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基于挥发性成分定性判别风味油茶籽油掺伪浸出油茶籽油PCA模型和逻辑回归模型的对比分析
引用本文:孙婷婷,陈志清,刘剑波,任佳丽,钟海雁,周波.基于挥发性成分定性判别风味油茶籽油掺伪浸出油茶籽油PCA模型和逻辑回归模型的对比分析[J].中国油脂,2023,48(3):56-63.
作者姓名:孙婷婷  陈志清  刘剑波  任佳丽  钟海雁  周波
作者单位:1.林产可食资源安全与加工利用湖南省重点实验室,长沙 410004;2.中南林业科技大学 食品科学与工程学院,长沙 410004;3.岳阳市检验检测中心食品药品检验所,湖南 岳阳 414000
基金项目:湖南省林业科技创新基金项目(XLK202101-02);湖南省市场监督管理局科技计划项目(2020KJJH55);中央引导地方科技发展专项资金区域创新体系建设专项(2020ZYQ036)。
摘    要:为了解决风味(原香和烤香)油茶籽油掺伪浸出油茶籽油的定性判别问题,设计高、低两个掺伪梯度,基于挥发性成分构建并对比分析了定性判别风味油茶籽油掺伪浸出油茶籽油的主成分分析(PCA)模型和逻辑回归模型。结果表明:逻辑回归模型定性判别风味油茶籽油掺伪浸出油茶籽油的能力较强,优于PCA模型;高掺伪梯度下定性判别原香和烤香油茶籽油掺伪浸出油茶籽油,PCA模型的最低检出限分别为20%和60%,而逻辑回归模型的最低检出限均为10%;低掺伪梯度下定性判别原香和烤香油茶籽油掺伪浸出油茶籽油,PCA模型的判别不准确,而逻辑回归模型的最低检出限均为4%。逻辑回归模型能很好地定性判别风味油茶籽油掺伪浸出油茶籽油。

关 键 词:风味油茶籽油  浸出油茶籽油  挥发性成分  主成分分析模型  逻辑回归模型  定性判别

Comparative analysis between PCA model and logistic regression model for qualitative identification of flavor oil-tea camellia seed oil adulteration with leaching oil-tea camellia seed oil based on volatile components
SUN Tingting,CHEN Zhiqing,LIU Jianbo,REN Jiali,ZHONG Haiyan,ZHOU Bo.Comparative analysis between PCA model and logistic regression model for qualitative identification of flavor oil-tea camellia seed oil adulteration with leaching oil-tea camellia seed oil based on volatile components[J].China Oils and Fats,2023,48(3):56-63.
Authors:SUN Tingting  CHEN Zhiqing  LIU Jianbo  REN Jiali  ZHONG Haiyan  ZHOU Bo
Abstract:Based on volatile components, principal component analysis (PCA) and logistic regression (LR)models were constructed and compared to solve the problem of qualitative identification of flavor (original/roasted) oil-tea camellia seed oil adulterated with leaching oil-tea camellia seed oil under high and low adulteration gradients.The results showed that LR model had a good ability to qualitatively identify the flavor oil-tea camellia seed oil adulterated with leaching oil-tea camellia seed oil, which was better than that of PCA model. Under the high adulteration gradient, the detection limit of the PCA model for original/roasted oil-tea camellia seed oil adulterated with leaching oil-tea camellia seed oil was 20%/60%, and the detection limit of the LS model was 10%/10%, respectively. Under the low adulteration gradient, the detection limit of LR model for original/roasted oil-tea camellia seed oil adulterated with leaching oil-tea camellia seed oil was 4%/4%, but the discriminative ability of the PCA model was not accurate.The LR model can qualitatively identify flavor oil-tea camellia seed oil adulterated with leaching oil-tea camellia seed oil.
Keywords:flavor oil-tea camellia seed oil  leaching oil-tea camellia seed oil  volatile component  principal component analysis model  logistic regression model  qualitative identification
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