De novo design of high-affinity binders of bioactive helical peptides

Susana Vázquez Torres(University of Washington), Philip J. Y. Leung(University of Washington), Preetham Venkatesh(University of Washington), Isaac D. Lutz(University of Washington), Fabian Hink(University of Copenhagen), Huu‐Hien Huynh(University of Washington), Jessica O. Becker(University of Washington), Hsien‐Wei Yeh(University of Washington), David Juergens(University of Washington), Nathaniel R. Bennett(University of Washington), Andrew N. Hoofnagle(University of Washington), Eric Huang(University of Washington), Michael J. MacCoss(University of Washington), Marc Expòsit(University of Washington), Gyu Rie Lee(University of Washington), Asim K. Bera(University of Washington), Alex Kang(University of Washington), Joshmyn De La Cruz(University of Washington), Paul M. Levine(University of Washington), Xinting Li(University of Washington), Mila Lamb(University of Washington), Stacey Gerben(University of Washington), Analisa Murray(University of Washington), Piper Heine(University of Washington), Elif Nihal Korkmaz(University of Washington), Jeff Nivala(University of Washington), Lance Stewart(University of Washington), Joseph L. Watson(University of Washington), Joseph M. Rogers(University of Copenhagen), David Baker(Howard Hughes Medical Institute)
Nature
December 18, 2023
Cited by 219Open Access
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Abstract

Abstract Many peptide hormones form an α-helix on binding their receptors 1–4 , and sensitive methods for their detection could contribute to better clinical management of disease 5 . De novo protein design can now generate binders with high affinity and specificity to structured proteins 6,7 . However, the design of interactions between proteins and short peptides with helical propensity is an unmet challenge. Here we describe parametric generation and deep learning-based methods for designing proteins to address this challenge. We show that by extending RFdiffusion 8 to enable binder design to flexible targets, and to refining input structure models by successive noising and denoising (partial diffusion), picomolar-affinity binders can be generated to helical peptide targets by either refining designs generated with other methods, or completely de novo starting from random noise distributions without any subsequent experimental optimization. The RFdiffusion designs enable the enrichment and subsequent detection of parathyroid hormone and glucagon by mass spectrometry, and the construction of bioluminescence-based protein biosensors. The ability to design binders to conformationally variable targets, and to optimize by partial diffusion both natural and designed proteins, should be broadly useful.


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