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可可烟熏异味:一种基于 MS 的分析决策工具,用于常规控制。

Cocoa smoky off-flavour: A MS-based analytical decision maker for routine controls.

机构信息

Dipartimento di Scienza e Tecnologia del Farmaco, Università degli Studi di Torino, Turin, Italy.

Soremartec Italia S.r.l., P.le P. Ferrero 1, 12051 Alba, CN, Italy.

出版信息

Food Chem. 2021 Jan 30;336:127691. doi: 10.1016/j.foodchem.2020.127691. Epub 2020 Aug 1.

Abstract

Cocoa smoky off-flavour is generated from an inappropriate artificial drying applied on beans to speeding up the post-harvest process and it can affect the quality of the chocolate. The sensory tests are time-consuming, and at present, a fast analytical method to detect this defect in raw materials is not yet available. This study applies a HS-SPME-MS-enose in combination with chemometrics to obtain diagnostic mass-spectral patterns to detect smoked samples and/or as analytical decision maker. SIMCA models provide the best classification results, compared to PLS-DA, with sensitivities exceeding 90% and a high class specificity range of 89-100% depending on the matrix investigated (beans or liquors). Resulting diagnostic ions were related to phenolic derivatives. The discrimination ability of the method has been confirmed by a quantitative analysis through HS-SPME-GC-MS. HS-SPME-MS-enose turned out to be a fast, cost-effective and objective approach for high throughput analytical screening to discard defective cocoa samples.

摘要

可可烟熏异味是由于对豆子进行不当的人工干燥处理以加速收获后的加工过程而产生的,这会影响巧克力的质量。感官测试耗时耗力,目前还没有快速分析方法来检测原材料中的这种缺陷。本研究应用 HS-SPME-MS-电子鼻结合化学计量学获得诊断质谱图谱,以检测烟熏样品和/或作为分析决策的依据。与 PLS-DA 相比,SIMCA 模型提供了最佳的分类结果,其灵敏度超过 90%,并且根据所研究的基质(豆或酒),具有高的类别特异性范围 89-100%。所得诊断离子与酚类衍生物有关。通过 HS-SPME-GC-MS 的定量分析证实了该方法的区分能力。HS-SPME-MS-电子鼻是一种快速、经济高效和客观的高通量分析筛选方法,可用于剔除有缺陷的可可样品。

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