QuantumBio Inc, 200 Innovation Boulevard, State College, Pennsylvania 16803 and Johnson & Johnson Pharmaceutical Research and Development, LLC, Welsh and McKean Roads, PO Box 776, Spring House, Pennsylvania 19477, USA.
J Chem Inf Model. 2010 Apr 26;50(4):651-61. doi: 10.1021/ci9003333.
Quantum mechanical semiempirical comparative binding energy analysis calculations have been carried out for a series of protein kinase B (PKB) inhibitors derived from fragment- and structure-based drug design. These protein-ligand complexes were selected because they represent a consistent set of experimental data that includes both crystal structures and affinities. Seven scoring functions were evaluated based on both the PM3 and the AM1 Hamiltonians. The optimal models obtained by partial least-squares analysis of the aligned poses are predictive as measured by a number of standard statistical criteria and by validation with an external data set. An algorithm has been developed that provides residue-based contributions to the overall binding affinity. These residue-based binding contributions can be plotted in heat maps so as to highlight the most important residues for ligand binding. In the case of these PKB inhibitors, the maps show that Met166, Thr97, Gly43, Glu114, Ala116, and Val50, among other residues, play an important role in determining binding affinity. The interaction energy map makes it easy to identify the residues that have the largest absolute effect on ligand binding. The structure-activity relationship (SAR) map highlights residues that are most critical to discriminating between more and less potent ligands. Taken together the interaction energy and the SAR maps provide useful insights into drug design that would be difficult to garner in any other way.
已针对一系列源自片段和基于结构的药物设计的蛋白激酶 B (PKB) 抑制剂进行了量子力学半经验比较结合能分析计算。这些蛋白配体复合物被选中是因为它们代表了一组一致的实验数据,包括晶体结构和亲和力。基于 PM3 和 AM1 哈密顿量评估了七种评分函数。通过对齐构象的偏最小二乘分析获得的最佳模型可以通过许多标准统计标准进行预测,并通过外部数据集进行验证。已经开发了一种算法,该算法提供了对整体结合亲和力的基于残基的贡献。这些基于残基的结合贡献可以绘制在热图中,以突出对配体结合最重要的残基。在这些 PKB 抑制剂的情况下,图谱表明 Met166、Thr97、Gly43、Glu114、Ala116 和 Val50 等残基在决定结合亲和力方面起着重要作用。相互作用能量图可轻松识别对配体结合具有最大绝对影响的残基。结构活性关系 (SAR) 图突出显示了对区分更有效和更无效配体最关键的残基。总而言之,相互作用能量图和 SAR 图提供了对药物设计的有用见解,这是其他方式难以获得的。