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首页> 外文期刊>Journal of food engineering >Exploring the potential of NIRS technology for the in situ prediction of amygdalin content and classification by bitterness of in-shell and shelled intact almonds
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Exploring the potential of NIRS technology for the in situ prediction of amygdalin content and classification by bitterness of in-shell and shelled intact almonds

机译:探讨氨基甲蛋白含量的原位预测和壳体的苦味和壳完整杏仁的潜力

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Amygdalin is a cyanogenic compound found in almonds which gives them their bitter taste. For the almond industry, it is important to prevent the presence of bitter almonds in batches of sweet almond that can affect their commercialization and even consumer safety. This study sought to ascertain the viability of near infrared spectroscopy (NIRS), as a fast and reliable candidate for non-destructive and in situ quantification of amygdalin levels and for classification of almonds by bitterness, when analysed in bulk. With that purpose, in-shell and shelled sweet and bitter almonds were analysed in dynamic mode using two new handheld NIRS instruments. As a first step, the amygdalin levels in in-shell and shelled almonds were determined using modified partial least squares (MPLS) and local regression algorithms. Next, classification models for bitterness were made using partial least square discriminant analysis (PLS-DA). For the discrimination between sweet and bitter almonds, two strategies to set up the optimum threshold were studied: the mean value of the discriminant variables and the value calculated using the Receiver Operating Characteristic (ROC) curves. The results for measuring amygdalin in shelled almonds showed that NIRS technology, using both regression algorithms, is a robust technology for inspection purpose at an industrial level. Additionally, excellent performances were obtained for the classification models of the two in-shell and shelled almond groups analysed in bulk with both instruments, with better results when the threshold values obtained from the ROC curves were applied.
机译:Amygdalin是一种在杏仁中发现的染色化合物,其给予他们苦味。对于杏仁行业来说,重要的是为了防止批量甜蜜的杏仁存在苦杏仁,这可能会影响他们的商业化甚至消费者的安全性。该研究试图确定近红外光谱(NIRS)的可行性,作为非破坏性和杏仁素水平的快速可靠和原位定量的快速可靠的候选者,并且在批量分析时通过苦味分类杏仁分类。利用这种目的,使用两种新的手持内线仪器在动态模式下分析壳和壳酸甜和苦杏仁。作为第一步,使用修改的局部最小二乘(MPLS)和局部回归算法测定壳中壳和壳杏仁中的杏仁醛水平。接下来,使用局部最小二乘判别分析(PLS-DA)进行苦味的分类模型。对于甜味和苦杏仁之间的歧视,研究了建立最佳阈值的两种策略:判别变量的平均值和使用接收器操作特征(ROC)曲线计算的值。在壳杏仁中测量杏仁素的结果表明,使用两者的回归算法,NIRS技术是在工业水平处进行检查目的的鲁棒技术。另外,对于用两个仪器分析的两种壳体和壳杏仁组的分类模型获得了优异的性能,并且当施加来自ROC曲线的阈值时,具有更好的结果。

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