Department of Medicinal Chemistry and Molecular Pharmacology, Purdue University, West Lafayette, IN 47907, USA.
Proteins. 2012 Jan;80(1):246-60. doi: 10.1002/prot.23199. Epub 2011 Nov 9.
Flexible loop regions play a critical role in the biological function of many proteins and have been shown to be involved in ligand binding. In the context of structure-based drug design, using or predicting an incorrect loop configuration can be detrimental to the study if the loop is capable of interacting with the ligand. Three protein systems, each with at least one flexible loop region in close proximity to the known binding site, were selected for loop prediction using the CorLps program; a six residue loop region from phosphoribosylglycinamide formyltransferase (GART), two nine residue loop regions from cytochrome P450 (CYP) 119, and an 11 residue loop region from enolase were selected for loop prediction. The results of this study indicate that the statistically based DFIRE scoring function implemented in the CorLps program did not accurately rank native-like predicted loop configurations in any protein system. In an attempt to improve the ranking of the native-like predicted loop configurations, the MM/GBSA and the optimized MM/GBSA-dsr scoring functions were used to re-rank the predicted loops with and without bound ligand. In general, single snapshot MM/GBSA scoring provided the best ranking of native-like loop configurations. Based on the scoring function analyses presented, the optimal ranking of native-like loop configurations is still a difficult challenge and the choice of the "best" scoring function appears to be system dependent.
柔性环区在许多蛋白质的生物学功能中起着关键作用,并且已经证明它们参与了配体结合。在基于结构的药物设计中,如果环能够与配体相互作用,那么使用或预测不正确的环构象可能会对研究造成损害。选择了三个蛋白质系统,每个系统都有至少一个靠近已知结合位点的柔性环区,使用 CorLps 程序进行环预测;从磷酸核糖基甘氨酰胺(formyltransferase) (GART)中选择了一个六残基环区,从细胞色素 P450 (CYP) 119 中选择了两个九残基环区,从烯醇酶中选择了一个十一残基环区进行环预测。这项研究的结果表明,CorLps 程序中实施的基于统计的 DFIRE 评分函数不能准确地对任何蛋白质系统中的天然样预测环构象进行排序。为了提高天然样预测环构象的排序,使用 MM/GBSA 和优化的 MM/GBSA-dsr 评分函数重新对有和没有结合配体的预测环进行排序。一般来说,单快照 MM/GBSA 评分提供了对天然样环构象的最佳排序。基于所提出的评分函数分析,天然样环构象的最佳排序仍然是一个具有挑战性的问题,并且“最佳”评分函数的选择似乎取决于系统。