色谱法
化学
生物监测
重复性
邻苯二甲酸二乙酯
邻苯二甲酸盐
样品制备
检出限
液相色谱-质谱法
萃取(化学)
质谱法
串联质谱法
再现性
尿
代谢物
中心组合设计
对羟基苯甲酸酯
响应面法
环境化学
防腐剂
生物化学
有机化学
食品科学
作者
Bruno Alves Rocha,Matheus Gallimberti,João Paulo Bianchi Ximenez,Carla Basso,Anderson Joel Martino‐Andrade,Holger M. Koch,Leandro Augusto Calixto,Fernando Barbosa
出处
期刊:Talanta
[Elsevier]
日期:2023-07-20
卷期号:266: 124974-124974
被引量:6
标识
DOI:10.1016/j.talanta.2023.124974
摘要
Urinary phthalate metabolite (mPAEs) analysis is a reliable tool for assessing human exposure to phthalates. With growing interest in urinary biomonitoring of these metabolites, there is a need for fast and sensitive analytical methods. Therefore, a simple, rapid procedure for simultaneous determination of fifteen phthalate metabolites in human urine samples by liquid chromatography-tandem mass spectrometry was developed. The novelty of the present procedure is based on the use of diethyl carbonate as a green biobased extraction solvent and air-assisted liquid-liquid microextraction (AALLME) as a sample preparation step. A Plackett-Burman design was used for screening the factors that influence the AALLME extraction efficiency of mPAEs. The effective factors were then optimized by response surface methodology using a central composite rotatable design. Under the optimized conditions, good linearity can be achieved in a concentration range of 1.0-20.0 ng mL-1 with correlation coefficients higher than 0.99. The repeatability and reproducibility precision were in the range of 2-12% and 1-10% respectively. Recoveries ranging from 90% to 110%. This, and the low limits of detection, ranging from 0.01 to 0.05 ng mL-1, make the proposed procedure sensitive and suitable for human biomonitoring of phthalate exposures. For proof-of-principle, the new method was used to measure the urinary concentrations of mPAEs in 20 urine samples from Brazilian women. The high frequency of detections and in part high concentrations of mPAEs indicate to widespread exposure to several phthalates among Brazilian women.
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