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Predicting Binding Affinities for GPCR Ligands Using Free-Energy Perturbation

机译:使用自由能摄动预测GPCR配体的结合亲和力

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The rapid growth of structural information for G-protein-coupled receptors (GPCRs) has led to a greater understanding of their structure, function, selectivity, and ligand binding. Although novel ligands have been identified using methods such as virtual screening, computationally driven lead optimization has been possible only in isolated cases because of challenges associated with predicting binding free energies for related compounds. Here, we provide a systematic characterization of the performance of free-energy perturbation (FEP) calculations to predict relative binding free energies of congeneric ligands binding to GPCR targets using a consistent protocol and no adjustable parameters. Using the FEP+ package, first we validated the protocol, which includes a full lipid bilayer and explicit solvent, by predicting the binding affinity for a total of 45 different ligands across four different GPCRs (adenosine A_(2A)AR, β_(1) adrenergic, CXCR4 chemokine, and δ opioid receptors). Comparison with experimental binding affinity measurements revealed a highly predictive ranking correlation (average spearman ρ = 0.55) and low root-mean-square error (0.80 kcal/mol). Next, we applied FEP+ in a prospective project, where we predicted the affinity of novel, potent adenosine A_(2A) receptor (A_(2A)R) antagonists. Four novel compounds were synthesized and tested in a radioligand displacement assay, yielding affinity values in the nanomolar range. The affinity of two out of the four novel ligands (plus three previously reported compounds) was correctly predicted (within 1 kcal/mol), including one compound with approximately a tenfold increase in affinity compared to the starting compound. Detailed analyses of the simulations underlying the predictions provided insights into the structural basis for the two cases where the affinity was overpredicted. Taken together, these results establish a protocol for systematically applying FEP+ to GPCRs and provide guidelines for identifying potent molecules in drug discovery lead optimization projects.
机译:G蛋白偶联受体(GPCR)的结构信息的快速增长,导致人们对其结构,功能,选择性和配体结合有了更深入的了解。尽管已经使用诸如虚拟筛选的方法鉴定了新的配体,但是由于与预测相关化合物的结合自由能有关的挑战,仅在个别情况下才可能进行计算驱动的前导优化。在这里,我们提供了系统的自由能扰动(FEP)计算性能的表征,以使用一致的协议且没有可调参数来预测与GPCR目标结合的同类配体的相对结合自由能。使用FEP +软件包,我们首先通过预测四种不同GPCR对总共45种不同配体的结合亲和力(腺苷A_(2A)AR,β_(1)肾上腺素能)来验证包含完整脂质双层和显式溶剂的方案, ,CXCR4趋化因子和δ阿片受体)。与实验性结合亲和力测量结果的比较表明,具有高度预测性的排名相关性(平均矛兵ρ= 0.55)和较低的均方根误差(0.80 kcal / mol)。接下来,我们在前瞻性项目中应用了FEP +,我们在其中预测了新型有效的腺苷A_(2A)受体(A_(2A)R)拮抗剂的亲和力。合成了四种新型化合物,并在放射性配体置换试验中进行了测试,得出的亲和力值在纳摩尔范围内。正确预测了四种新配体中的两种(加上三种先前报道的化合物)的亲和力(在1 kcal / mol之内),其中一种化合物的亲和力与起始化合物相比增加了大约十倍。对预测所依据的模拟的详细分析提供了对亲和力被过度预测的两种情况的结构基础的见解。综上所述,这些结果建立了将FEP +应用于GPCR的协议,并为在药物开发线索优化项目中鉴定有效分子提供了指导。

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