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Dark-cutting beef: A brief review and an integromics meta-analysis at the proteome level to decipher the underlying pathways

Authorized Users Only
2021
Authors
Gagaoua, Mohammed
Warner, Robyn D.
Purslow, Peter
Ramanathan, Ranjith
Mullen, Anne Maria
Lopez-Pedrouso, Maria
Franco, Daniel
Lorenzo, José M.
Tomašević, Igor
Picard, Brigitte
Troy, Declan
Terlouw, E.M. Claudia
Article (Published version)
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Abstract
Comprehensive characterization of the post-mortem muscle proteome defines a fundamental goal in meat proteomics. During the last decade, proteomics tools have been applied in the field of foodomics to help decipher factors underpinning meat quality variations and to enlighten us, through data-driven methods, on the underlying mechanisms leading to meat quality defects such as dark-cutting meat known also as dark, firm and dry (DFD) meat. In cattle, several proteomics studies have focused on the extent to which changes in the post-mortem muscle proteome relate to dark-cutting beef development. The present data-mining study firstly reviews proteomics studies which investigated dark-cutting beef, and secondly, gathers the protein biomarkers that differ between dark-cutting versus beef with normal-pH in a unique repertoire. A list of 130 proteins from eight eligible studies was curated and mined through bioinformatics for Gene Ontology annotations, molecular pathways enrichments, secretome... analysis and biological pathways comparisons to normal beef color from a previous meta-analysis. The major biological pathways underpinning dark-cutting beef at the proteome level have been described and deeply discussed in this integromics study.

Keywords:
Cattle / DFD / meat color / Metabolism / Mitochondria / Muscle structure / TCA cycle / OMICs / pH / Proteome
Source:
Meat Science, 2021, 181, 108611-
Publisher:
  • Elsevier Ltd

DOI: 10.1016/j.meatsci.2021.108611

ISSN: 0309-1740

WoS: 000675895800015

Scopus: 2-s2.0-85109154316
[ Google Scholar ]
20
5
URI
http://aspace.agrif.bg.ac.rs/handle/123456789/5885
Collections
  • Radovi istraživača / Researchers’ publications
Institution/Community
Poljoprivredni fakultet
TY  - JOUR
AU  - Gagaoua, Mohammed
AU  - Warner, Robyn D.
AU  - Purslow, Peter
AU  - Ramanathan, Ranjith
AU  - Mullen, Anne Maria
AU  - Lopez-Pedrouso, Maria
AU  - Franco, Daniel
AU  - Lorenzo, José M.
AU  - Tomašević, Igor
AU  - Picard, Brigitte
AU  - Troy, Declan
AU  - Terlouw, E.M. Claudia
PY  - 2021
UR  - http://aspace.agrif.bg.ac.rs/handle/123456789/5885
AB  - Comprehensive characterization of the post-mortem muscle proteome defines a fundamental goal in meat proteomics. During the last decade, proteomics tools have been applied in the field of foodomics to help decipher factors underpinning meat quality variations and to enlighten us, through data-driven methods, on the underlying mechanisms leading to meat quality defects such as dark-cutting meat known also as dark, firm and dry (DFD) meat. In cattle, several proteomics studies have focused on the extent to which changes in the post-mortem muscle proteome relate to dark-cutting beef development. The present data-mining study firstly reviews proteomics studies which investigated dark-cutting beef, and secondly, gathers the protein biomarkers that differ between dark-cutting versus beef with normal-pH in a unique repertoire. A list of 130 proteins from eight eligible studies was curated and mined through bioinformatics for Gene Ontology annotations, molecular pathways enrichments, secretome analysis and biological pathways comparisons to normal beef color from a previous meta-analysis. The major biological pathways underpinning dark-cutting beef at the proteome level have been described and deeply discussed in this integromics study.
PB  - Elsevier Ltd
T2  - Meat Science
T1  - Dark-cutting beef: A brief review and an integromics meta-analysis at the  proteome level to decipher the underlying pathways
SP  - 108611
VL  - 181
DO  - 10.1016/j.meatsci.2021.108611
ER  - 
@article{
author = "Gagaoua, Mohammed and Warner, Robyn D. and Purslow, Peter and Ramanathan, Ranjith and Mullen, Anne Maria and Lopez-Pedrouso, Maria and Franco, Daniel and Lorenzo, José M. and Tomašević, Igor and Picard, Brigitte and Troy, Declan and Terlouw, E.M. Claudia",
year = "2021",
abstract = "Comprehensive characterization of the post-mortem muscle proteome defines a fundamental goal in meat proteomics. During the last decade, proteomics tools have been applied in the field of foodomics to help decipher factors underpinning meat quality variations and to enlighten us, through data-driven methods, on the underlying mechanisms leading to meat quality defects such as dark-cutting meat known also as dark, firm and dry (DFD) meat. In cattle, several proteomics studies have focused on the extent to which changes in the post-mortem muscle proteome relate to dark-cutting beef development. The present data-mining study firstly reviews proteomics studies which investigated dark-cutting beef, and secondly, gathers the protein biomarkers that differ between dark-cutting versus beef with normal-pH in a unique repertoire. A list of 130 proteins from eight eligible studies was curated and mined through bioinformatics for Gene Ontology annotations, molecular pathways enrichments, secretome analysis and biological pathways comparisons to normal beef color from a previous meta-analysis. The major biological pathways underpinning dark-cutting beef at the proteome level have been described and deeply discussed in this integromics study.",
publisher = "Elsevier Ltd",
journal = "Meat Science",
title = "Dark-cutting beef: A brief review and an integromics meta-analysis at the  proteome level to decipher the underlying pathways",
pages = "108611",
volume = "181",
doi = "10.1016/j.meatsci.2021.108611"
}
Gagaoua, M., Warner, R. D., Purslow, P., Ramanathan, R., Mullen, A. M., Lopez-Pedrouso, M., Franco, D., Lorenzo, J. M., Tomašević, I., Picard, B., Troy, D.,& Terlouw, E.M. C.. (2021). Dark-cutting beef: A brief review and an integromics meta-analysis at the  proteome level to decipher the underlying pathways. in Meat Science
Elsevier Ltd., 181, 108611.
https://doi.org/10.1016/j.meatsci.2021.108611
Gagaoua M, Warner RD, Purslow P, Ramanathan R, Mullen AM, Lopez-Pedrouso M, Franco D, Lorenzo JM, Tomašević I, Picard B, Troy D, Terlouw EC. Dark-cutting beef: A brief review and an integromics meta-analysis at the  proteome level to decipher the underlying pathways. in Meat Science. 2021;181:108611.
doi:10.1016/j.meatsci.2021.108611 .
Gagaoua, Mohammed, Warner, Robyn D., Purslow, Peter, Ramanathan, Ranjith, Mullen, Anne Maria, Lopez-Pedrouso, Maria, Franco, Daniel, Lorenzo, José M., Tomašević, Igor, Picard, Brigitte, Troy, Declan, Terlouw, E.M. Claudia, "Dark-cutting beef: A brief review and an integromics meta-analysis at the  proteome level to decipher the underlying pathways" in Meat Science, 181 (2021):108611,
https://doi.org/10.1016/j.meatsci.2021.108611 . .

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