Department of Chemistry, Tufts University, Medford, Massachusetts 02155, USA.
Phys Chem Chem Phys. 2021 Jan 6;23(1):607-616. doi: 10.1039/d0cp04633g.
Cyclization is commonly employed in efforts to improve the target binding affinity of peptide-based probes and therapeutics. Many structural motifs have been identified at protein-protein interfaces and provide promising targets for inhibitor design using cyclic peptides. Cyclized peptides are generally assumed to be rigidified relative to their linear counterparts. This rigidification potentially pre-organizes the molecules to interact properly with their targets. However, the actual impact of cyclization on, for example, peptide configurational entropy, is currently poorly understood in terms of both its magnitude and molecular-level origins. Moreover, even with thousands of desired structural motifs at hand, it is currently not possible to a priori identify the ones that are most promising to mimic using cyclic peptides nor to select the ideal linker length. Instead, labor-intensive chemical synthesis and experimental characterization of various cyclic peptide designs are required, in hopes of finding one with improved target affinity. Herein, using molecular dynamics simulations of polyglycines, we elucidated how head-to-tail cyclization impacts peptide backbone dihedral entropy and developed a simple strategy to rapidly screen for structures that can be reliably mimicked by preorganized cyclic peptides. As expected, cyclization generally led to a reduction in backbone dihedral entropy; notably, however, this effect was minimal when the length of polyglycines was >9 residues. We also found that the reduction in backbone dihedral entropy upon cyclization of small polyglycine peptides does not result from more restricted distributions of the dihedrals; rather, it was the correlations between specific dihedrals that caused the decrease in configurational entropy in the cyclic peptides. Using our comprehensive cyclo-Gn structural ensembles, we obtained a holistic picture of what conformations are accessible to cyclic peptides. Using "hot loops" recently identified at protein-protein interfaces as an example, we provide clear guidelines for choosing the "easiest" hot loops for cyclic peptides to mimic and for identifying appropriate cyclic peptide lengths. In conclusion, our results provide an understanding of the thermodynamics and structures of this interesting class of molecules. This information should prove particularly useful for designing cyclic peptide inhibitors of protein-protein interactions.
环化通常用于提高基于肽的探针和治疗剂的靶标结合亲和力。在蛋白质-蛋白质界面已经确定了许多结构基序,为使用环肽设计抑制剂提供了有前途的靶标。与线性对应物相比,环肽通常被认为是刚性的。这种刚性可能使分子预先组织起来,与它们的靶标正确相互作用。然而,就环化对肽构象熵的实际影响而言,目前无论是在其大小还是分子水平的起源方面,都知之甚少。此外,即使手头有数千个所需的结构基序,目前也不可能先验地识别出最有希望使用环肽模拟的基序,也不可能选择理想的连接子长度。相反,需要进行劳动密集型的化学合成和各种环肽设计的实验表征,以期找到一种具有改善靶标亲和力的环肽。在此,我们使用聚甘氨酸的分子动力学模拟阐明了从头至尾环化如何影响肽主链二面角熵,并开发了一种快速筛选可被预组织环肽可靠模拟的结构的简单策略。正如预期的那样,环化通常会导致肽主链二面角熵降低;然而,当聚甘氨酸的长度>9 个残基时,这种效应最小。我们还发现,小聚甘氨酸肽环化导致的主链二面角熵降低不是由于二面角分布更受限;相反,是由于特定二面角之间的相关性导致环肽中构象熵降低。使用我们全面的环-Gn 结构集合,我们获得了对环肽可及构象的整体了解。使用最近在蛋白质-蛋白质界面发现的“热点环”作为示例,我们提供了用于选择最容易被环肽模拟的“热点环”和识别合适的环肽长度的明确指南。总之,我们的结果提供了对这类有趣分子的热力学和结构的理解。这些信息对于设计蛋白质-蛋白质相互作用的环肽抑制剂应该特别有用。