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首页> 外文期刊>Journal of chromatography, A: Including electrophoresis and other separation methods >Collaborative validation of the quantification method for suspected allergens and test of an automated data treatment
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Collaborative validation of the quantification method for suspected allergens and test of an automated data treatment

机译:协同验证可疑过敏原定量方法和自动数据处理测试

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Previous publications investigated different data treatment strategies for quantification of volatile suspected allergens by GC/MS. This publication presents the validation results obtained on "ready to inject" samples under reproducibility conditions following inter-laboratory ring-testing. The approach is based on the monitoring of three selected ions per analyte using two different GC capillary columns. To aid the analysts a decisional tree is used for guidance during the interpretation of the analytical results. The method is evaluated using a fragrance oil concentrate spiked with all suspected allergens to mimic the difficulty of a real sample extract or perfume oil. At the concentrations of 10 and 100. mg/kg, imposed by Directive 76/768/EEC for labeling of leave-on and rinse-off cosmetics, the mean bias is +14% and -4%, respectively. The method is linear for all analytes, and the prediction intervals for each analyte have been determined. To speed up the analyst's task, an automated data treatment is also proposed. The method mean bias is slightly shifted towards negative values, but the method prediction intervals are close to that resulting from the decisional tree.
机译:以前的出版物调查了通过GC / MS定量分析挥发性可疑过敏原的不同数据处理策略。该出版物介绍了实验室间环试验后,在可重复性条件下对“准备注射”样品获得的验证结果。该方法基于使用两个不同的GC毛细管柱对每种分析物三个选定离子的监测。为了帮助分析人员,在分析结果的解释过程中将决策树用作指导。使用掺有所有可疑过敏原的香精油浓缩物来评估该方法,以模拟真实样品提取物或香精油的难度。在指示76/768 / EEC标记免洗型和冲洗型化妆品的浓度为10和100. mg / kg时,平均偏差分别为+ 14%和-4%。该方法对所有分析物都是线性的,并且已经确定了每种分析物的预测间隔。为了加快分析人员的工作速度,还提出了自动数据处理方法。方法的平均偏差略微移向负值,但方法的预测间隔接近于决策树所产生的间隔。

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