Torres Irina, Sánchez María-Teresa, Vega-Castellote Miguel, Pérez-Marín Dolores
Department of Bromatology and Food Technology, University of Cordoba, Rabanales Campus, 14071 Córdoba, Spain.
Department of Animal Production, University of Cordoba, Rabanales Campus, 14071 Córdoba, Spain.
Foods. 2021 May 28;10(6):1221. doi: 10.3390/foods10061221.
One of the key challenges for the almond industry is how to detect the presence of bitter almonds in commercial batches of sweet almonds. The main aim of this research is to assess the potential of near-infrared spectroscopy (NIRS) by means of using portable instruments in the industry to detect batches of sweet almonds which have been adulterated with bitter almonds. To achieve this, sweet almonds and non-sweet almonds (bitter almonds and mixtures of sweet almonds with different percentages (from 5% to 20%) of bitter almonds) were analysed using a new generation of portable spectrophotometers. Three strategies (only bitter almonds, bitter almonds and mixtures, and only mixtures) were used to optimise the construction of the non-sweet almond training set. Models developed using partial least squares-discriminant analysis (PLS-DA) correctly classified 86-100% of samples, depending on the instrument used and the strategy followed for constructing the non-sweet almond training set. These results confirm that NIR spectroscopy provides a reliable, accurate method for detecting the presence of bitter almonds in batches of sweet almonds, with up to 5% adulteration levels (lower levels should be tested in future studies), and that this technology can be readily used at the main steps of the production chain.
杏仁产业面临的关键挑战之一是如何在商业批次的甜杏仁中检测出苦杏仁的存在。本研究的主要目的是通过在该行业中使用便携式仪器来评估近红外光谱法(NIRS)检测掺有苦杏仁的甜杏仁批次的潜力。为实现这一目标,使用新一代便携式分光光度计对甜杏仁和非甜杏仁(苦杏仁以及甜杏仁与不同百分比(5%至20%)苦杏仁的混合物)进行了分析。采用三种策略(仅苦杏仁、苦杏仁与混合物、仅混合物)来优化非甜杏仁训练集的构建。使用偏最小二乘判别分析(PLS-DA)开发的模型对86%至100%的样品进行了正确分类,这取决于所使用的仪器以及构建非甜杏仁训练集所采用的策略。这些结果证实,近红外光谱法为检测甜杏仁批次中苦杏仁的存在提供了一种可靠、准确的方法,掺假水平可达5%(未来研究应测试更低水平),并且该技术可在生产链的主要环节轻松应用。