4.6 Article

SERS nanosensor of 3-aminobenzeneboronic acid labeled Ag for detecting total arsenic in black tea combined with chemometric algorithms

期刊

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.jfca.2022.104588

关键词

Labeled sensor; Chemometrics; Arsenic; SERS; CARS-PLS; Food safety

资金

  1. National Natural Science Foundation of China [31972151]
  2. Outstanding Young Teachers of Blue Project in Jiangsu Province
  3. Open Project Program of Key Laboratory of Modern Agricultural Equipment and Technology of Ministry of Education [MAET202117]
  4. Youth Project of Faculty of Agricultural Equipment of Jiangsu University [NZXB20210205]
  5. Postgraduate Research and Practice Innovation Program of Jiangsu Province [KYCX21_3383]

向作者/读者索取更多资源

A novel SERS-based nanosensor was developed for rapid and accurate detection and prediction of total arsenic in food samples. The sensor recognizes TAs through the formation of As-O-Ag linkage and provides high correlation coefficient results and a low detection limit.
Detrimental health effects caused by the intake of food contaminated with heavy metals have drawn concerns on effective monitoring using rapid and benign methods. This work presented a novel surface-enhanced Raman scattering (SERS)-based 3-Aminobenzeneboronic acid (ABBA) labeled silver (Ag) nanosensor combined with chemometric algorithms to detect and predict total arsenic (TAs) in acid digested spiked black tea leaves. The sensor recognizes TAs through the partial detachment of ABBA and the chemical formation of As-O-Ag linkage between the TAs and the Ag nanoparticles, which caused a SERS-on signal enhancement effect. SERS combined with competitive adaptive reweighted sampling partial least squares algorithm predicted the TAs with higher correlation coefficient (R-p) results (R-p = 0.9750) and a detection limit of 0.0273 mu g/g. Good recoveries of 83.84-109.53% and the excellent agreement with the inductively coupled plasma-mass spectrometry method (R-2 = 0.999) revealed this developed rapid method could be deployed for fast-tracking of As in food samples.

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