Department of Chemical and Biological Engineering, Princeton University, Princeton, New Jersey, United States of America.
Institute of Bioengineering and Nanotechnology, Singapore, Singapore.
PLoS Comput Biol. 2014 Jul 10;10(7):e1003718. doi: 10.1371/journal.pcbi.1003718. eCollection 2014 Jul.
Self-association is a common phenomenon in biology and one that can have positive and negative impacts, from the construction of the architectural cytoskeleton of cells to the formation of fibrils in amyloid diseases. Understanding the nature and mechanisms of self-association is important for modulating these systems and in creating biologically-inspired materials. Here, we present a two-stage de novo peptide design framework that can generate novel self-associating peptide systems. The first stage uses a simulated multimeric template structure as input into the optimization-based Sequence Selection to generate low potential energy sequences. The second stage is a computational validation procedure that calculates Fold Specificity and/or Approximate Association Affinity (Kassociation) based on metrics that we have devised for multimeric systems. This framework was applied to the design of self-associating tripeptides using the known self-associating tripeptide, Ac-IVD, as a structural template. Six computationally predicted tripeptides (Ac-LVE, Ac-YYD, Ac-LLE, Ac-YLD, Ac-MYD, Ac-VIE) were chosen for experimental validation in order to illustrate the self-association outcomes predicted by the three metrics. Self-association and electron microscopy studies revealed that Ac-LLE formed bead-like microstructures, Ac-LVE and Ac-YYD formed fibrillar aggregates, Ac-VIE and Ac-MYD formed hydrogels, and Ac-YLD crystallized under ambient conditions. An X-ray crystallographic study was carried out on a single crystal of Ac-YLD, which revealed that each molecule adopts a β-strand conformation that stack together to form parallel β-sheets. As an additional validation of the approach, the hydrogel-forming sequences of Ac-MYD and Ac-VIE were shuffled. The shuffled sequences were computationally predicted to have lower Kassociation values and were experimentally verified to not form hydrogels. This illustrates the robustness of the framework in predicting self-associating tripeptides. We expect that this enhanced multimeric de novo peptide design framework will find future application in creating novel self-associating peptides based on unnatural amino acids, and inhibitor peptides of detrimental self-aggregating biological proteins.
自组装是生物学中常见的现象,它可能产生积极和消极的影响,从细胞结构骨架的构建到淀粉样疾病中纤维的形成。了解自组装的性质和机制对于调节这些系统和创造具有生物灵感的材料非常重要。在这里,我们提出了一个两阶段从头多肽设计框架,可以生成新的自组装肽系统。第一阶段使用模拟的多聚体模板结构作为输入,通过基于优化的序列选择生成低势能序列。第二阶段是一个计算验证过程,根据我们为多聚体系统设计的指标计算折叠特异性和/或近似关联亲和力(Kassociation)。该框架应用于使用已知的自组装三肽 Ac-IVD 作为结构模板设计自组装三肽。选择了六个计算预测的三肽(Ac-LVE、Ac-YYD、Ac-LLE、Ac-YLD、Ac-MYD、Ac-VIE)进行实验验证,以说明三个指标预测的自组装结果。自组装和电子显微镜研究表明,Ac-LLE 形成珠状微结构,Ac-LVE 和 Ac-YYD 形成纤维状聚集物,Ac-VIE 和 Ac-MYD 形成水凝胶,Ac-YLD 在环境条件下结晶。对 Ac-YLD 的单晶进行了 X 射线晶体学研究,结果表明每个分子采用 β-折叠构象,堆积在一起形成平行的 β-片层。作为该方法的附加验证,对 Ac-MYD 和 Ac-VIE 的水凝胶形成序列进行了改组。改组序列的计算预测值具有较低的 Kassociation 值,并通过实验验证证明它们不能形成水凝胶。这说明了该框架在预测自组装三肽方面的稳健性。我们期望这个增强的多聚体从头多肽设计框架将在未来基于非天然氨基酸和有害自聚集生物蛋白的抑制剂肽的新型自组装肽的创造中得到应用。