Department of Applied Chemistry, National Yang Ming Chiao Tung University, Hsinchu 300, Taiwan.
Department of Applied Mathematics, National Yang Ming Chiao Tung University, Hsinchu 300, Taiwan.
Food Chem. 2023 Nov 15;426:136610. doi: 10.1016/j.foodchem.2023.136610. Epub 2023 Jun 12.
Coffee is a daily essential, with prices varying based on taste, aroma, and chemical composition. However, distinguishing between different coffee beans is challenging due to time-consuming and destructive sample pretreatment. This study presents a novel approach for directly analyzing single coffee beans through mass spectrometry (MS) without the need for sample pretreatment. Using a single coffee bean deposited with a solvent droplet containing methanol and deionized water, we generated electrospray to extract the main species for MS analysis. Mass spectra of single coffee beans were obtained in just a few seconds. To showcase the effectiveness of the developed method, we used palm civet coffee beans (kopi luwak), one of the most expensive coffee types, as model samples. Our approach distinguished palm civet coffee beans from regular ones with high accuracy, sensitivity, and selectivity. Moreover, we employed a machine learning strategy to rapidly classify coffee beans based on their mass spectra, achieving 99.58% accuracy, 98.75% sensitivity, and 100% selectivity in cross-validation. Our study highlights the potential of combining the single-bean MS method with machine learning for the rapid and non-destructive classification of coffee beans. This approach can help to detect low-priced coffee beans mixed with high-priced ones, benefiting both consumers and the coffee industry.
咖啡是日常生活的必需品,其价格因口感、香气和化学成分的不同而有所差异。然而,由于耗时且具有破坏性的样品预处理,区分不同的咖啡豆具有一定的挑战性。本研究提出了一种通过质谱(MS)直接分析单个咖啡豆而无需样品预处理的新方法。使用沉积有包含甲醇和去离子水的溶剂液滴的单个咖啡豆,我们生成电喷雾以提取主要物种进行 MS 分析。只需几秒钟即可获得单个咖啡豆的质谱。为了展示所开发方法的有效性,我们使用了猫屎咖啡(麝香猫咖啡)作为模型样本,这是最昂贵的咖啡类型之一。我们的方法以高精度、高灵敏度和高选择性区分了麝香猫咖啡豆和普通咖啡豆。此外,我们采用机器学习策略根据咖啡豆的质谱快速分类,在交叉验证中达到 99.58%的准确率、98.75%的灵敏度和 100%的选择性。本研究强调了将单粒 MS 方法与机器学习相结合用于快速无损咖啡豆分类的潜力。这种方法可以帮助检测低价咖啡豆与高价咖啡豆混合的情况,使消费者和咖啡行业受益。