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Assembling membraneless organelles from de novo designed proteins.


ABSTRACT: Recent advances in de novo protein design have delivered a diversity of discrete de novo protein structures and complexes. A new challenge for the field is to use these designs directly in cells to intervene in biological processes and augment natural systems. The bottom-up design of self-assembled objects such as microcompartments and membraneless organelles is one such challenge. Here we describe the design of genetically encoded polypeptides that form membraneless organelles in Escherichia coli. To do this, we combine de novo α-helical sequences, intrinsically disordered linkers and client proteins in single-polypeptide constructs. We tailor the properties of the helical regions to shift protein assembly from arrested assemblies to dynamic condensates. The designs are characterized in cells and in vitro using biophysical methods and soft-matter physics. Finally, we use the designed polypeptide to co-compartmentalize a functional enzyme pair in E. coli, improving product formation close to the theoretical limit.

SUBMITTER: Hilditch AT 

PROVIDER: S-EPMC10774119 | biostudies-literature | 2024 Jan

REPOSITORIES: biostudies-literature

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Assembling membraneless organelles from de novo designed proteins.

Hilditch Alexander T AT   Romanyuk Andrey A   Cross Stephen J SJ   Obexer Richard R   McManus Jennifer J JJ   Woolfson Derek N DN  

Nature chemistry 20230914 1


Recent advances in de novo protein design have delivered a diversity of discrete de novo protein structures and complexes. A new challenge for the field is to use these designs directly in cells to intervene in biological processes and augment natural systems. The bottom-up design of self-assembled objects such as microcompartments and membraneless organelles is one such challenge. Here we describe the design of genetically encoded polypeptides that form membraneless organelles in Escherichia co  ...[more]

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