López-Feria Silvia, Cárdenas Soledad, García-Mesa José Antonio, Valcárcel Miguel
Department of Analytical Chemistry, Marie Curie Building (Annex), Campus de Rabanales, University of Córdoba, E-14071, Spain.
J Chromatogr A. 2008 Apr 25;1188(2):308-13. doi: 10.1016/j.chroma.2008.02.046. Epub 2008 Feb 16.
A methodology for obtaining reliable qualitative and quantitative information about negative (fusty, muddy sediment, musty, rancid and vinegary) and positive (fruity) sensory attributes of virgin olive oils (lampante and extra) has been developed. The procedure implies the joint use of a headspace autosampler, a mass spectrometer and an adequate chemometric data treatment. For this purpose, soft independent modelling of class analogy (SIMCA) and partial least squares (PLS) regression approaches were used for attribute identification and quantification, respectively. InStep application was employed to generate a decision tree by the combination of both models in order to provide the joint prediction of the sensory attributes of a given virgin olive oil and their respective intensities by means of a single output result. The good prediction results obtained when the decision tree generated were applied to a new set of virgin olive oil samples (viz, a specificity of 100%, an average sensitivity of 86% and a RMSEP<0.8% in the quantification task) reveals its potential applicability in routine analysis.
已开发出一种方法,用于获取有关初榨橄榄油(粗榨和特级初榨)负面(霉味、泥腥味、霉臭、酸败和醋味)和正面(果味)感官属性的可靠定性和定量信息。该程序意味着要联合使用顶空自动进样器、质谱仪和适当的化学计量数据处理方法。为此,分别使用类类比软独立建模(SIMCA)和偏最小二乘(PLS)回归方法进行属性识别和定量。采用InStep应用程序通过将两种模型相结合来生成决策树,以便通过单一输出结果对给定初榨橄榄油的感官属性及其各自强度进行联合预测。将生成的决策树应用于一组新的初榨橄榄油样品时获得的良好预测结果(即在定量任务中特异性为100%,平均灵敏度为86%,RMSEP<0.8%)表明其在常规分析中的潜在适用性。