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Biocatalytic Cyclization of Small Macrolactams by a Penicillin-Binding Protein-Type Thioesterase

Zachary L. Budimir,Rishi S. Patel, Alyssa Eggly, Claudia N. Evans, Hannah M. Rondon-Cordero, Jessica J. Adams,Chittaranjan Das,Elizabeth I. Parkinson

NATURE CHEMICAL BIOLOGY(2024)

Department of Chemistry

Cited 5|Views11
Abstract
Macrocyclic peptides represent promising scaffolds for chemical tools and potential therapeutics. Synthetic methods for peptide macrocyclization are often hampered by C-terminal epimerization and oligomerization, leading to difficult scalability. While chemical strategies to circumvent this issue exist, they often require specific amino acids to be present in the peptide sequence. Herein, we report the characterization of Ulm16, a peptide cyclase belonging to the penicillin-binding protein-type class of thioesterases that catalyze head-to-tail macrolactamization of nonribosmal peptides. Ulm16 efficiently cyclizes various nonnative peptides ranging from 4 to 6 amino acids with catalytic efficiencies of up to 3 × 10 6 M −1 s −1 . Unlike many previously described homologs, Ulm16 tolerates a variety of C- and N-terminal amino acids. The crystal structure of Ulm16, along with modeling of its substrates and site-directed mutagenesis, allows for rationalization of this wide substrate scope. Overall, Ulm16 represents a promising tool for the biocatalytic production of macrocyclic peptides.
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Macrocyclization,Macrocycles
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要点】:本文报道了一种名为Ulm16的肽环化酶,该酶能高效催化非核糖体肽的头尾连接形成大环内酰胺,具有广泛的底物特异性和高催化效率,为宏环肽的生物催化生产提供了新方法。

方法】:通过蛋白质晶体结构分析、分子建模和位点定向突变,揭示了Ulm16催化多样底物的原因。

实验】:研究了Ulm16对不同长度(4至6个氨基酸)的非原生肽的环化反应,实验数据表明Ulm16的催化效率可达3 × 10^6 M^(-1) s^(-1),并使用多种C-和N-端氨基酸,结果证明了其广泛的底物耐受性。