Division of Food Sciences, University of Nottingham, Sutton Bonington Campus, LE12 5RD, UK.
Campden BRI, Chipping Campden, Gloucestershire GL55 6LD, UK.
Food Chem. 2022 Mar 1;371:131159. doi: 10.1016/j.foodchem.2021.131159. Epub 2021 Sep 17.
Coffee aroma is critical for consumer liking and enables price differentiation of coffee. This study applied hyperspectral imaging (1000-2500 nm) to predict volatile compounds in single roasted coffee beans, as measured by Solid Phase Micro Extraction-Gas Chromatography-Mass Spectrometry and Gas Chromatography-Olfactometry. Partial least square (PLS) regression models were built for individual volatile compounds and chemical classes. Selected key aroma compounds were predicted well enough to allow rapid screening (R greater than 0.7, Ratio to Performance Deviation (RPD) greater than 1.5), and improved predictions were achieved for classes of compounds - e.g. aldehydes and pyrazines (R ∼ 0.8, RPD ∼ 1.9). To demonstrate the approach, beans were successfully segregated by HSI into prototype batches with different levels of pyrazines (smoky) or aldehydes (sweet). This is industrially relevant as it will provide new rapid tools for quality evaluation, opportunities to understand and minimise heterogeneity during production and roasting and ultimately provide the tools to define and achieve new coffee flavour profiles.
咖啡的香气对消费者的喜好至关重要,也使咖啡能够实现价格差异化。本研究应用高光谱成像技术(1000-2500nm)预测单一烘焙咖啡豆中的挥发性化合物,方法是固相微萃取-气相色谱-质谱和气相色谱-嗅闻法进行测量。建立了个别挥发性化合物和化学类别的偏最小二乘(PLS)回归模型。一些关键香气化合物的预测结果非常准确,足以进行快速筛选(R 大于 0.7,性能偏差比(RPD)大于 1.5),并且对化合物的类别(例如醛类和吡嗪类)的预测结果也有所改善(R 约为 0.8,RPD 约为 1.9)。为了展示该方法,成功地通过高光谱成像将具有不同吡嗪(烟熏味)或醛(甜味)水平的咖啡豆分为原型批次。这在工业上具有重要意义,因为它将为质量评估提供新的快速工具,有机会在生产和烘焙过程中了解和最小化异质性,并最终提供定义和实现新咖啡风味特征的工具。