An Integrative Glycomic Approach for Quantitative Meat Species Profiling.
Sean ChiaGavin TeoShi Jie TayLarry Sai Weng LooCorrine WanLyn Chiin SimHanry YuIan WalshKuin Tian PangPublished in: Foods (Basel, Switzerland) (2022)
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.
Keyphrases
- mass spectrometry
- high resolution
- liquid chromatography
- cell surface
- electronic health record
- single cell
- ms ms
- multiple sclerosis
- genetic diversity
- big data
- climate change
- simultaneous determination
- heavy metals
- tandem mass spectrometry
- machine learning
- high resolution mass spectrometry
- cancer therapy
- single molecule
- gas chromatography
- risk assessment
- network analysis
- antibiotic resistance genes
- anaerobic digestion