Electronic nose for the early detection of different types of indigenous mold contamination in green coffee

V. Sberveglieri, E. Comini, D. Zappa, A. Pulvirenti, Estefanía Núñez-Carmona
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引用次数: 21

Abstract

In the last few years Electronic Noses (ENs) have been revealed to be a very effective and fast tool for monitoring the microbiological spoilage and food quality control. European regulations report the maximum concentration of mycotoxins permitted in green coffee beans. The aim of this study was to test the ability of a novel EN, equipped with an array of MOX gas sensors based on thin films as well as nanowires, to early detect mold contaminations from Aspergillus spp., in cooperation with classical microbiological and chemical techniques like Gas Chromatography coupled with Mass Spectroscopy with SPME technique. In general the selection of the green coffee is controlled by visual inspection of shape, color and size. However, this process in often not enough to prevent the entrance in the food chains of contaminated products. We have demonstrated that the novel EN is able to early detect the qualitative and quantitative differences between contaminate and uncontaminated samples. Achieved results vividly recommend the use of our EN as a quality control tool in coffee producer industry.
用电子鼻早期检测生咖啡中不同类型的原生霉菌污染
近年来,电子鼻(ENs)已被证明是一种非常有效和快速的微生物腐败监测和食品质量控制工具。欧洲法规报告了绿咖啡豆中允许的真菌毒素的最大浓度。本研究的目的是测试一种新型EN的能力,该EN配备了一系列基于薄膜和纳米线的MOX气体传感器,与经典的微生物和化学技术(如气相色谱-质谱- SPME技术)合作,早期检测曲霉的霉菌污染。一般来说,绿咖啡的选择是通过视觉检查形状、颜色和大小来控制的。然而,这一过程往往不足以防止受污染产品进入食物链。我们已经证明,新的EN能够早期检测污染和未污染样品之间的定性和定量差异。取得的结果生动地推荐使用我们的EN作为咖啡生产行业的质量控制工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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