Top-down design of protein architectures with reinforcement learning

Isaac D. Lutz(University of Washington), Shunzhi Wang(University of Washington), Christoffer Norn(University of Washington), Alexis Courbet(Howard Hughes Medical Institute), Andrew J. Borst(University of Washington), Yan Ting Zhao(University of Washington), Annie Dosey(University of Washington), Longxing Cao(University of Washington), Jinwei Xu(University of Washington), Elizabeth M. Leaf(University of Washington), Catherine Treichel(University of Washington), Patrisia Litvicov(University of Washington), Zhe Li(University of Washington), Alexander D. Goodson(University of Washington), Paula Rivera-Sánchez(BioInnovation Institute), Ana-Maria Bratovianu(BioInnovation Institute), Minkyung Baek(Seoul National University), Neil P. King(University of Washington), Hannele Ruohola‐Baker(University of Washington), David Baker(University of Washington)
Science
April 20, 2023
Cited by 123

Abstract

As a result of evolutionary selection, the subunits of naturally occurring protein assemblies often fit together with substantial shape complementarity to generate architectures optimal for function in a manner not achievable by current design approaches. We describe a "top-down" reinforcement learning-based design approach that solves this problem using Monte Carlo tree search to sample protein conformers in the context of an overall architecture and specified functional constraints. Cryo-electron microscopy structures of the designed disk-shaped nanopores and ultracompact icosahedra are very close to the computational models. The icosohedra enable very-high-density display of immunogens and signaling molecules, which potentiates vaccine response and angiogenesis induction. Our approach enables the top-down design of complex protein nanomaterials with desired system properties and demonstrates the power of reinforcement learning in protein design.


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