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Einstein Model of a Graph to Characterize Protein Folded/Unfolded States

The folded structures of proteins can be accurately predicted by deep learning algorithms from their amino-acid sequences. By contrast, in spite of decades of research studies, the prediction of folding pathways and the unfolded and misfolded states of proteins, which are intimately related to disea...

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Autores principales: Tyler, Steve, Laforge, Christophe, Guzzo, Adrien, Nicolaï, Adrien, Maisuradze, Gia G., Senet, Patrick
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10536427/
https://www.ncbi.nlm.nih.gov/pubmed/37764437
http://dx.doi.org/10.3390/molecules28186659
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author Tyler, Steve
Laforge, Christophe
Guzzo, Adrien
Nicolaï, Adrien
Maisuradze, Gia G.
Senet, Patrick
author_facet Tyler, Steve
Laforge, Christophe
Guzzo, Adrien
Nicolaï, Adrien
Maisuradze, Gia G.
Senet, Patrick
author_sort Tyler, Steve
collection PubMed
description The folded structures of proteins can be accurately predicted by deep learning algorithms from their amino-acid sequences. By contrast, in spite of decades of research studies, the prediction of folding pathways and the unfolded and misfolded states of proteins, which are intimately related to diseases, remains challenging. A two-state (folded/unfolded) description of protein folding dynamics hides the complexity of the unfolded and misfolded microstates. Here, we focus on the development of simplified order parameters to decipher the complexity of disordered protein structures. First, we show that any connected, undirected, and simple graph can be associated with a linear chain of atoms in thermal equilibrium. This analogy provides an interpretation of the usual topological descriptors of a graph, namely the Kirchhoff index and Randić resistance, in terms of effective force constants of a linear chain. We derive an exact relation between the Kirchhoff index and the average shortest path length for a linear graph and define the free energies of a graph using an Einstein model. Second, we represent the three-dimensional protein structures by connected, undirected, and simple graphs. As a proof of concept, we compute the topological descriptors and the graph free energies for an all-atom molecular dynamics trajectory of folding/unfolding events of the proteins Trp-cage and HP-36 and for the ensemble of experimental NMR models of Trp-cage. The present work shows that the local, nonlocal, and global force constants and free energies of a graph are promising tools to quantify unfolded/disordered protein states and folding/unfolding dynamics. In particular, they allow the detection of transient misfolded rigid states.
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spelling pubmed-105364272023-09-29 Einstein Model of a Graph to Characterize Protein Folded/Unfolded States Tyler, Steve Laforge, Christophe Guzzo, Adrien Nicolaï, Adrien Maisuradze, Gia G. Senet, Patrick Molecules Article The folded structures of proteins can be accurately predicted by deep learning algorithms from their amino-acid sequences. By contrast, in spite of decades of research studies, the prediction of folding pathways and the unfolded and misfolded states of proteins, which are intimately related to diseases, remains challenging. A two-state (folded/unfolded) description of protein folding dynamics hides the complexity of the unfolded and misfolded microstates. Here, we focus on the development of simplified order parameters to decipher the complexity of disordered protein structures. First, we show that any connected, undirected, and simple graph can be associated with a linear chain of atoms in thermal equilibrium. This analogy provides an interpretation of the usual topological descriptors of a graph, namely the Kirchhoff index and Randić resistance, in terms of effective force constants of a linear chain. We derive an exact relation between the Kirchhoff index and the average shortest path length for a linear graph and define the free energies of a graph using an Einstein model. Second, we represent the three-dimensional protein structures by connected, undirected, and simple graphs. As a proof of concept, we compute the topological descriptors and the graph free energies for an all-atom molecular dynamics trajectory of folding/unfolding events of the proteins Trp-cage and HP-36 and for the ensemble of experimental NMR models of Trp-cage. The present work shows that the local, nonlocal, and global force constants and free energies of a graph are promising tools to quantify unfolded/disordered protein states and folding/unfolding dynamics. In particular, they allow the detection of transient misfolded rigid states. MDPI 2023-09-16 /pmc/articles/PMC10536427/ /pubmed/37764437 http://dx.doi.org/10.3390/molecules28186659 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Tyler, Steve
Laforge, Christophe
Guzzo, Adrien
Nicolaï, Adrien
Maisuradze, Gia G.
Senet, Patrick
Einstein Model of a Graph to Characterize Protein Folded/Unfolded States
title Einstein Model of a Graph to Characterize Protein Folded/Unfolded States
title_full Einstein Model of a Graph to Characterize Protein Folded/Unfolded States
title_fullStr Einstein Model of a Graph to Characterize Protein Folded/Unfolded States
title_full_unstemmed Einstein Model of a Graph to Characterize Protein Folded/Unfolded States
title_short Einstein Model of a Graph to Characterize Protein Folded/Unfolded States
title_sort einstein model of a graph to characterize protein folded/unfolded states
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10536427/
https://www.ncbi.nlm.nih.gov/pubmed/37764437
http://dx.doi.org/10.3390/molecules28186659
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