Comprehensive characterization and detection of nut allergens in bakery foods using Q-TOF mass spectrometry and bioinformatics

Author:

Xu Daokun1,Huang Haolun12,Liu Zhen13,Wang Yumei14,Liu Qinan1,Jiang Xing1,Yang Jun1,Ling Rui1

Affiliation:

1. Nanjing Institute for Food and Drug Control , Nanjing , China

2. State Key Laboratory of Food Science and Technology, School of Food Science and Technology, Jiangnan University , Wuxi , China

3. Demonstration Collaborative Laboratory of Analysis and Detection Technology for Food and Drug Safety, Nanjing Institute for Food and Drug Control and Agilent Technologies ( China ), Nanjing , China

4. Collaborative Laboratory for Food Safety, Nanjing Institute for Food and Drug Control and SCIEX ( China ), Nanjing , China

Abstract

Abstract Food allergy is a growing health issue worldwide and the demand for sensitive, robust and high-throughput analytical methods is rising. In recent years, mass spectrometry-based methods have been established for multiple food allergen detection. In the present study, a novel method was developed for the simultaneous detection of almond, cashew, peanut, and walnut allergens in bakery foods using liquid chromatography–mass spectrometry. Proteins unique to these four ingredients were extracted, followed by trypsin digestion, quadrupole time-of-flight (Q-TOF) mass spectrometry and bioinformatics analysis. The raw data were processed by de-novo sequencing module plus PEAKS DB (database search) module of the PEAKS software to screen peptides specific to each nut species. The thermal stability and uniqueness of these candidate peptides were further verified using triple quadrupole mass spectrometry (QQQ-MS) in multiple reaction monitoring (MRM) mode. Each nut species was represented by four peptides, all of which were validated for label-free quantification (LFQ). Calibration curves were constructed with good linearity and correlation coefficient (r2) greater than 0.99. The limits of detection (LODs) were determined to range from 0.11 to 0.31 mg/kg, and were compared with the reference doses proposed by Voluntary Incidental Trace Allergen Labelling (VITAL). The recoveries of the developed method in incurred bakery food matrices ranged from 72.5% to 92.1% with relative standard deviations (RSD) of <5.2%. The detection of undeclared allergens in commercial bakery food samples confirmed the presence of these allergens. In conclusion, this method provides insight into the qualitative and quantitative detection of trace levels of nut allergens in bakery foods.

Funder

Key Science and Technology Program

Publisher

Oxford University Press (OUP)

Subject

Food Science

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