以及所生成预测的速度,对于平均规模的复杂系统而言,预测速度不到一秒钟。

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