Zhu Qiyao, Mulligan Vikram Khipple, Shasha Dennis
Center for Computational Biology, Flatiron Institute, New York, NY, U.S.A.
Courant Institute of Mathematical Sciences, New York University, New York, NY, U.S.A.
bioRxiv. 2025 Feb 28:2024.07.03.601955. doi: 10.1101/2024.07.03.601955.
Rational computational design is crucial to the pursuit of novel drugs and therapeutic agents. Meso-scale cyclic peptides, which consist of 7-40 amino acid residues, are of particular interest due to their conformational rigidity, binding specificity, degradation resistance, and potential cell permeability. Because there are few natural cyclic peptides, design involving non-canonical amino acids is a potentially useful goal. Here, we develop an efficient pipeline (CyclicChamp) for cyclic peptide design. After converting the cyclic constraint into an error function, we employ a variant of simulated annealing to search for low-energy peptide backbones while maintaining peptide closure. Compared to the previous random sampling approach, which was capable of sampling conformations of cyclic peptides of up to 14 residues, our method both greatly accelerates the computation speed for sampling conformations of small macrocycles (. 7 residues), and addresses the high-dimensionality challenge that large macrocycle designs often encounter. As a result, CyclicChamp makes conformational sampling tractable for 15- to 24-residue cyclic peptides, thus permitting the design of macrocycles in this size range. Microsecond-length molecular dynamics simulations on the resulting 15, 20, and 24 amino acid cyclic designs identify designs with kinetic stability. To test their thermodynamic stability, we perform additional replica exchange molecular dynamics simulations and generate free energy surfaces. Three 15-residue designs, one 20-residue and one 24-residue design emerge as promising candidates.
合理的计算设计对于新型药物和治疗剂的研发至关重要。中尺度环肽由7至40个氨基酸残基组成,由于其构象刚性、结合特异性、抗降解性以及潜在的细胞通透性,因而备受关注。由于天然环肽数量稀少,涉及非标准氨基酸的设计是一个潜在的有用目标。在此,我们开发了一种用于环肽设计的高效流程(CyclicChamp)。在将环约束转化为误差函数后,我们采用模拟退火的一种变体来搜索低能肽主链,同时保持肽的闭合性。与之前能够对多达14个残基的环肽构象进行采样的随机采样方法相比,我们的方法不仅极大地加快了对小大环(. 7个残基)构象采样的计算速度,还解决了大型大环设计经常遇到的高维挑战。结果,CyclicChamp使15至24个残基的环肽的构象采样变得可行,从而允许设计该尺寸范围内的大环。对所得的15、20和24个氨基酸的环设计进行微秒级的分子动力学模拟,确定了具有动力学稳定性的设计。为了测试它们的热力学稳定性,我们进行了额外的副本交换分子动力学模拟并生成自由能表面。三种15个残基的设计、一种20个残基的设计和一种24个残基的设计成为有前景 的候选方案。