Comprehensive computational design of ordered peptide macrocycles

Parisa Hosseinzadeh(University of Washington), Gaurav Bhardwaj(University of Washington), Vikram Khipple Mulligan(University of Washington), Matthew D. Shortridge(University of Washington), Timothy W. Craven(University of Washington), Fátima Pardo‐Ávila(Stanford University), Stephen Rettie(University of Washington), David E. Kim(University of Washington), Daniel‐Adriano Silva(University of Washington), Yehia Ibrahim(Pacific Northwest National Laboratory), Ian Webb(Pacific Northwest National Laboratory), John Cort(Pacific Northwest National Laboratory), Joshua Adkins(Pacific Northwest National Laboratory), Gabriele Varani(University of Washington), David Baker(Howard Hughes Medical Institute)
Science
December 14, 2017
Cited by 220Open Access
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Abstract

Mixed-chirality peptide macrocycles such as cyclosporine are among the most potent therapeutics identified to date, but there is currently no way to systematically search the structural space spanned by such compounds. Natural proteins do not provide a useful guide: Peptide macrocycles lack regular secondary structures and hydrophobic cores, and can contain local structures not accessible with l-amino acids. Here, we enumerate the stable structures that can be adopted by macrocyclic peptides composed of l- and d-amino acids by near-exhaustive backbone sampling followed by sequence design and energy landscape calculations. We identify more than 200 designs predicted to fold into single stable structures, many times more than the number of currently available unbound peptide macrocycle structures. Nuclear magnetic resonance structures of 9 of 12 designed 7- to 10-residue macrocycles, and three 11- to 14-residue bicyclic designs, are close to the computational models. Our results provide a nearly complete coverage of the rich space of structures possible for short peptide macrocycles and vastly increase the available starting scaffolds for both rational drug design and library selection methods.


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