Fast surface floating organic droplets based dispersive liquid‐liquid microextraction for trace enrichment of multiclass pesticide residues from different fruit juice samples followed by high performance liquid chromatography–diode array detection analysis

IF 1.3 Q4 CHEMISTRY, ANALYTICAL SEPARATION SCIENCE PLUS Pub Date : 2023-06-07 DOI:10.1002/sscp.202300042
Habtamu Bekele, Negussie Megersa
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引用次数: 1

Abstract

Abstract This study was designed to enable the development of a simple, fast, and environmentally friendly analytical technique utilizing dispersive liquid‐liquid microextraction based on surface floating organic droplets for selective and quantitative enrichment of trace level pesticide contaminants from different fruit juice samples for subsequent detection by high performance liquid chromatography, combined with a diode array detector. The selective extraction was necessitated in order to isolate the seven multiclass pesticide residues frequently occurring in fruit juice samples. The effects of experimental parameters such as pH of sample solution, type and volume of extraction and dispersive solvents, ionic strength and extraction time were optimized. The optimized method was validated using spiked blank sample and satisfactory results for accuracy, with recoveries ranging from 87.23% to 99.45%, with %relative standard deviation between 1.37 and 8.39, precision in terms of %relative standard deviation ≤ 10.78 and linearity at concentration levels from 3 to 1500 ng/ml, which corresponded with correlation coefficients ≥ 0.998. The limits of detection and the limits of quantification were ranged from 1.3×10 −2 to 5.3×10 −2 and 4.2×10 −2 to 1.8×10 −1 μg/L, respectively. At the end, the method was successfully applied to analyze real fruit juice samples and target analytes were not detected in real samples.
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基于表面漂浮有机液滴的分散液液微萃取快速富集不同果汁样品中多种农药残留并进行高效液相色谱-二极管阵列检测分析
摘要:本研究旨在开发一种简单、快速、环保的分析技术,利用基于表面漂浮有机液滴的分散液-液微萃取,对不同果汁样品中的痕量农药污染物进行选择性和定量富集,并结合二极管阵列检测器进行高效液相色谱检测。为了分离果汁样品中常见的7种多类农药残留,需要进行选择性提取。优化了样品溶液的pH、萃取溶剂和分散溶剂的种类和体积、离子强度和萃取时间等实验参数的影响。采用加标空白样品对优化后的方法进行了验证,结果表明,方法的准确度为87.23% ~ 99.45%,相对标准偏差为1.37 ~ 8.39,精密度为%相对标准偏差≤10.78,线性范围为3 ~ 1500 ng/ml,相关系数≥0.998。检测限为1.3×10−2 ~ 5.3×10−2,定量限为4.2×10−2 ~ 1.8×10−1 μg/L。最后,该方法成功应用于实际果汁样品的分析,实际样品中未检出目标分析物。
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来源期刊
SEPARATION SCIENCE PLUS
SEPARATION SCIENCE PLUS CHEMISTRY, ANALYTICAL-
CiteScore
1.90
自引率
9.10%
发文量
111
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