Chakrabarti Raj, Klibanov Alexander M, Friesner Richard A
Department of Chemistry and Center for Biomolecular Simulation, Columbia University, New York, NY 10027, USA.
Proc Natl Acad Sci U S A. 2005 Aug 23;102(34):12035-40. doi: 10.1073/pnas.0505397102. Epub 2005 Aug 15.
We recently found that many residues in enzyme active sites can be computationally predicted by the optimization of scoring functions based on substrate binding affinity, subject to constraints on the geometry of catalytic residues and protein stability. Here, we explore the generality of this surprising observation. First, the impact of hydrogen-bonding networks necessary for catalysis on the accuracy of sequence optimization is assessed; incorporation of these networks, where relevant, into the set of catalytic constraints is found to be essential. Next, the impact of multiple substrate selectivity on sequence optimization is probed by carrying out independent calculations for complexes of deoxyribonucleoside kinases with various cognate ligands, revealing how simultaneous selection pressures determined active-site sequences of these enzymes. Including previous calculations on simpler enzymes, computational sequence optimization correctly predicts 76% of all active-site residues tested (86% correct, with 93% similar, for naturally conserved residues). In these studies, the ligand is fixed in its native conformation. To assess the applicability of these methods to de novo active-site design, the effect of small ligand motions around the native pose is also examined. Robustness of sequence accuracy for topologically similar poses is demonstrated for selected kinases, but not for a model peptidase. Based on these observations, we introduce the notion of the designability of an enzyme active site, a metric that may be used to guide the search for protein scaffolds suitable for the introduction of de novo activity for a desired chemical reaction.
我们最近发现,通过基于底物结合亲和力对评分函数进行优化,并在催化残基的几何结构和蛋白质稳定性的限制条件下,可以通过计算预测酶活性位点中的许多残基。在此,我们探讨这一惊人发现的普遍性。首先,评估催化所需的氢键网络对序列优化准确性的影响;发现将这些网络(在相关情况下)纳入催化限制条件中至关重要。接下来,通过对脱氧核糖核苷激酶与各种同源配体的复合物进行独立计算,探究多种底物选择性对序列优化的影响,揭示了同时存在的选择压力如何决定这些酶的活性位点序列。包括之前对更简单酶的计算在内,计算序列优化正确预测了所测试的所有活性位点残基中的76%(对于天然保守残基,86%正确,93%相似)。在这些研究中,配体固定在其天然构象中。为了评估这些方法对从头活性位点设计的适用性,还研究了围绕天然构象的小配体运动的影响。对于选定的激酶,证明了拓扑相似构象的序列准确性的稳健性,但对于一种模型肽酶则不然。基于这些观察结果,我们引入了酶活性位点可设计性的概念,这是一种可用于指导寻找适合引入针对所需化学反应的从头活性的蛋白质支架的指标。