4.7 Article

Analysis of Veterinary Drugs and Metabolites in Milk Using Quadrupole Time-of-Flight Liquid Chromatography-Mass Spectrometry

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JOURNAL OF AGRICULTURAL AND FOOD CHEMISTRY
卷 59, 期 14, 页码 7569-7581

出版社

AMER CHEMICAL SOC
DOI: 10.1021/jf103808t

关键词

Milk; quadrupole time-of-flight LC-MS; veterinary drug residues; metabolites

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A quadrupole time-of-flight (Q-TOF) liquid chromatography mass-spectrometry (LC-MS) method was developed to analyze veterinary drug residues in milk. Milk samples were extracted with acetonitrile. A molecular weight cutoff filter was the only cleanup step in the procedure. Initially, a set of target compounds (including representative sulfonamides, tetracyclines, beta-lactams, and macrolides) was used for validation. Screening of residues was accomplished by collecting TOF (MS1) data and comparing the accurate mass and retention times of found compounds to a database containing information for veterinary drugs. The residues included in the study could be detected in samples fortified at the levels of concern with this procedure 97% of the time. Although the method was intended to be qualitative, an evaluation of the MS data indicated a linear response and acceptable recoveries for a majority of target compounds. In addition, MS/MS data were also generated for the [M + H](+) ions. Product ions for each compound were identified, and their mass accuracy was compared to theoretical values. Finally, incurred milk samples from cows dosed with veterinary drugs, including sulfamethazine, flunixin, cephapirin, or enrofloxacin, were analyzed with Q-TOF LC-MS. In addition to monitoring for the parent residues, several metabolites were detected in these samples by TOF. Proposed identification of these residues could be made by evaluating the MS and MS/MS data. For example, several plausible metabolites of enrofloxacin, some not previously observed in milk, are reported in this study.

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