Kuo Ting-Hao, Kuei Min-Shan, Hsiao Yi, Chung Hsin-Hsiang, Hsu Cheng-Chih, Chen Hong-Jhang
Department of Chemistry, Institute of Food Science and Technology, and Graduate Institute of Biomedical Electronics and Bioinformatics, National Taiwan University, Taipei 10617, Taiwan.
ACS Omega. 2019 Sep 11;4(13):15734-15741. doi: 10.1021/acsomega.9b02433. eCollection 2019 Sep 24.
Adulteration of edible oils by the manufacturers has been found frequently in modern societies. Due to the complexity of the chemical contents in edible oils, it is challenging to quantitatively determine the extent of adulteration and prove the authenticity of edible oils. In this study, a robust and simple MALDI-TOF-MS platform for rapid fingerprinting of triacylglycerols (TAGs) in edible oils was developed, where spectral similarity analysis was performed to quantitatively reveal correlations among edible oils in the chemical level. Specifically, we proposed oil networking, a spectral similarity-based illustration, which enabled reliable classifications of tens of commercial edible oils from vegetable and animal origins. The strategy was superior to traditional multivariate statistics due to its high sensitivity in probing subtle changes in TAG profiles, as further demonstrated by the success in determination of the adulterated lard in a food fraud in Taiwan. Finally, we showed that the platform allowed quantitative assessment of the binary mixture of olive oil and canola oil, which is a common type of olive oil adulteration in the market. Overall, these results suggested a novel strategy for chemical fingerprint-based quality control and authentication of oils in the food industry.
在现代社会中,经常发现食用油被制造商掺假。由于食用油化学成分复杂,定量确定掺假程度并证明食用油的真实性具有挑战性。在本研究中,开发了一个强大且简单的用于食用油中三酰甘油(TAGs)快速指纹识别的基质辅助激光解吸电离飞行时间质谱(MALDI-TOF-MS)平台,通过光谱相似性分析在化学水平上定量揭示食用油之间的相关性。具体而言,我们提出了油网络,这是一种基于光谱相似性的图示,能够对数十种来自植物和动物来源的市售食用油进行可靠分类。该策略在探测TAG谱图细微变化方面具有高灵敏度,优于传统多元统计方法,台湾一起食品欺诈案中成功测定掺假猪油进一步证明了这一点。最后,我们表明该平台能够对橄榄油和菜籽油的二元混合物进行定量评估,这是市场上常见的一种橄榄油掺假类型。总体而言,这些结果为食品工业中基于化学指纹的油脂质量控制和认证提出了一种新策略。