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Predicting Proteolysis in Complex Proteomes Using Deep Learning

Both protease- and reactive oxygen species (ROS)-mediated proteolysis are thought to be key effectors of tissue remodeling. We have previously shown that comparison of amino acid composition can predict the differential susceptibilities of proteins to photo-oxidation. However, predicting protein sus...

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Autores principales: Ozols, Matiss, Eckersley, Alexander, Platt, Christopher I., Stewart-McGuinness, Callum, Hibbert, Sarah A., Revote, Jerico, Li, Fuyi, Griffiths, Christopher E. M., Watson, Rachel E. B., Song, Jiangning, Bell, Mike, Sherratt, Michael J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8002881/
https://www.ncbi.nlm.nih.gov/pubmed/33803033
http://dx.doi.org/10.3390/ijms22063071
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author Ozols, Matiss
Eckersley, Alexander
Platt, Christopher I.
Stewart-McGuinness, Callum
Hibbert, Sarah A.
Revote, Jerico
Li, Fuyi
Griffiths, Christopher E. M.
Watson, Rachel E. B.
Song, Jiangning
Bell, Mike
Sherratt, Michael J.
author_facet Ozols, Matiss
Eckersley, Alexander
Platt, Christopher I.
Stewart-McGuinness, Callum
Hibbert, Sarah A.
Revote, Jerico
Li, Fuyi
Griffiths, Christopher E. M.
Watson, Rachel E. B.
Song, Jiangning
Bell, Mike
Sherratt, Michael J.
author_sort Ozols, Matiss
collection PubMed
description Both protease- and reactive oxygen species (ROS)-mediated proteolysis are thought to be key effectors of tissue remodeling. We have previously shown that comparison of amino acid composition can predict the differential susceptibilities of proteins to photo-oxidation. However, predicting protein susceptibility to endogenous proteases remains challenging. Here, we aim to develop bioinformatics tools to (i) predict cleavage site locations (and hence putative protein susceptibilities) and (ii) compare the predicted vulnerabilities of skin proteins to protease- and ROS-mediated proteolysis. The first goal of this study was to experimentally evaluate the ability of existing protease cleavage site prediction models (PROSPER and DeepCleave) to identify experimentally determined MMP9 cleavage sites in two purified proteins and in a complex human dermal fibroblast-derived extracellular matrix (ECM) proteome. We subsequently developed deep bidirectional recurrent neural network (BRNN) models to predict cleavage sites for 14 tissue proteases. The predictions of the new models were tested against experimental datasets and combined with amino acid composition analysis (to predict ultraviolet radiation (UVR)/ROS susceptibility) in a new web app: the Manchester proteome susceptibility calculator (MPSC). The BRNN models performed better in predicting cleavage sites in native dermal ECM proteins than existing models (DeepCleave and PROSPER), and application of MPSC to the skin proteome suggests that: compared with the elastic fiber network, fibrillar collagens may be susceptible primarily to protease-mediated proteolysis. We also identify additional putative targets of oxidative damage (dermatopontin, fibulins and defensins) and protease action (laminins and nidogen). MPSC has the potential to identify potential targets of proteolysis in disparate tissues and disease states.
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spelling pubmed-80028812021-03-28 Predicting Proteolysis in Complex Proteomes Using Deep Learning Ozols, Matiss Eckersley, Alexander Platt, Christopher I. Stewart-McGuinness, Callum Hibbert, Sarah A. Revote, Jerico Li, Fuyi Griffiths, Christopher E. M. Watson, Rachel E. B. Song, Jiangning Bell, Mike Sherratt, Michael J. Int J Mol Sci Article Both protease- and reactive oxygen species (ROS)-mediated proteolysis are thought to be key effectors of tissue remodeling. We have previously shown that comparison of amino acid composition can predict the differential susceptibilities of proteins to photo-oxidation. However, predicting protein susceptibility to endogenous proteases remains challenging. Here, we aim to develop bioinformatics tools to (i) predict cleavage site locations (and hence putative protein susceptibilities) and (ii) compare the predicted vulnerabilities of skin proteins to protease- and ROS-mediated proteolysis. The first goal of this study was to experimentally evaluate the ability of existing protease cleavage site prediction models (PROSPER and DeepCleave) to identify experimentally determined MMP9 cleavage sites in two purified proteins and in a complex human dermal fibroblast-derived extracellular matrix (ECM) proteome. We subsequently developed deep bidirectional recurrent neural network (BRNN) models to predict cleavage sites for 14 tissue proteases. The predictions of the new models were tested against experimental datasets and combined with amino acid composition analysis (to predict ultraviolet radiation (UVR)/ROS susceptibility) in a new web app: the Manchester proteome susceptibility calculator (MPSC). The BRNN models performed better in predicting cleavage sites in native dermal ECM proteins than existing models (DeepCleave and PROSPER), and application of MPSC to the skin proteome suggests that: compared with the elastic fiber network, fibrillar collagens may be susceptible primarily to protease-mediated proteolysis. We also identify additional putative targets of oxidative damage (dermatopontin, fibulins and defensins) and protease action (laminins and nidogen). MPSC has the potential to identify potential targets of proteolysis in disparate tissues and disease states. MDPI 2021-03-17 /pmc/articles/PMC8002881/ /pubmed/33803033 http://dx.doi.org/10.3390/ijms22063071 Text en © 2021 by the authors. 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 (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Ozols, Matiss
Eckersley, Alexander
Platt, Christopher I.
Stewart-McGuinness, Callum
Hibbert, Sarah A.
Revote, Jerico
Li, Fuyi
Griffiths, Christopher E. M.
Watson, Rachel E. B.
Song, Jiangning
Bell, Mike
Sherratt, Michael J.
Predicting Proteolysis in Complex Proteomes Using Deep Learning
title Predicting Proteolysis in Complex Proteomes Using Deep Learning
title_full Predicting Proteolysis in Complex Proteomes Using Deep Learning
title_fullStr Predicting Proteolysis in Complex Proteomes Using Deep Learning
title_full_unstemmed Predicting Proteolysis in Complex Proteomes Using Deep Learning
title_short Predicting Proteolysis in Complex Proteomes Using Deep Learning
title_sort predicting proteolysis in complex proteomes using deep learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8002881/
https://www.ncbi.nlm.nih.gov/pubmed/33803033
http://dx.doi.org/10.3390/ijms22063071
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