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首页> 外文期刊>Analytica chimica acta >Classification of olive oils using high throughput flow ~1H NMR fingerprinting with principal component analysis,linear discriminant analysis and probabilistic neural networks
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Classification of olive oils using high throughput flow ~1H NMR fingerprinting with principal component analysis,linear discriminant analysis and probabilistic neural networks

机译:使用高通量〜1H NMR指纹图谱对橄榄油进行分类,并进行主成分分析,线性判别分析和概率神经网络

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The combination of ~1H NMR fingerprinting with multivariate analysis provides an original approach to study the profile of olive oil in relation to its geographical origin and processing.The present work aims at illustrating the relevance of ~1H NMR fingerprints for assessing the geographical origin and the year of production for olive oils from various Mediterranean areas.Multivariate (chemometric) techniques are able to filter out the most relevant information from a spectrum,e.g.for a classification.Principal component analysis (PCA) was carried out on the ~ 12,000 variables (chemical shifts) and four data sets were defined prior to PCA.Linear discriminant analysis (LDA) of the first 50 PC's was applied for classification of olive oil samples (97 or 91) according to the geographic origin and year of production.The data analysis has been carried out with and without outliers,as well.Variable selection for LDA was achieved using:(i) the best five variables and (ii) an interactive forward stepwise manner.Using LDA on the external validation sets the correct classification varied between 47 and 75% (random selection),and between 35 and 92% (Kennard-Stone selection (KS)) depending on geographic origin (country) and production years.A similar success rate could be achieved using partial least squares discriminant analysis (PLS DA).The success rate can be considerably improved by using probabilistic neural networks (PNN).Correct classification by PNN varied between 58 and 100% on the external validation sets.Other chemometric techniques,such as multiple linear regression,or generalized pair-wise correlation,did not give better results.
机译:〜1H NMR指纹图谱与多变量分析的结合为研究橄榄油的地理来源和加工特性提供了一种独创的方法。本工作旨在阐明〜1H NMR指纹图谱与评估橄榄油的地理来源和相关性的相关性。地中海地区橄榄油的生产年份。多变量(化学计量)技术能够从光谱中过滤掉最相关的信息,例如用于分类。对约12,000个变量(化学成分)进行了主成分分析(PCA) PCA之前定义了四个数据集)。前50个PC的线性判别分析(LDA)用于根据地理来源和生产年份对橄榄油样品(97或91)进行分类。 LDA的变量选择是通过以下方式实现的:(i)最佳的五个变量和(ii)交互式前馈在外部验证中使用LDA设置正确的分类,取决于地理来源(国家)和生产年份,分类介于47%和75%之间(随机选择),介于35%和92%之间(Kennard-Stone选择(KS))使用偏最小二乘判别分析(PLS DA)可以达到类似的成功率。通过使用概率神经网络(PNN)可以大大提高成功率.PNN的正确分类在外部验证集上介于58%和100%之间其他化学计量学技术,例如多元线性回归或广义成对相关,并没有给出更好的结果。

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