4.7 Article

High-throughput method based on a novel thin-film microextraction coating for determining macrolides and lincosamides in honey

期刊

FOOD CHEMISTRY
卷 346, 期 -, 页码 -

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ELSEVIER SCI LTD
DOI: 10.1016/j.foodchem.2020.128920

关键词

Thin-film microextraction; ZIF-8@GO; Honey; Macrolides; Lincosamides

资金

  1. International Cooperation Item of Zhejiang Academy of Agricultural Sciences [2019HZZX009]
  2. The Risk Assessment Project of Ministry and Rural Affairs [GJFP2020005]

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The high-throughput method using a new ZIF-8@GO thin-film microextraction coating proved to be efficient and accurate in detecting drug residues in honey, with potential for wide application. The automated sample processing allows for analysis of up to 96 samples per run, with stable recoveries and detection limits.
A high-throughput method using a new ZIF-8@GO thin-film microextraction coating was established for determining macrolides and lincosamides in honey. The coating preparation parameters (ZIF-8@GO synthesis conditions, coating material proportions, dipping time) and analysis parameters (sample diluent solvent, adsorption and desorption conditions using the ZIF-8@GO coating) were optimized. The optimized parameters were: diluent solvent sodium carbonate/sodium bicarbonate buffer solution (pH 9), adsorption time 45 min, desorption time 5 min, desorption solvent 45:40:15 v/v/v methanol/acetonitrile/water. The extracted targets were determined by ultra-high performance liquid chromatography tandem mass spectrometry. The recoveries of 10 analytes were 67.5-107.2% and the detection and quantification limits were 0.1-0.4 and 0.4-1.4 mu g/kg, respectively. The method could analyze 96 samples per run. The minimal manual time and effort is required since the bulk of the sample processing is fully automated. It was a useful and efficient method for monitoring drug residues and was successfully used to analyze real samples.

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