From evolution to folding of repeat proteins
Ezequiel A. Galpern, Jacopo Marchi, Thierry Mora, Aleksandra M., Walczak, Diego U. Ferreiro

TL;DR
This paper develops a coarse-grained, evolution-informed model to analyze the folding mechanisms of repeat proteins, revealing diverse folding pathways and enabling stability prediction for design purposes.
Contribution
It introduces a novel approach combining evolutionary data with a mechanistic folding model to study repeat protein folding at a large scale.
Findings
Multiple folding mechanisms identified in natural Ankyrin-repeat proteins.
Folding cooperativity correlates with sequence similarity and interaction strength.
A simple energy score can predict stability and cooperativity.
Abstract
Repeat proteins are made with tandem copies of similar amino acid stretches that fold into elongated architectures. Due to their symmetry, these proteins constitute excellent model systems to investigate how evolution relates to structure, folding and function. Here, we propose a scheme to map evolutionary information at the sequence level to a coarse-grained model for repeat-protein folding and use it to investigate the folding of thousands of repeat-proteins. We model the energetics by a combination of an inverse Potts model scheme with an explicit mechanistic model of duplications and deletions of repeats to calculate the evolutionary parameters of the system at single residue level. This is used to inform an Ising-like model that allows for the generation of folding curves, apparent domain emergence and occupation of intermediate states that are highly compatible with experimental…
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Taxonomy
TopicsProtein Structure and Dynamics · RNA Research and Splicing · Enzyme Structure and Function
