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基于 H-NMR 的代谢组学:一种用于检测鸡肉、羊肉、牛肉和驴肉掺假的综合方法。

H-NMR-Based Metabolomics: An Integrated Approach for the Detection of the Adulteration in Chicken, Chevon, Beef and Donkey Meat.

机构信息

Institute of Industrial Biotechnology, GC University, Lahore 54000, Pakistan.

Department of Chemistry, University of Gujrat, Gujrat 50700, Pakistan.

出版信息

Molecules. 2021 Jul 30;26(15):4643. doi: 10.3390/molecules26154643.

Abstract

Meat is a rich source of energy that provides high-value animal protein, fats, vitamins, minerals and trace amounts of carbohydrates. Globally, different types of meats are consumed to fulfill nutritional requirements. However, the increasing burden on the livestock industry has triggered the mixing of high-price meat species with low-quality/-price meat. This work aimed to differentiate different meat samples on the basis of metabolites. The metabolic difference between various meat samples was investigated through Nuclear Magnetic Resonance spectroscopy coupled with multivariate data analysis approaches like principal component analysis (PCA) and orthogonal partial least square-discriminant analysis (OPLS-DA). In total, 37 metabolites were identified in the gluteal muscle tissues of cow, goat, donkey and chicken using H-NMR spectroscopy. PCA was found unable to completely differentiate between meat types, whereas OPLS-DA showed an apparent separation and successfully differentiated samples from all four types of meat. Lactate, creatine, choline, acetate, leucine, isoleucine, valine, formate, carnitine, glutamate, 3-hydroxybutyrate and α-mannose were found as the major discriminating metabolites between white (chicken) and red meat (chevon, beef and donkey). However, inosine, lactate, uracil, carnosine, format, pyruvate, carnitine, creatine and acetate were found responsible for differentiating chevon, beef and donkey meat. The relative quantification of differentiating metabolites was performed using one-way ANOVA and Tukey test. Our results showed that NMR-based metabolomics is a powerful tool for the identification of novel signatures (potential biomarkers) to characterize meats from different sources and could potentially be used for quality control purposes in order to differentiate different meat types.

摘要

肉类是一种富含能量的食物,可提供高价值的动物蛋白质、脂肪、维生素、矿物质和痕量碳水化合物。在全球范围内,人们消费不同类型的肉类来满足营养需求。然而,畜牧业的负担不断增加,导致高价位肉类与低质量/低价位肉类混合。本研究旨在基于代谢物对不同的肉类样本进行区分。通过核磁共振波谱结合主成分分析(PCA)和正交偏最小二乘判别分析(OPLS-DA)等多元数据分析方法,研究了不同肉类样本之间的代谢差异。总共从牛、山羊、驴和鸡的臀肌组织中鉴定出 37 种代谢物。PCA 发现无法完全区分肉类类型,而 OPLS-DA 则显示出明显的分离,并成功区分了来自四种肉类的样本。乳酸、肌酸、胆碱、乙酸盐、亮氨酸、异亮氨酸、缬氨酸、甲酸盐、肉碱、谷氨酸、3-羟基丁酸和α-甘露糖被发现是区分白肉(鸡肉)和红肉(羊肉、牛肉和驴肉)的主要差异代谢物。然而,肌苷、乳酸、尿嘧啶、肌肽、甲酸盐、丙酮酸、肉碱、肌酸和乙酸盐被发现是区分羊肉、牛肉和驴肉的代谢物。采用单因素方差分析和 Tukey 检验对差异代谢物进行相对定量。结果表明,基于 NMR 的代谢组学是一种强大的工具,可用于鉴定来自不同来源的肉类的新型特征(潜在生物标志物),并可用于质量控制目的,以区分不同的肉类类型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3661/8347375/200c905fa375/molecules-26-04643-g001.jpg

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