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食品研究与开发:2020,41(18):105-112
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响应面优化超声辅助提取巧克力中矿物油工艺及检测
(河北科技大学生物科学与工程学院,河北石家庄050018)
Optimization of Ultrasonic-assisted Extraction of Mineral Oil from Chocolate by Response Surface Method and Detection
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投稿时间:2019-10-21    
中文摘要: 为探究巧克力中矿物油含量,利用响应面法对巧克力中矿物油超声辅助提取工艺进行优化,得到最佳提取条件为:时间 26 min,温度 35℃,料液比 1∶3.2(g/mL),超声功率 120 W,该条件下矿物油提取量可达(3.127±0.194)mg/kg,与预测值相符。气相色谱检测矿物油时,采用标准曲线和内标结合法对矿物油进行定性定量分析,C9~C40正构烷烃标准工作液在0.32 mg/L~200 mg/L浓度范围内线性关系良好。该方法检出限为0.26 mg/kg,定量限是0.78 mg/kg,加标回收率为85.2%~97.4%,相对标准偏差介于0.37%~1.33%之间。运用该方法对市售10种巧克力中的矿物油含量进行提取检测,结果发现样品中均存在矿物油污染的情况,平均含量介于1.047 mg/kg~7.073 mg/kg之间,该提取检测方法定量准确、操作简单,可用于分析巧克力中的矿物油含量。
中文关键词: 巧克力  矿物油  响应面  提取  检测
Abstract:The ultrasonic-assisted extraction conditions of mineral oil in the chocolate was optimized by the response surface method in order to detect the mineral oil content in chocolate.The optimized parameters were obtained as follows:extraction time was 26 min,extraction temperature was 35℃,ratio of material to liquid was 1∶3.2 (g/mL),ultrasonic power was 120 W,respectively.Under these conditions,the extraction amount of mineral oil could reach(3.127±0.194)mg/kg,which was in agreement with the predicted value.The qualitative and quantitative analysis of mineral oil was carried out by standard curve and internal standard combination method when detected mineral oil by gas chromatography,and the linear relationship of C9-C40n-alkane standard working liquid was good in the range of 0.32 mg/L-200 mg/L.The detection limit of this method was 0.26 mg/kg and the limit of quantification was 0.78 mg/kg,respectively.The recovery rate was 85.2%~97.4% and the relative standard deviation(RSD)was between 0.37% and 1.33%,respectively.The results showed that the average content of mineral oil content in 10 kinds of chocolate sold in the market was between 1.047 mg/kg and 7.073 mg/kg.The method had accurate quantity and was simple to operate.It could be used to analyze the mineral oil content in chocolate.
文章编号:202018018     中图分类号:    文献标志码:
基金项目:河北省科技计划项目(15455507D);河北科技大学五大平台开放基金项目(SW04)
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