Sirin Sarah, Pearlman David A, Sherman Woody
Department of Biology, Massachusetts Institute of Technology, Cambridge, Massachusetts, 02140.
Proteins. 2014 Dec;82(12):3397-409. doi: 10.1002/prot.24694. Epub 2014 Oct 30.
Computational enzyme design is an emerging field that has yielded promising success stories, but where numerous challenges remain. Accurate methods to rapidly evaluate possible enzyme design variants could provide significant value when combined with experimental efforts by reducing the number of variants needed to be synthesized and speeding the time to reach the desired endpoint of the design. To that end, extending our computational methods to model the fundamental physical-chemical principles that regulate activity in a protocol that is automated and accessible to a broad population of enzyme design researchers is essential. Here, we apply a physics-based implicit solvent MM-GBSA scoring approach to enzyme design and benchmark the computational predictions against experimentally determined activities. Specifically, we evaluate the ability of MM-GBSA to predict changes in affinity for a steroid binder protein, catalytic turnover for a Kemp eliminase, and catalytic activity for α-Gliadin peptidase variants. Using the enzyme design framework developed here, we accurately rank the most experimentally active enzyme variants, suggesting that this approach could provide enrichment of active variants in real-world enzyme design applications.
计算酶设计是一个新兴领域,已经取得了一些令人鼓舞的成功案例,但仍存在众多挑战。当与实验工作相结合时,能够快速评估可能的酶设计变体的准确方法可以通过减少需要合成的变体数量并加快达到设计所需终点的时间来提供重要价值。为此,将我们的计算方法扩展到对调节活性的基本物理化学原理进行建模,采用一种自动化且广大酶设计研究人员都可使用的方案至关重要。在此,我们将基于物理的隐式溶剂MM-GBSA评分方法应用于酶设计,并将计算预测结果与实验测定的活性进行基准测试。具体而言,我们评估MM-GBSA预测类固醇结合蛋白亲和力变化、肯普消除酶催化周转率以及α-麦醇溶蛋白肽酶变体催化活性的能力。使用此处开发的酶设计框架,我们准确地对实验活性最高的酶变体进行了排名,这表明该方法可以在实际的酶设计应用中富集活性变体。