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首页> 外文期刊>Food Chemistry >Quality assessment of olive oils based on temperature-ramped HS-GC-IMS and sensory evaluation: Comparison of different processing approaches by LDA, kNN, and SVM
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Quality assessment of olive oils based on temperature-ramped HS-GC-IMS and sensory evaluation: Comparison of different processing approaches by LDA, kNN, and SVM

机译:基于温度梯度HS-GC-IMS和感官评估的橄榄油质量评估:LDA,kNN和SVM对不同加工方法的比较

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摘要

For the first time, this study describes a HS-GC-IMS strategy for analyzing non-targeted volatile organic compounds (VOCs) profiles to distinguish between virgin olive oils of different classification. Correlations among measured flavor characteristics and sensory attributes evaluated by a test panel were determined by applying unsupervised (PCA, HCA) and supervised (LDA, kNN and SVM) chemometric techniques. PCA and HCA were applied for natural clustering of the samples and LDA, kNN, and SVM methods were used to create predictive models for olive oil classification. Identification of 26 target compounds revealed which compounds are responsible for discrimination, and how their distribution correlates with the sensory evaluation. In the investigated samples, LDA, kNN, and SVM models correctly classified 83.3%, 73.8%, and 88.1% of the samples, respectively.This suggests that mathematical correlations of HS-GC-IMS 3D fingerprints with the sensory analysis may be appropriate for calculating a good predictive value to classify virgin olive oils.
机译:这项研究首次描述了一种HS-GC-IMS策略,用于分析非目标挥发性有机化合物(VOC)谱图,以区分不同分类的纯橄榄油。通过应用无监督(PCA,HCA)和监督(LDA,kNN和SVM)化学计量技术,确定了测试小组评估的风味特征和感官属性之间的相关性。 PCA和HCA用于样品的自然聚类,LDA,kNN和SVM方法用于创建橄榄油分类的预测模型。对26种目标化合物的鉴定揭示了哪些化合物是造成歧视的原因,以及它们的分布与感觉评估如何相关。在研究的样本中,LDA,kNN和SVM模型分别正确地将样本分类为83.3%,73.8%和88.1%,这表明HS-GC-IMS 3D指纹与感官分析的数学相关性可能适用于计算出良好的预测价值,以对初榨橄榄油进行分类。

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