Park Ho-Min, Park Yunseol, Vankerschaver Joris, Van Messem Arnout, De Neve Wesley, Shim Hyunjin
Center for Biosystems and Biotech Data Science, Ghent University Global Campus, Incheon 21985, Korea.
Department of Electronics and Information Systems, Ghent University, 9000 Ghent, Belgium.
Pharmaceuticals (Basel). 2022 Mar 4;15(3):310. doi: 10.3390/ph15030310.
Protein therapeutics play an important role in controlling the functions and activities of disease-causing proteins in modern medicine. Despite protein therapeutics having several advantages over traditional small-molecule therapeutics, further development has been hindered by drug complexity and delivery issues. However, recent progress in deep learning-based protein structure prediction approaches, such as AlphaFold2, opens new opportunities to exploit the complexity of these macro-biomolecules for highly specialised design to inhibit, regulate or even manipulate specific disease-causing proteins. Anti-CRISPR proteins are small proteins from bacteriophages that counter-defend against the prokaryotic adaptive immunity of CRISPR-Cas systems. They are unique examples of natural protein therapeutics that have been optimized by the host-parasite evolutionary arms race to inhibit a wide variety of host proteins. Here, we show that these anti-CRISPR proteins display diverse inhibition mechanisms through accurate structural prediction and functional analysis. We find that these phage-derived proteins are extremely distinct in structure, some of which have no homologues in the current protein structure domain. Furthermore, we find a novel family of anti-CRISPR proteins which are structurally similar to the recently discovered mechanism of manipulating host proteins through enzymatic activity, rather than through direct inference. Using highly accurate structure prediction, we present a wide variety of protein-manipulating strategies of anti-CRISPR proteins for future protein drug design.
蛋白质疗法在现代医学中对控制致病蛋白质的功能和活性起着重要作用。尽管蛋白质疗法相对于传统小分子疗法具有若干优势,但其进一步发展却受到药物复杂性和递送问题的阻碍。然而,基于深度学习的蛋白质结构预测方法(如AlphaFold2)的最新进展,为利用这些大分子生物分子的复杂性进行高度专业化设计以抑制、调节甚至操纵特定致病蛋白质开辟了新机遇。抗CRISPR蛋白是来自噬菌体的小蛋白,可对抗CRISPR-Cas系统的原核适应性免疫。它们是天然蛋白质疗法的独特例子,通过宿主-寄生虫进化军备竞赛得到优化,以抑制多种宿主蛋白质。在此,我们表明这些抗CRISPR蛋白通过精确的结构预测和功能分析展现出多样的抑制机制。我们发现这些噬菌体衍生的蛋白质在结构上极为独特,其中一些在当前蛋白质结构域中没有同源物。此外,我们发现了一个新的抗CRISPR蛋白家族,其在结构上类似于最近发现的通过酶活性而非直接干扰来操纵宿主蛋白质的机制。利用高度精确的结构预测,我们为未来的蛋白质药物设计展示了多种抗CRISPR蛋白的蛋白质操纵策略。