Cargando…

An Integrative Glycomic Approach for Quantitative Meat Species Profiling

It is estimated that food fraud, where meat from different species is deceitfully labelled or contaminated, has cost the global food industry around USD 6.2 to USD 40 billion annually. To overcome this problem, novel and robust quantitative methods are needed to accurately characterise and profile m...

Descripción completa

Detalles Bibliográficos
Autores principales: Chia, Sean, Teo, Gavin, Tay, Shi Jie, Loo, Larry Sai Weng, Wan, Corrine, Sim, Lyn Chiin, Yu, Hanry, Walsh, Ian, Pang, Kuin Tian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9265272/
https://www.ncbi.nlm.nih.gov/pubmed/35804766
http://dx.doi.org/10.3390/foods11131952
_version_ 1784743172107141120
author Chia, Sean
Teo, Gavin
Tay, Shi Jie
Loo, Larry Sai Weng
Wan, Corrine
Sim, Lyn Chiin
Yu, Hanry
Walsh, Ian
Pang, Kuin Tian
author_facet Chia, Sean
Teo, Gavin
Tay, Shi Jie
Loo, Larry Sai Weng
Wan, Corrine
Sim, Lyn Chiin
Yu, Hanry
Walsh, Ian
Pang, Kuin Tian
author_sort Chia, Sean
collection PubMed
description It is estimated that food fraud, where meat from different species is deceitfully labelled or contaminated, has cost the global food industry around USD 6.2 to USD 40 billion annually. To overcome this problem, novel and robust quantitative methods are needed to accurately characterise and profile meat samples. In this study, we use a glycomic approach for the profiling of meat from different species. This involves an O-glycan analysis using LC-MS qTOF, and an N-glycan analysis using a high-resolution non-targeted ultra-performance liquid chromatography-fluorescence-mass spectrometry (UPLC-FLR-MS) on chicken, pork, and beef meat samples. Our integrated glycomic approach reveals the distinct glycan profile of chicken, pork, and beef samples; glycosylation attributes such as fucosylation, sialylation, galactosylation, high mannose, α-galactose, Neu5Gc, and Neu5Ac are significantly different between meat from different species. The multi-attribute data consisting of the abundance of each O-glycan and N-glycan structure allows a clear separation between meat from different species through principal component analysis. Altogether, we have successfully demonstrated the use of a glycomics-based workflow to extract multi-attribute data from O-glycan and N-glycan analysis for meat profiling. This established glycoanalytical methodology could be extended to other high-value biotechnology industries for product authentication.
format Online
Article
Text
id pubmed-9265272
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-92652722022-07-09 An Integrative Glycomic Approach for Quantitative Meat Species Profiling Chia, Sean Teo, Gavin Tay, Shi Jie Loo, Larry Sai Weng Wan, Corrine Sim, Lyn Chiin Yu, Hanry Walsh, Ian Pang, Kuin Tian Foods Article It is estimated that food fraud, where meat from different species is deceitfully labelled or contaminated, has cost the global food industry around USD 6.2 to USD 40 billion annually. To overcome this problem, novel and robust quantitative methods are needed to accurately characterise and profile meat samples. In this study, we use a glycomic approach for the profiling of meat from different species. This involves an O-glycan analysis using LC-MS qTOF, and an N-glycan analysis using a high-resolution non-targeted ultra-performance liquid chromatography-fluorescence-mass spectrometry (UPLC-FLR-MS) on chicken, pork, and beef meat samples. Our integrated glycomic approach reveals the distinct glycan profile of chicken, pork, and beef samples; glycosylation attributes such as fucosylation, sialylation, galactosylation, high mannose, α-galactose, Neu5Gc, and Neu5Ac are significantly different between meat from different species. The multi-attribute data consisting of the abundance of each O-glycan and N-glycan structure allows a clear separation between meat from different species through principal component analysis. Altogether, we have successfully demonstrated the use of a glycomics-based workflow to extract multi-attribute data from O-glycan and N-glycan analysis for meat profiling. This established glycoanalytical methodology could be extended to other high-value biotechnology industries for product authentication. MDPI 2022-06-30 /pmc/articles/PMC9265272/ /pubmed/35804766 http://dx.doi.org/10.3390/foods11131952 Text en © 2022 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
Chia, Sean
Teo, Gavin
Tay, Shi Jie
Loo, Larry Sai Weng
Wan, Corrine
Sim, Lyn Chiin
Yu, Hanry
Walsh, Ian
Pang, Kuin Tian
An Integrative Glycomic Approach for Quantitative Meat Species Profiling
title An Integrative Glycomic Approach for Quantitative Meat Species Profiling
title_full An Integrative Glycomic Approach for Quantitative Meat Species Profiling
title_fullStr An Integrative Glycomic Approach for Quantitative Meat Species Profiling
title_full_unstemmed An Integrative Glycomic Approach for Quantitative Meat Species Profiling
title_short An Integrative Glycomic Approach for Quantitative Meat Species Profiling
title_sort integrative glycomic approach for quantitative meat species profiling
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9265272/
https://www.ncbi.nlm.nih.gov/pubmed/35804766
http://dx.doi.org/10.3390/foods11131952
work_keys_str_mv AT chiasean anintegrativeglycomicapproachforquantitativemeatspeciesprofiling
AT teogavin anintegrativeglycomicapproachforquantitativemeatspeciesprofiling
AT tayshijie anintegrativeglycomicapproachforquantitativemeatspeciesprofiling
AT loolarrysaiweng anintegrativeglycomicapproachforquantitativemeatspeciesprofiling
AT wancorrine anintegrativeglycomicapproachforquantitativemeatspeciesprofiling
AT simlynchiin anintegrativeglycomicapproachforquantitativemeatspeciesprofiling
AT yuhanry anintegrativeglycomicapproachforquantitativemeatspeciesprofiling
AT walshian anintegrativeglycomicapproachforquantitativemeatspeciesprofiling
AT pangkuintian anintegrativeglycomicapproachforquantitativemeatspeciesprofiling
AT chiasean integrativeglycomicapproachforquantitativemeatspeciesprofiling
AT teogavin integrativeglycomicapproachforquantitativemeatspeciesprofiling
AT tayshijie integrativeglycomicapproachforquantitativemeatspeciesprofiling
AT loolarrysaiweng integrativeglycomicapproachforquantitativemeatspeciesprofiling
AT wancorrine integrativeglycomicapproachforquantitativemeatspeciesprofiling
AT simlynchiin integrativeglycomicapproachforquantitativemeatspeciesprofiling
AT yuhanry integrativeglycomicapproachforquantitativemeatspeciesprofiling
AT walshian integrativeglycomicapproachforquantitativemeatspeciesprofiling
AT pangkuintian integrativeglycomicapproachforquantitativemeatspeciesprofiling