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A liquid chromatography mass spectrometry-based method to measure organophosphorous insecticide, herbicide and non-organophosphorous pesticide in grape and apple samples.

机译:基于液相色谱质谱法的方法用于测量葡萄和苹果样品中的有机磷杀虫剂,除草剂和非有机磷农药。

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摘要

The LC-MS/MS with Quick, Easy, Cheap, Effective, Rugged and safe method was used for analysis of eighteen pesticides in fruit samples. This method was found to be accurate (>=99%), as it possessed limits of detection in the 0.002-0.087 ranges respectively. The coefficients of variations (>=0.9999) were less than 2% at the low ng g--1 concentration. Mean recoveries ranged between 97 and 101%, and % RSD were below 5%. The imidacloprid mean concentrations of red grapes (125.124 ng g--1) and green grapes (702.030 ng g--1) differed significantly (p < 0.05) between the grapes. Similarly, the fenitrothion mean concentration of red grapes (143.66 ng g--1) and green grapes (51.554 ng g--1) differed significantly (p < 0.001) between the fruits. The average concentration of quinalphos was 4.317 and 1.389 ng g--1 differed significantly (p < 0.01) between the grapes. In apples imidacloprid, quinalphos, triazophos, ethion and acephate were also present. This study may be helpful in developing a regional exposure database and in the facilitation of health risk assessment due to pesticide exposure. All rights reserved, Elsevier.
机译:采用快速,简便,廉价,有效,坚固耐用和安全的方法进行LC-MS / MS分析水果样品中的十八种农药。发现该方法是准确的(> = 99%),因为它的检测限分别在0.002-0.087范围内。在低ng g -1 浓度下,变异系数(> = 0.9999)小于2%。平均回收率介于97%至101%之间,%RSD低于5%。红葡萄(125.124 ng g -1 )和绿葡萄(702.030 ng g -1 )的吡虫啉平均浓度差异显着( p <0.05)。同样,红葡萄(143.66 ng g -1 )和绿葡萄(51.554 ng g -1 )的杀nitro硫酮平均浓度也有显着差异( p < / i> <0.001)。喹诺磷的平均浓度为4.317,而葡萄之间的差异为1.389 ng g -1 ( p <0.01)。苹果中还存在吡虫啉,喹诺磷,三唑磷,乙硫磷和乙酰甲胺磷。这项研究可能有助于建立区域暴露数据库并促进由于农药暴露引起的健康风险评估。保留所有权利,Elsevier。

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