Discrimination of three commercial tuna species through species-specific peptides: From high-resolution mass spectrometry discovery to MRM validation

质谱法 化学 金枪鱼 色谱法 高分辨率 渔业 生物 地理 遥感
作者
Lingping Hu,Yin Zhu,Chao Zhong,Qiang Cai,Hongwei Zhang,Xiaomei Zhang,Qian Yao,Yuyu Hang,Yingliang Ge,Yaqin Hu
出处
期刊:Food Research International [Elsevier BV]
卷期号:187: 114462-114462 被引量:1
标识
DOI:10.1016/j.foodres.2024.114462
摘要

The risk of tuna adulteration is high driven by economic benefits. The authenticity of tuna is required to protect both consumers and tuna stocks. Given this, the study is designed to identify species-specific peptides for distinguishing three commercial tropical tuna species. The peptides derived from trypsin digestion were separated and detected using ultrahigh-performance liquid chromatography-quadrupole-time of flight mass spectrometry (UPLC-Q-TOF/MS) in data-dependent acquisition (DDA) mode. Venn analysis showed that there were differences in peptide composition among the three tested tuna species. The biological specificity screening through the National Center for Biotechnology Information's Basic Local Alignment Search Tool (NCBI BLAST) revealed that 93 peptides could serve as potential species-specific peptides. Finally, the detection specificity of species-specific peptides of raw meats and processed products was carried out by multiple reaction monitoring (MRM) mode based on a Q-Trap mass spectrometer. The results showed that three, one and two peptides of Katsuwonus pelamis, Thunnus obesus and Thunnus albacores, respectively could serve as species-specific peptides.
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