融合
脂质双层融合
计算生物学
融合蛋白
生物
病毒
病毒学
计算机科学
细胞生物学
生物化学
基因
哲学
语言学
重组DNA
作者
Karen J. Gonzalez,Jiachen Huang,Miriã F. Criado,Avik Banerjee,S. Mark Tompkins,Jarrod J. Mousa,Eva‐Maria Strauch
标识
DOI:10.1038/s41467-024-45480-z
摘要
Abstract Many pathogenic viruses rely on class I fusion proteins to fuse their viral membrane with the host cell membrane. To drive the fusion process, class I fusion proteins undergo an irreversible conformational change from a metastable prefusion state to an energetically more stable postfusion state. Mounting evidence underscores that antibodies targeting the prefusion conformation are the most potent, making it a compelling vaccine candidate. Here, we establish a computational design protocol that stabilizes the prefusion state while destabilizing the postfusion conformation. With this protocol, we stabilize the fusion proteins of the RSV, hMPV, and SARS-CoV-2 viruses, testing fewer than a handful of designs. The solved structures of these designed proteins from all three viruses evidence the atomic accuracy of our approach. Furthermore, the humoral response of the redesigned RSV F protein compares to that of the recently approved vaccine in a mouse model. While the parallel design of two conformations allows the identification of energetically sub-optimal positions for one conformation, our protocol also reveals diverse molecular strategies for stabilization. Given the clinical significance of viruses using class I fusion proteins, our algorithm can substantially contribute to vaccine development by reducing the time and resources needed to optimize these immunogens.
科研通智能强力驱动
Strongly Powered by AbleSci AI