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Non-destructive analysis of sucrose, caffeine and trigonelline on single green coffee beans by hyperspectral imaging

机译:高光谱成像技术对单个生咖啡豆中的蔗糖,咖啡因和松果碱进行无损分析

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摘要

Hyperspectral imaging (HSI) is a novel technology for the food sector that enables rapid non-contact analysis of food materials. HSI was applied for the first time to whole green coffee beans, at a single seed level, for quantitative prediction of sucrose, caffeine and trigonelline content. In addition, the intra-bean distribution of coffee constituents was analysed in Arabica and Robusta coffees on a large sample set from 12 countries, using a total of 260 samples. Individual green coffee beans were scanned by reflectance HSI (980–2500 nm) and then the concentration of sucrose, caffeine and trigonelline analysed with a reference method (HPLC-MS). Quantitative prediction models were subsequently built using Partial Least Squares (PLS) regression. Large variations in sucrose, caffeine and trigonelline were found between different species and origin, but also within beans from the same batch. It was shown that estimation of sucrose content is possible for screening purposes (R2 = 0.65; prediction error of ~ 0.7% w/w coffee, with observed range of ~ 6.5%), while the performance of the PLS model was better for caffeine and trigonelline prediction (R2 = 0.85 and R2 = 0.82, respectively; prediction errors of 0.2 and 0.1%, on a range of 2.3 and 1.1% w/w coffee, respectively). The prediction error is acceptable mainly for laboratory applications, with the potential application to breeding programmes and for screening purposes for the food industry. The spatial distribution of coffee constituents was also successfully visualised for single beans and this enabled mapping of the analytes across the bean structure at single pixel level.
机译:高光谱成像(HSI)是食品领域的一项新颖技术,可对食品材料进行快速非接触式分析。首次在单个种子水平上将HSI应用于完整的生咖啡豆,以定量预测蔗糖,咖啡因和松果碱的含量。此外,在来自12个国家的大量样本集中,对阿拉比卡咖啡和罗布斯塔咖啡的豆内咖啡成分分布进行了分析,总共使用了260个样品。单个生咖啡豆通过HSI反射率(980-2500 nm)进行扫描,然后使用参考方法(HPLC-MS)分析蔗糖,咖啡因和松柏油碱的浓度。随后使用偏最小二乘(PLS)回归建立了定量预测模型。在不同品种和产地之间,但在同一批次的豆子中,发现蔗糖,咖啡因和松果油碱的变化很大。结果表明,蔗糖含量的估算可能用于筛查目的(R2 = 0.65;咖啡的预测误差为〜0.7%w / w,观察范围为〜6.5%),而PLS模型的咖啡因和咖啡因的性能更好。 Trigonelline预测(分别为R2 = 0.85和R2 = 0.82;在2.3和1.1%w / w咖啡范围内的预测误差分别为0.2和0.1%)。预测误差主要在实验室应用中是可以接受的,在育种程序中有潜在的应用,也可以在食品工业中用于筛选目的。对于单个咖啡豆,咖啡成分的空间分布也已成功可视化,这使得能够在单个像素级别跨整个咖啡豆结构分析物的映射。

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