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Mass Spectrometry and Machine Learning Reveal Determinants of Client Recognition by Antiamyloid Chaperones

The assembly of proteins and peptides into amyloid fibrils is causally linked to serious disorders such as Alzheimer’s disease. Multiple proteins have been shown to prevent amyloid formation in vitro and in vivo, ranging from highly specific chaperone–client pairs to completely nonspecific binding o...

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Autores principales: Österlund, Nicklas, Vosselman, Thibault, Leppert, Axel, Gräslund, Astrid, Jörnvall, Hans, Ilag, Leopold L., Marklund, Erik G., Elofsson, Arne, Johansson, Jan, Sahin, Cagla, Landreh, Michael
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Society for Biochemistry and Molecular Biology 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9563204/
https://www.ncbi.nlm.nih.gov/pubmed/36115577
http://dx.doi.org/10.1016/j.mcpro.2022.100413
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author Österlund, Nicklas
Vosselman, Thibault
Leppert, Axel
Gräslund, Astrid
Jörnvall, Hans
Ilag, Leopold L.
Marklund, Erik G.
Elofsson, Arne
Johansson, Jan
Sahin, Cagla
Landreh, Michael
author_facet Österlund, Nicklas
Vosselman, Thibault
Leppert, Axel
Gräslund, Astrid
Jörnvall, Hans
Ilag, Leopold L.
Marklund, Erik G.
Elofsson, Arne
Johansson, Jan
Sahin, Cagla
Landreh, Michael
author_sort Österlund, Nicklas
collection PubMed
description The assembly of proteins and peptides into amyloid fibrils is causally linked to serious disorders such as Alzheimer’s disease. Multiple proteins have been shown to prevent amyloid formation in vitro and in vivo, ranging from highly specific chaperone–client pairs to completely nonspecific binding of aggregation-prone peptides. The underlying interactions remain elusive. Here, we turn to the machine learning–based structure prediction algorithm AlphaFold2 to obtain models for the nonspecific interactions of β-lactoglobulin, transthyretin, or thioredoxin 80 with the model amyloid peptide amyloid β and the highly specific complex between the BRICHOS chaperone domain of C-terminal region of lung surfactant protein C and its polyvaline target. Using a combination of native mass spectrometry (MS) and ion mobility MS, we show that nonspecific chaperoning is driven predominantly by hydrophobic interactions of amyloid β with hydrophobic surfaces in β-lactoglobulin, transthyretin, and thioredoxin 80, and in part regulated by oligomer stability. For C-terminal region of lung surfactant protein C, native MS and hydrogen–deuterium exchange MS reveal that a disordered region recognizes the polyvaline target by forming a complementary β-strand. Hence, we show that AlphaFold2 and MS can yield atomistic models of hard-to-capture protein interactions that reveal different chaperoning mechanisms based on separate ligand properties and may provide possible clues for specific therapeutic intervention.
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spelling pubmed-95632042022-10-16 Mass Spectrometry and Machine Learning Reveal Determinants of Client Recognition by Antiamyloid Chaperones Österlund, Nicklas Vosselman, Thibault Leppert, Axel Gräslund, Astrid Jörnvall, Hans Ilag, Leopold L. Marklund, Erik G. Elofsson, Arne Johansson, Jan Sahin, Cagla Landreh, Michael Mol Cell Proteomics Research The assembly of proteins and peptides into amyloid fibrils is causally linked to serious disorders such as Alzheimer’s disease. Multiple proteins have been shown to prevent amyloid formation in vitro and in vivo, ranging from highly specific chaperone–client pairs to completely nonspecific binding of aggregation-prone peptides. The underlying interactions remain elusive. Here, we turn to the machine learning–based structure prediction algorithm AlphaFold2 to obtain models for the nonspecific interactions of β-lactoglobulin, transthyretin, or thioredoxin 80 with the model amyloid peptide amyloid β and the highly specific complex between the BRICHOS chaperone domain of C-terminal region of lung surfactant protein C and its polyvaline target. Using a combination of native mass spectrometry (MS) and ion mobility MS, we show that nonspecific chaperoning is driven predominantly by hydrophobic interactions of amyloid β with hydrophobic surfaces in β-lactoglobulin, transthyretin, and thioredoxin 80, and in part regulated by oligomer stability. For C-terminal region of lung surfactant protein C, native MS and hydrogen–deuterium exchange MS reveal that a disordered region recognizes the polyvaline target by forming a complementary β-strand. Hence, we show that AlphaFold2 and MS can yield atomistic models of hard-to-capture protein interactions that reveal different chaperoning mechanisms based on separate ligand properties and may provide possible clues for specific therapeutic intervention. American Society for Biochemistry and Molecular Biology 2022-09-15 /pmc/articles/PMC9563204/ /pubmed/36115577 http://dx.doi.org/10.1016/j.mcpro.2022.100413 Text en © 2022 The Authors https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Research
Österlund, Nicklas
Vosselman, Thibault
Leppert, Axel
Gräslund, Astrid
Jörnvall, Hans
Ilag, Leopold L.
Marklund, Erik G.
Elofsson, Arne
Johansson, Jan
Sahin, Cagla
Landreh, Michael
Mass Spectrometry and Machine Learning Reveal Determinants of Client Recognition by Antiamyloid Chaperones
title Mass Spectrometry and Machine Learning Reveal Determinants of Client Recognition by Antiamyloid Chaperones
title_full Mass Spectrometry and Machine Learning Reveal Determinants of Client Recognition by Antiamyloid Chaperones
title_fullStr Mass Spectrometry and Machine Learning Reveal Determinants of Client Recognition by Antiamyloid Chaperones
title_full_unstemmed Mass Spectrometry and Machine Learning Reveal Determinants of Client Recognition by Antiamyloid Chaperones
title_short Mass Spectrometry and Machine Learning Reveal Determinants of Client Recognition by Antiamyloid Chaperones
title_sort mass spectrometry and machine learning reveal determinants of client recognition by antiamyloid chaperones
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9563204/
https://www.ncbi.nlm.nih.gov/pubmed/36115577
http://dx.doi.org/10.1016/j.mcpro.2022.100413
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